{"title":"通过定量遗传学开展学术研究和培训,推动全球农业发展:从个人角度看罗汉-费尔南多的贡献","authors":"Liviu Radu Totir","doi":"10.1186/s12711-024-00906-6","DOIUrl":null,"url":null,"abstract":"<p>Rohan Fernando is known and celebrated for many outstanding technical contributions to Animal Breeding and Quantitative Genetics [1]. The intent of this Editorial is to provide a personal perspective on the impact of Rohan’s scientific and pedagogical excellence on global agriculture. In the animal breeding and genetics community, it is well known that Rohan has played key technical roles in multiple public/private partnerships that resulted in measurable improvements in animal agriculture. What is less known is that Rohan has also made important contributions towards the productivity and resilience of the seed industry and thus plant agriculture.</p><p>I am a former graduate and post-doctoral student of Rohan, working under his supervision from August 1995 to September 2004, first at the University of Illinois at Urbana Champaign (UIUC) and then at Iowa State University (ISU). I joined DuPont Pioneer—now Corteva Agriscience, one of the leading global Agriscience companies, in October 2004. Here, I have spent my entire career working with teams that develop and deploy methodology and software for optimized breeding analytics and decision systems to accelerate global crop improvement. Given this background, I will provide a personal perspective on Rohan’s contributions to the seed industry and thus plant agriculture.</p><p>The seed industry is a key component in building productive, resilient, and sustainable agricultural systems (Fig. 1).</p><figure><figcaption><b data-test=\"figure-caption-text\">Fig. 1</b></figcaption><picture><source srcset=\"//media.springernature.com/lw685/springer-static/image/art%3A10.1186%2Fs12711-024-00906-6/MediaObjects/12711_2024_906_Fig1_HTML.png?as=webp\" type=\"image/webp\"/><img alt=\"figure 1\" aria-describedby=\"Fig1\" height=\"507\" loading=\"lazy\" src=\"//media.springernature.com/lw685/springer-static/image/art%3A10.1186%2Fs12711-024-00906-6/MediaObjects/12711_2024_906_Fig1_HTML.png\" width=\"685\"/></picture><p>Example of the outcome of continuous improvement in US corn (maize) yield, measured in terms of land mass kept out of production (left Y axis) because of the increased production (right Y axis) due to 6.5-fold increase in yield per hectare from 1921 to 2021 (data from https://quickstats.nass.usda.gov/)</p><span>Full size image</span><svg aria-hidden=\"true\" focusable=\"false\" height=\"16\" role=\"img\" width=\"16\"><use xlink:href=\"#icon-eds-i-chevron-right-small\" xmlns:xlink=\"http://www.w3.org/1999/xlink\"></use></svg></figure><p>Increased yield output per unit area of land is critical given the societal constraint of restricted land use for agriculture [2]. To achieve this, modern plant agriculture makes use of scientific and technological expertise from a very wide range of domains, in an integrated and coordinated systems-based approach. The coordinated use of applied statistics, quantitative genetics, statistical computing, and decision science, focused on optimization of artificial selection within plant breeding programs, is a critical lever used to increase agricultural productivity per hectare. Given this context, the impact of Rohan’s career on the seed industry can be traced back to two main areas: (1) creation of clear scientific and software roadmaps for optimized use of novel applied statistics, quantitative genetics, and statistical computing techniques, and (2) training of graduate and post-doctoral students in a style that enabled them to seamlessly use skill sets learned in the field of animal breeding for plant breeding.</p><p>First, I will address the impact of the scientific and software roadmaps that were created by Rohan during his career. When looking at the trajectory of his scientific career, as reflected by his more than 200 peer-reviewed publications, three main areas of research can be identified: (1) theory and software to enable optimized data-driven artificial selection and breeding program design e.g. [3,4,5,6,7]; (2) theory and software for integration of genomic data in breeding—from marker assisted best linear unbiased prediction (MABLUP) to genomic selection e.g. [8,9,10,11,12]; and (3) theory and software for genotype probability computations in pedigreed populations under various inheritance models e.g. [13,14,15,16]. All three research areas are critical for genetic improvement in both animal and plant agriculture. As illustrated by the selected references, Rohan built roadmaps in these research areas by (1) leveraging a unique and exquisite knowledge and understanding of applied and theoretical statistics, quantitative genetics, and high-performance scientific computer programming and (2) always fostering inclusive and collaborative work patterns with students and collaborators. While working with Rohan, I noticed that he always used a 3-step “systems” approach for any new algorithm, idea, theory, or programming language to be added into his scientific roadmaps. First, in-depth discussions focused on strengths and weaknesses, second doubling down on understanding all relevant technical nuances, and third programming it from scratch within cohesive high performance software platforms. Because of this 3-step “systems” approach to research, in addition to his many peer-reviewed publications, Rohan co-authored several high-performance scientific programs with students and collaborators such as MATVEC [17] and GenSel [18] both programmed in C + + , and JWAS [19] programmed in Julia. Each of these highly complex software platforms could have become the crowning achievement of many scientific careers. However, Rohan viewed them only as steppingstones towards achieving a complete understanding of the scientific problem at hand, training his students, and helping advance scientific knowledge relevant to agriculture. As a result, in addition to the roadmap type publications that brought clarity and understanding of critical technical aspects of the research areas he worked on (e.g., his large number of publications on whole-genome analysis and genomic selection, starting in 2006), the software packages co-authored by Rohan enabled the community to apply these learnings in large scale practical use cases [20, 21].</p><p>Rohan’s scientific publication record contains many contributions to plant breeding e.g. [22, 23] with the most recent one in 2023 [24]. The seed industry has been one of the beneficiaries of Rohan’s 3 step “systems” approach to solving complex but practical genetic evaluation problems. For example, as part of a DuPont Pioneer—ISU collaboration, I had the opportunity to work one day a week with Rohan at ISU from 2005 through 2011. These weekly one on one working sessions focused primarily on discussing and understanding the intricacies of the methodology and software development strategies relevant to the emerging whole-genome analysis and genomic selection domains. Rohan was always passionate about making sure that these emerging domains would be more than just a theoretical exercise, and that they should be implemented by plant breeders to aid in the efficient creation of new and improved crop varieties for the global grower community. Thus, our collaborative efforts helped DuPont Pioneer/Corteva Agriscience bring better seed products to our global customers faster. This helped increase the productivity per unit area of land. Thomas Jefferson famously said that “The greatest service which can be rendered any country is to add a useful plant to its culture” [25]. Through the collaboration with DuPont Pioneer/Corteva Agriscience, Rohan was able to provide this great service not just to one country, but to humankind.</p><p>Next, I will address the way Rohan trained graduate and post-doctoral students. When I look back at the many years I spent with him, first as a student and then as a collaborator, I recognize once more a “systems” approach to training. From my perspective, Rohan trained his students by focusing on four behaviors: (1) kindness, (2) technical excellence, (3) unselfish collaboration, and (4) respectful inquisitiveness. In the following, I will use my personal experience to discuss some aspects of this training approach.</p><p>I first met Rohan in August 1995 when I arrived at UIUC from Romania to start my graduate studies in Animal Breeding and Genetics. Knowing that I did not have a place to stay, Rohan offered me temporary accommodation in his home although Margie Fernando (Rohan’s third child) was born the week prior to my arrival. This was the first of many instances when Rohan showed kindness towards me without asking anything in return. This not only made me feel valued, but also realize that kindness is a critical lever in building cohesive technical teams. While always kind, Rohan made it very clear from the beginning that achieving technical excellence in applied and theoretical statistics, quantitative genetics, and scientific programming is a requirement to be successful in his program. Without realizing it, by striving to achieve technical excellence in Rohan’s program, I was also building the foundation that allowed me to seamlessly transition from animal to plant breeding. The remarkable fact was that, to help me achieve the level of technical excellence expected, Rohan spent countless hours working side by side with me on algorithms and theory, programing in C + + , and writing drafts of scientific articles. Through this, I learned that kindness and technical excellence go hand in hand and are very effective when used together. The importance of unselfish collaboration was the next lesson I learned from Rohan. During my tenure with Rohan, he approached all scientific engagements in a very unselfish collaborative manner. His primary focus was always on solving the scientific problem of interest without worrying about getting credit for his contributions. This unselfish collaborative approach, combined with his outstanding technical excellence and kindness, made Rohan a highly sought-after and respected collaborator for many distinguished scientists such as Charles Henderson, Dan Gianola, Daniel Sorensen, Moshe Soller, Bill Hill, Robert Elston, Jack Dekkers, Dorian Garrick, Albrecht Melchinger etc. many of whom he wrote publications with. However, Rohan treated students and early career scientists with the same unselfish collaborative spirit, thus helping many of them move forward on their projects through mentorship and guidance. Finally, Rohan always role modeled to his students the need for respectful inquisitiveness when working on problems where the expertise resides in other fields of science. I recall us spending many hours in the late 1990’s early 2000’s discussing fine points and intricacies of Markov chain Monte Carlo (MCMC) theory with Wolfgang Kliemann who was a Mathematics professor at ISU or discussing graph theory and high-performance parallel computing programming with various faculty in Computer Science. I also recall taking, at Rohan’s recommendation, a class in Measure Theory in the Mathematics Department at ISU to try to better understand the foundational theory behind MCMC. While at the time I did not see the immediate practical value of these scientific domains, which were also rather difficult for me to understand, it became clear in time that Rohan was in fact setting the foundation needed for him to become one of if not the foremost technical expert in Bayesian MCMC methodology and computational software applied to agriculture. Through his actions, he was teaching his students the value of respectful inquisitiveness when working on complex problems that require interactions with experts from other scientific domains.</p><p>In my experience, all four behaviors cultivated by Rohan in his training system are essential to succeed as a technical expert in the seed industry and more broadly plant agriculture. This is especially true in a global research and development organization, like the one at Corteva Agriscience, that operates based on multi-cultural teamwork, collaboration, agility and continuous integration of new science and technology into large-scale production systems.</p><p>From a personal perspective, it has become second nature for me to leverage Rohan’s “systems” based approach to research and training as we develop new scientific roadmaps at Corteva Agriscience. A relevant example is the scientific roadmap that we have developed for the integration of crop growth models with whole genome prediction [26, 27]. I argue that we have developed this new roadmap by leveraging most if not all the components role modeled by Rohan throughout his career: (1) form a cohesive team with a talented early career post-doctoral scientist (Frank Technow 2014 to 2015); (2) establish unselfish collaboration and respectful inquisitiveness based working patterns with crop growth modeling experts (Charlie Messina and Mark Cooper); and (3) adopt and promote the 3-step “systems” approach to enable additional collaborators to help evaluate and explore the value of the new roadmap developed [28]. This editorial provides a personal perspective on the impact of Rohan Fernando on the seed industry and thus plant agriculture. However, it is likely an incomplete view given that several other former students of Rohan work in key roles in the seed industry for companies such as: BASF, Bayer, and Corteva Agriscience. It is my hope that I have managed to bring to light some of the contributions made by Rohan to global agriculture, and maybe encourage others to complete the picture with their perspectives.</p><p>not applicable.</p><ol data-track-component=\"outbound reference\"><li data-counter=\"1.\"><p>Gianola D, Cantet RJ, Dekkers JCM, Pérez-Enciso M. Rohan Fernando: a road from Sri Lanka to Ames. Genet Sel Evol. 2022;54:9.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\"2.\"><p>Ritchie H, Rosado P, Roser M. Crop yields. 2022. https://ourworldindata.org/crop-yields/ Accessed 17 Jan 2024.</p></li><li data-counter=\"3.\"><p>Fernando RL, Gianola D. Optimum properties of the conditional mean as a selection criterion. Theor Appl Genet. 1986;72:822–5.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\"4.\"><p>Gianola D, Fernando RL. Bayesian methods in animal breeding theory. J Anim Sci. 1986;63:217–44.</p><p>Article Google Scholar </p></li><li data-counter=\"5.\"><p>Fernando RL. Genetic evaluation and selection using genotypic, phenotypic and pedigree information. In Proceedings of the 6th World Congress on Genetics Applied to Livestock Production: 11–16 January 1998; Armidale. 1998.</p></li><li data-counter=\"6.\"><p>Sorensen D, Fernando R, Gianola D. Inferring the trajectory of genetic variance in the course of artificial selection. Genet Res. 2001;77:83–94.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\"7.\"><p>Wolc A, Kranis A, Arango J, Settar P, Fulton JE, O’Sullivan NP, et al. Implementation of genomic selection in the poultry industry. Anim Front. 2016;6:23–31.</p><p>Article Google Scholar </p></li><li data-counter=\"8.\"><p>Fernando RL, Grossman M. Marker assisted selection using best linear unbiased prediction. Genet Sel Evol. 1989;21:467–77.</p><p>Article PubMed Central Google Scholar </p></li><li data-counter=\"9.\"><p>Wang T, Fernando RL, Grossman M. Genetic evaluation by best linear unbiased prediction using marker and trait information in a multibreed population. Genetics. 1998;148:507–15.</p><p>Article CAS PubMed PubMed Central Google Scholar </p></li><li data-counter=\"10.\"><p>Fernando RL, Habier D, Stricker C, Dekkers JCM, Totir LR. Genomic selection. Acta Agric Scand A Anim Sci. 2007;57:192–5.</p><p>CAS Google Scholar </p></li><li data-counter=\"11.\"><p>Habier D, Fernando RL, Dekkers JCM. The impact of genetic relationship information on genome-assisted breeding values. Genetics. 2007;177:2389–97.</p><p>Article CAS PubMed PubMed Central Google Scholar </p></li><li data-counter=\"12.\"><p>Habier D, Fernando RL, Kizilkaya K, Garrick DJ. Extension of the Bayesian alphabet for genomic selection. BMC Bioinformatics. 2011;12:186.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\"13.\"><p>Fernando RL, Stricker C, Elston RC. The finite polygenic mixed model: an alternative formulation for the mixed model of inheritance. Theor Appl Genet. 1994;88:573–80.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\"14.\"><p>Stricker C, Fernando RL, Elston RC. An algorithm to approximate the likelihood for pedigree data with loops by cutting. Theor Appl Genet. 1995;91:1054–63.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\"15.\"><p>Fernandez SA, Fernando RL, Guldbrandtsen B, Totir LR, Carriquiry AL. Sampling genotypes in large pedigrees with loops. Genet Sel Evol. 2001;33:337–67.</p><p>Article CAS PubMed PubMed Central Google Scholar </p></li><li data-counter=\"16.\"><p>Totir LR, Fernando RL, Abraham J. An efficient algorithm to compute marginal posterior genotype probabilities for every member of a pedigree with loops. Genet Sel Evol. 2009;41:52.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\"17.\"><p>Wang T, Fernando RL, Kachman SD. Matvec users’ guide. Version 1.03. 2003. https://www.yumpu.com/en/document/read/53822742/matvec-users-guide/. Accessed 17 Jan 2024.</p></li><li data-counter=\"18.\"><p>Fernando R, Garrick D. GenSel - User manual for a portfolio of genomic selection related analyses. Version 2.12. 2. Ames: Iowa State University; 2009.</p></li><li data-counter=\"19.\"><p>Cheng H, Fernando RL, Garrick DJ. JWAS: Julia implementation of whole-genome analysis software. In Proceedings of the 11<sup>th</sup> World Congress on Genetics Applied to Livestock Production: 11–16 February 2018; Auckland. 2018</p></li><li data-counter=\"20.\"><p>Kizilkaya K, Fernando RL, Garrick DJ. Genomic prediction of simulated multibreed and purebred performance using observed fifty thousand single nucleotide polymorphism genotypes. J Anim Sci. 2010;88:544–51.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\"21.\"><p>Cheng H, Fernando R, Garrick D, Zhao T, Qu J. JWAS version 2: leveraging biological information and high-throughput phenotypes into genomic prediction and association. In: Proceedings of 12th World Congress on Genetics Applied to Livestock Production: 3–8 August 2022; Rotterdam. 2022.</p></li><li data-counter=\"22.\"><p>Zhong S, Dekkers JC, Fernando RL, Jannink JL. Factors affecting accuracy from genomic selection in populations derived from multiple inbred lines: a barley case study. Genetics. 2009;182:355–64.</p><p>Article CAS PubMed PubMed Central Google Scholar </p></li><li data-counter=\"23.\"><p>Zhao Y, Zeng J, Fernando R, Reif JC. Genomic prediction of hybrid wheat performance. Crop Sci. 2013;53:802–10.</p><p>Article Google Scholar </p></li><li data-counter=\"24.\"><p>Melchinger AE, Fernando R, Stricker CC, Schön CC, Auinger HJ. Genomic prediction in hybrid breeding: I. Optimizing the training set design. Theor Appl Genet. 2023;136:176.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\"25.\"><p>Kaminsky JP (Editor). The Quotable Jefferson. Princeton: Princeton University Press. 2006</p></li><li data-counter=\"26.\"><p>Technow F, Messina CD, Totir LR, Cooper M. Integrating crop growth models with whole genome prediction through approximate Bayesian computation. PLoS One. 2015;10: e0130855.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\"27.\"><p>Messina CD, Technow F, Tang T, Totir R, Gho C, Cooper M. Leveraging biological insight and environmental variation to improve phenotypic prediction: Integrating crop growth models (CGM) with whole genome prediction (WGP). Eur J Agron. 2018;100:151–62.</p><p>Article Google Scholar </p></li><li data-counter=\"28.\"><p>Jighly A, Thayalakumaran T, O’Leary GJ, Kant S, Panozzo J, Aggarwal R, et al. Using genomic prediction with crop growth models enables the prediction of associated traits in wheat. J Exp Bot. 2023;74:1389–402.</p><p>Article CAS PubMed Google Scholar </p></li></ol><p>Download references<svg aria-hidden=\"true\" focusable=\"false\" height=\"16\" role=\"img\" width=\"16\"><use xlink:href=\"#icon-eds-i-download-medium\" xmlns:xlink=\"http://www.w3.org/1999/xlink\"></use></svg></p><h3>Authors and Affiliations</h3><ol><li><p>Breeding Technologies, Seed Product Development, Corteva Agriscience, Johnston, IA, 50131, USA</p><p>Liviu Radu Totir</p></li></ol><span>Authors</span><ol><li><span>Liviu Radu Totir</span>View author publications<p>You can also search for this author in <span>PubMed<span> </span>Google Scholar</span></p></li></ol><h3>Contributions</h3><p>LRT wrote, read and approved the final manuscript.</p><h3>Corresponding author</h3><p>Correspondence to Liviu Radu Totir.</p><h3>Publisher's Note</h3><p>Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.</p><p><b>Open Access</b> This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.</p>\n<p>Reprints and permissions</p><img alt=\"Check for updates. Verify currency and authenticity via CrossMark\" height=\"81\" loading=\"lazy\" src=\"data:image/svg+xml;base64,<svg height="81" width="57" xmlns="http://www.w3.org/2000/svg"><g fill="none" fill-rule="evenodd"><path d="m17.35 35.45 21.3-14.2v-17.03h-21.3" fill="#989898"/><path d="m38.65 35.45-21.3-14.2v-17.03h21.3" fill="#747474"/><path d="m28 .5c-12.98 0-23.5 10.52-23.5 23.5s10.52 23.5 23.5 23.5 23.5-10.52 23.5-23.5c0-6.23-2.48-12.21-6.88-16.62-4.41-4.4-10.39-6.88-16.62-6.88zm0 41.25c-9.8 0-17.75-7.95-17.75-17.75s7.95-17.75 17.75-17.75 17.75 7.95 17.75 17.75c0 4.71-1.87 9.22-5.2 12.55s-7.84 5.2-12.55 5.2z" fill="#535353"/><path d="m41 36c-5.81 6.23-15.23 7.45-22.43 2.9-7.21-4.55-10.16-13.57-7.03-21.5l-4.92-3.11c-4.95 10.7-1.19 23.42 8.78 29.71 9.97 6.3 23.07 4.22 30.6-4.86z" fill="#9c9c9c"/><path d="m.2 58.45c0-.75.11-1.42.33-2.01s.52-1.09.91-1.5c.38-.41.83-.73 1.34-.94.51-.22 1.06-.32 1.65-.32.56 0 1.06.11 1.51.35.44.23.81.5 1.1.81l-.91 1.01c-.24-.24-.49-.42-.75-.56-.27-.13-.58-.2-.93-.2-.39 0-.73.08-1.05.23-.31.16-.58.37-.81.66-.23.28-.41.63-.53 1.04-.13.41-.19.88-.19 1.39 0 1.04.23 1.86.68 2.46.45.59 1.06.88 1.84.88.41 0 .77-.07 1.07-.23s.59-.39.85-.68l.91 1c-.38.43-.8.76-1.28.99-.47.22-1 .34-1.58.34-.59 0-1.13-.1-1.64-.31-.5-.2-.94-.51-1.31-.91-.38-.4-.67-.9-.88-1.48-.22-.59-.33-1.26-.33-2.02zm8.4-5.33h1.61v2.54l-.05 1.33c.29-.27.61-.51.96-.72s.76-.31 1.24-.31c.73 0 1.27.23 1.61.71.33.47.5 1.14.5 2.02v4.31h-1.61v-4.1c0-.57-.08-.97-.25-1.21-.17-.23-.45-.35-.83-.35-.3 0-.56.08-.79.22-.23.15-.49.36-.78.64v4.8h-1.61zm7.37 6.45c0-.56.09-1.06.26-1.51.18-.45.42-.83.71-1.14.29-.3.63-.54 1.01-.71.39-.17.78-.25 1.18-.25.47 0 .88.08 1.23.24.36.16.65.38.89.67s.42.63.54 1.03c.12.41.18.84.18 1.32 0 .32-.02.57-.07.76h-4.36c.07.62.29 1.1.65 1.44.36.33.82.5 1.38.5.29 0 .57-.04.83-.13s.51-.21.76-.37l.55 1.01c-.33.21-.69.39-1.09.53-.41.14-.83.21-1.26.21-.48 0-.92-.08-1.34-.25-.41-.16-.76-.4-1.07-.7-.31-.31-.55-.69-.72-1.13-.18-.44-.26-.95-.26-1.52zm4.6-.62c0-.55-.11-.98-.34-1.28-.23-.31-.58-.47-1.06-.47-.41 0-.77.15-1.07.45-.31.29-.5.73-.58 1.3zm2.5.62c0-.57.09-1.08.28-1.53.18-.44.43-.82.75-1.13s.69-.54 1.1-.71c.42-.16.85-.24 1.31-.24.45 0 .84.08 1.17.23s.61.34.85.57l-.77 1.02c-.19-.16-.38-.28-.56-.37-.19-.09-.39-.14-.61-.14-.56 0-1.01.21-1.35.63-.35.41-.52.97-.52 1.67 0 .69.17 1.24.51 1.66.34.41.78.62 1.32.62.28 0 .54-.06.78-.17.24-.12.45-.26.64-.42l.67 1.03c-.33.29-.69.51-1.08.65-.39.15-.78.23-1.18.23-.46 0-.9-.08-1.31-.24-.4-.16-.75-.39-1.05-.7s-.53-.69-.7-1.13c-.17-.45-.25-.96-.25-1.53zm6.91-6.45h1.58v6.17h.05l2.54-3.16h1.77l-2.35 2.8 2.59 4.07h-1.75l-1.77-2.98-1.08 1.23v1.75h-1.58zm13.69 1.27c-.25-.11-.5-.17-.75-.17-.58 0-.87.39-.87 1.16v.75h1.34v1.27h-1.34v5.6h-1.61v-5.6h-.92v-1.2l.92-.07v-.72c0-.35.04-.68.13-.98.08-.31.21-.57.4-.79s.42-.39.71-.51c.28-.12.63-.18 1.04-.18.24 0 .48.02.69.07.22.05.41.1.57.17zm.48 5.18c0-.57.09-1.08.27-1.53.17-.44.41-.82.72-1.13.3-.31.65-.54 1.04-.71.39-.16.8-.24 1.23-.24s.84.08 1.24.24c.4.17.74.4 1.04.71s.54.69.72 1.13c.19.45.28.96.28 1.53s-.09 1.08-.28 1.53c-.18.44-.42.82-.72 1.13s-.64.54-1.04.7-.81.24-1.24.24-.84-.08-1.23-.24-.74-.39-1.04-.7c-.31-.31-.55-.69-.72-1.13-.18-.45-.27-.96-.27-1.53zm1.65 0c0 .69.14 1.24.43 1.66.28.41.68.62 1.18.62.51 0 .9-.21 1.19-.62.29-.42.44-.97.44-1.66 0-.7-.15-1.26-.44-1.67-.29-.42-.68-.63-1.19-.63-.5 0-.9.21-1.18.63-.29.41-.43.97-.43 1.67zm6.48-3.44h1.33l.12 1.21h.05c.24-.44.54-.79.88-1.02.35-.24.7-.36 1.07-.36.32 0 .59.05.78.14l-.28 1.4-.33-.09c-.11-.01-.23-.02-.38-.02-.27 0-.56.1-.86.31s-.55.58-.77 1.1v4.2h-1.61zm-47.87 15h1.61v4.1c0 .57.08.97.25 1.2.17.24.44.35.81.35.3 0 .57-.07.8-.22.22-.15.47-.39.73-.73v-4.7h1.61v6.87h-1.32l-.12-1.01h-.04c-.3.36-.63.64-.98.86-.35.21-.76.32-1.24.32-.73 0-1.27-.24-1.61-.71-.33-.47-.5-1.14-.5-2.02zm9.46 7.43v2.16h-1.61v-9.59h1.33l.12.72h.05c.29-.24.61-.45.97-.63.35-.17.72-.26 1.1-.26.43 0 .81.08 1.15.24.33.17.61.4.84.71.24.31.41.68.53 1.11.13.42.19.91.19 1.44 0 .59-.09 1.11-.25 1.57-.16.47-.38.85-.65 1.16-.27.32-.58.56-.94.73-.35.16-.72.25-1.1.25-.3 0-.6-.07-.9-.2s-.59-.31-.87-.56zm0-2.3c.26.22.5.37.73.45.24.09.46.13.66.13.46 0 .84-.2 1.15-.6.31-.39.46-.98.46-1.77 0-.69-.12-1.22-.35-1.61-.23-.38-.61-.57-1.13-.57-.49 0-.99.26-1.52.77zm5.87-1.69c0-.56.08-1.06.25-1.51.16-.45.37-.83.65-1.14.27-.3.58-.54.93-.71s.71-.25 1.08-.25c.39 0 .73.07 1 .2.27.14.54.32.81.55l-.06-1.1v-2.49h1.61v9.88h-1.33l-.11-.74h-.06c-.25.25-.54.46-.88.64-.33.18-.69.27-1.06.27-.87 0-1.56-.32-2.07-.95s-.76-1.51-.76-2.65zm1.67-.01c0 .74.13 1.31.4 1.7.26.38.65.58 1.15.58.51 0 .99-.26 1.44-.77v-3.21c-.24-.21-.48-.36-.7-.45-.23-.08-.46-.12-.7-.12-.45 0-.82.19-1.13.59-.31.39-.46.95-.46 1.68zm6.35 1.59c0-.73.32-1.3.97-1.71.64-.4 1.67-.68 3.08-.84 0-.17-.02-.34-.07-.51-.05-.16-.12-.3-.22-.43s-.22-.22-.38-.3c-.15-.06-.34-.1-.58-.1-.34 0-.68.07-1 .2s-.63.29-.93.47l-.59-1.08c.39-.24.81-.45 1.28-.63.47-.17.99-.26 1.54-.26.86 0 1.51.25 1.93.76s.63 1.25.63 2.21v4.07h-1.32l-.12-.76h-.05c-.3.27-.63.48-.98.66s-.73.27-1.14.27c-.61 0-1.1-.19-1.48-.56-.38-.36-.57-.85-.57-1.46zm1.57-.12c0 .3.09.53.27.67.19.14.42.21.71.21.28 0 .54-.07.77-.2s.48-.31.73-.56v-1.54c-.47.06-.86.13-1.18.23-.31.09-.57.19-.76.31s-.33.25-.41.4c-.09.15-.13.31-.13.48zm6.29-3.63h-.98v-1.2l1.06-.07.2-1.88h1.34v1.88h1.75v1.27h-1.75v3.28c0 .8.32 1.2.97 1.2.12 0 .24-.01.37-.04.12-.03.24-.07.34-.11l.28 1.19c-.19.06-.4.12-.64.17-.23.05-.49.08-.76.08-.4 0-.74-.06-1.02-.18-.27-.13-.49-.3-.67-.52-.17-.21-.3-.48-.37-.78-.08-.3-.12-.64-.12-1.01zm4.36 2.17c0-.56.09-1.06.27-1.51s.41-.83.71-1.14c.29-.3.63-.54 1.01-.71.39-.17.78-.25 1.18-.25.47 0 .88.08 1.23.24.36.16.65.38.89.67s.42.63.54 1.03c.12.41.18.84.18 1.32 0 .32-.02.57-.07.76h-4.37c.08.62.29 1.1.65 1.44.36.33.82.5 1.38.5.3 0 .58-.04.84-.13.25-.09.51-.21.76-.37l.54 1.01c-.32.21-.69.39-1.09.53s-.82.21-1.26.21c-.47 0-.92-.08-1.33-.25-.41-.16-.77-.4-1.08-.7-.3-.31-.54-.69-.72-1.13-.17-.44-.26-.95-.26-1.52zm4.61-.62c0-.55-.11-.98-.34-1.28-.23-.31-.58-.47-1.06-.47-.41 0-.77.15-1.08.45-.31.29-.5.73-.57 1.3zm3.01 2.23c.31.24.61.43.92.57.3.13.63.2.98.2.38 0 .65-.08.83-.23s.27-.35.27-.6c0-.14-.05-.26-.13-.37-.08-.1-.2-.2-.34-.28-.14-.09-.29-.16-.47-.23l-.53-.22c-.23-.09-.46-.18-.69-.3-.23-.11-.44-.24-.62-.4s-.33-.35-.45-.55c-.12-.21-.18-.46-.18-.75 0-.61.23-1.1.68-1.49.44-.38 1.06-.57 1.83-.57.48 0 .91.08 1.29.25s.71.36.99.57l-.74.98c-.24-.17-.49-.32-.73-.42-.25-.11-.51-.16-.78-.16-.35 0-.6.07-.76.21-.17.15-.25.33-.25.54 0 .14.04.26.12.36s.18.18.31.26c.14.07.29.14.46.21l.54.19c.23.09.47.18.7.29s.44.24.64.4c.19.16.34.35.46.58.11.23.17.5.17.82 0 .3-.06.58-.17.83-.12.26-.29.48-.51.68-.23.19-.51.34-.84.45-.34.11-.72.17-1.15.17-.48 0-.95-.09-1.41-.27-.46-.19-.86-.41-1.2-.68z" fill="#535353"/></g></svg>\" width=\"57\"/><h3>Cite this article</h3><p>Totir, L.R. Academic research and training to advance global agriculture through quantitative genetics: a personal perspective on the contributions of Rohan Fernando. <i>Genet Sel Evol</i> <b>56</b>, 36 (2024). https://doi.org/10.1186/s12711-024-00906-6</p><p>Download citation<svg aria-hidden=\"true\" focusable=\"false\" height=\"16\" role=\"img\" width=\"16\"><use xlink:href=\"#icon-eds-i-download-medium\" xmlns:xlink=\"http://www.w3.org/1999/xlink\"></use></svg></p><ul data-test=\"publication-history\"><li><p>Published<span>: </span><span><time datetime=\"2024-05-03\">03 May 2024</time></span></p></li><li><p>DOI</abbr><span>: </span><span>https://doi.org/10.1186/s12711-024-00906-6</span></p></li></ul><h3>Share this article</h3><p>Anyone you share the following link with will be able to read this content:</p><button data-track=\"click\" data-track-action=\"get shareable link\" data-track-external=\"\" data-track-label=\"button\" type=\"button\">Get shareable link</button><p>Sorry, a shareable link is not currently available for this article.</p><p data-track=\"click\" data-track-action=\"select share url\" data-track-label=\"button\"></p><button data-track=\"click\" data-track-action=\"copy share url\" data-track-external=\"\" data-track-label=\"button\" type=\"button\">Copy to clipboard</button><p> Provided by the Springer Nature SharedIt content-sharing initiative </p>","PeriodicalId":55120,"journal":{"name":"Genetics Selection Evolution","volume":null,"pages":null},"PeriodicalIF":3.6000,"publicationDate":"2024-05-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Academic research and training to advance global agriculture through quantitative genetics: a personal perspective on the contributions of Rohan Fernando\",\"authors\":\"Liviu Radu Totir\",\"doi\":\"10.1186/s12711-024-00906-6\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p>Rohan Fernando is known and celebrated for many outstanding technical contributions to Animal Breeding and Quantitative Genetics [1]. The intent of this Editorial is to provide a personal perspective on the impact of Rohan’s scientific and pedagogical excellence on global agriculture. In the animal breeding and genetics community, it is well known that Rohan has played key technical roles in multiple public/private partnerships that resulted in measurable improvements in animal agriculture. What is less known is that Rohan has also made important contributions towards the productivity and resilience of the seed industry and thus plant agriculture.</p><p>I am a former graduate and post-doctoral student of Rohan, working under his supervision from August 1995 to September 2004, first at the University of Illinois at Urbana Champaign (UIUC) and then at Iowa State University (ISU). I joined DuPont Pioneer—now Corteva Agriscience, one of the leading global Agriscience companies, in October 2004. Here, I have spent my entire career working with teams that develop and deploy methodology and software for optimized breeding analytics and decision systems to accelerate global crop improvement. Given this background, I will provide a personal perspective on Rohan’s contributions to the seed industry and thus plant agriculture.</p><p>The seed industry is a key component in building productive, resilient, and sustainable agricultural systems (Fig. 1).</p><figure><figcaption><b data-test=\\\"figure-caption-text\\\">Fig. 1</b></figcaption><picture><source srcset=\\\"//media.springernature.com/lw685/springer-static/image/art%3A10.1186%2Fs12711-024-00906-6/MediaObjects/12711_2024_906_Fig1_HTML.png?as=webp\\\" type=\\\"image/webp\\\"/><img alt=\\\"figure 1\\\" aria-describedby=\\\"Fig1\\\" height=\\\"507\\\" loading=\\\"lazy\\\" src=\\\"//media.springernature.com/lw685/springer-static/image/art%3A10.1186%2Fs12711-024-00906-6/MediaObjects/12711_2024_906_Fig1_HTML.png\\\" width=\\\"685\\\"/></picture><p>Example of the outcome of continuous improvement in US corn (maize) yield, measured in terms of land mass kept out of production (left Y axis) because of the increased production (right Y axis) due to 6.5-fold increase in yield per hectare from 1921 to 2021 (data from https://quickstats.nass.usda.gov/)</p><span>Full size image</span><svg aria-hidden=\\\"true\\\" focusable=\\\"false\\\" height=\\\"16\\\" role=\\\"img\\\" width=\\\"16\\\"><use xlink:href=\\\"#icon-eds-i-chevron-right-small\\\" xmlns:xlink=\\\"http://www.w3.org/1999/xlink\\\"></use></svg></figure><p>Increased yield output per unit area of land is critical given the societal constraint of restricted land use for agriculture [2]. To achieve this, modern plant agriculture makes use of scientific and technological expertise from a very wide range of domains, in an integrated and coordinated systems-based approach. The coordinated use of applied statistics, quantitative genetics, statistical computing, and decision science, focused on optimization of artificial selection within plant breeding programs, is a critical lever used to increase agricultural productivity per hectare. Given this context, the impact of Rohan’s career on the seed industry can be traced back to two main areas: (1) creation of clear scientific and software roadmaps for optimized use of novel applied statistics, quantitative genetics, and statistical computing techniques, and (2) training of graduate and post-doctoral students in a style that enabled them to seamlessly use skill sets learned in the field of animal breeding for plant breeding.</p><p>First, I will address the impact of the scientific and software roadmaps that were created by Rohan during his career. When looking at the trajectory of his scientific career, as reflected by his more than 200 peer-reviewed publications, three main areas of research can be identified: (1) theory and software to enable optimized data-driven artificial selection and breeding program design e.g. [3,4,5,6,7]; (2) theory and software for integration of genomic data in breeding—from marker assisted best linear unbiased prediction (MABLUP) to genomic selection e.g. [8,9,10,11,12]; and (3) theory and software for genotype probability computations in pedigreed populations under various inheritance models e.g. [13,14,15,16]. All three research areas are critical for genetic improvement in both animal and plant agriculture. As illustrated by the selected references, Rohan built roadmaps in these research areas by (1) leveraging a unique and exquisite knowledge and understanding of applied and theoretical statistics, quantitative genetics, and high-performance scientific computer programming and (2) always fostering inclusive and collaborative work patterns with students and collaborators. While working with Rohan, I noticed that he always used a 3-step “systems” approach for any new algorithm, idea, theory, or programming language to be added into his scientific roadmaps. First, in-depth discussions focused on strengths and weaknesses, second doubling down on understanding all relevant technical nuances, and third programming it from scratch within cohesive high performance software platforms. Because of this 3-step “systems” approach to research, in addition to his many peer-reviewed publications, Rohan co-authored several high-performance scientific programs with students and collaborators such as MATVEC [17] and GenSel [18] both programmed in C + + , and JWAS [19] programmed in Julia. Each of these highly complex software platforms could have become the crowning achievement of many scientific careers. However, Rohan viewed them only as steppingstones towards achieving a complete understanding of the scientific problem at hand, training his students, and helping advance scientific knowledge relevant to agriculture. As a result, in addition to the roadmap type publications that brought clarity and understanding of critical technical aspects of the research areas he worked on (e.g., his large number of publications on whole-genome analysis and genomic selection, starting in 2006), the software packages co-authored by Rohan enabled the community to apply these learnings in large scale practical use cases [20, 21].</p><p>Rohan’s scientific publication record contains many contributions to plant breeding e.g. [22, 23] with the most recent one in 2023 [24]. The seed industry has been one of the beneficiaries of Rohan’s 3 step “systems” approach to solving complex but practical genetic evaluation problems. For example, as part of a DuPont Pioneer—ISU collaboration, I had the opportunity to work one day a week with Rohan at ISU from 2005 through 2011. These weekly one on one working sessions focused primarily on discussing and understanding the intricacies of the methodology and software development strategies relevant to the emerging whole-genome analysis and genomic selection domains. Rohan was always passionate about making sure that these emerging domains would be more than just a theoretical exercise, and that they should be implemented by plant breeders to aid in the efficient creation of new and improved crop varieties for the global grower community. Thus, our collaborative efforts helped DuPont Pioneer/Corteva Agriscience bring better seed products to our global customers faster. This helped increase the productivity per unit area of land. Thomas Jefferson famously said that “The greatest service which can be rendered any country is to add a useful plant to its culture” [25]. Through the collaboration with DuPont Pioneer/Corteva Agriscience, Rohan was able to provide this great service not just to one country, but to humankind.</p><p>Next, I will address the way Rohan trained graduate and post-doctoral students. When I look back at the many years I spent with him, first as a student and then as a collaborator, I recognize once more a “systems” approach to training. From my perspective, Rohan trained his students by focusing on four behaviors: (1) kindness, (2) technical excellence, (3) unselfish collaboration, and (4) respectful inquisitiveness. In the following, I will use my personal experience to discuss some aspects of this training approach.</p><p>I first met Rohan in August 1995 when I arrived at UIUC from Romania to start my graduate studies in Animal Breeding and Genetics. Knowing that I did not have a place to stay, Rohan offered me temporary accommodation in his home although Margie Fernando (Rohan’s third child) was born the week prior to my arrival. This was the first of many instances when Rohan showed kindness towards me without asking anything in return. This not only made me feel valued, but also realize that kindness is a critical lever in building cohesive technical teams. While always kind, Rohan made it very clear from the beginning that achieving technical excellence in applied and theoretical statistics, quantitative genetics, and scientific programming is a requirement to be successful in his program. Without realizing it, by striving to achieve technical excellence in Rohan’s program, I was also building the foundation that allowed me to seamlessly transition from animal to plant breeding. The remarkable fact was that, to help me achieve the level of technical excellence expected, Rohan spent countless hours working side by side with me on algorithms and theory, programing in C + + , and writing drafts of scientific articles. Through this, I learned that kindness and technical excellence go hand in hand and are very effective when used together. The importance of unselfish collaboration was the next lesson I learned from Rohan. During my tenure with Rohan, he approached all scientific engagements in a very unselfish collaborative manner. His primary focus was always on solving the scientific problem of interest without worrying about getting credit for his contributions. This unselfish collaborative approach, combined with his outstanding technical excellence and kindness, made Rohan a highly sought-after and respected collaborator for many distinguished scientists such as Charles Henderson, Dan Gianola, Daniel Sorensen, Moshe Soller, Bill Hill, Robert Elston, Jack Dekkers, Dorian Garrick, Albrecht Melchinger etc. many of whom he wrote publications with. However, Rohan treated students and early career scientists with the same unselfish collaborative spirit, thus helping many of them move forward on their projects through mentorship and guidance. Finally, Rohan always role modeled to his students the need for respectful inquisitiveness when working on problems where the expertise resides in other fields of science. I recall us spending many hours in the late 1990’s early 2000’s discussing fine points and intricacies of Markov chain Monte Carlo (MCMC) theory with Wolfgang Kliemann who was a Mathematics professor at ISU or discussing graph theory and high-performance parallel computing programming with various faculty in Computer Science. I also recall taking, at Rohan’s recommendation, a class in Measure Theory in the Mathematics Department at ISU to try to better understand the foundational theory behind MCMC. While at the time I did not see the immediate practical value of these scientific domains, which were also rather difficult for me to understand, it became clear in time that Rohan was in fact setting the foundation needed for him to become one of if not the foremost technical expert in Bayesian MCMC methodology and computational software applied to agriculture. Through his actions, he was teaching his students the value of respectful inquisitiveness when working on complex problems that require interactions with experts from other scientific domains.</p><p>In my experience, all four behaviors cultivated by Rohan in his training system are essential to succeed as a technical expert in the seed industry and more broadly plant agriculture. This is especially true in a global research and development organization, like the one at Corteva Agriscience, that operates based on multi-cultural teamwork, collaboration, agility and continuous integration of new science and technology into large-scale production systems.</p><p>From a personal perspective, it has become second nature for me to leverage Rohan’s “systems” based approach to research and training as we develop new scientific roadmaps at Corteva Agriscience. A relevant example is the scientific roadmap that we have developed for the integration of crop growth models with whole genome prediction [26, 27]. I argue that we have developed this new roadmap by leveraging most if not all the components role modeled by Rohan throughout his career: (1) form a cohesive team with a talented early career post-doctoral scientist (Frank Technow 2014 to 2015); (2) establish unselfish collaboration and respectful inquisitiveness based working patterns with crop growth modeling experts (Charlie Messina and Mark Cooper); and (3) adopt and promote the 3-step “systems” approach to enable additional collaborators to help evaluate and explore the value of the new roadmap developed [28]. This editorial provides a personal perspective on the impact of Rohan Fernando on the seed industry and thus plant agriculture. However, it is likely an incomplete view given that several other former students of Rohan work in key roles in the seed industry for companies such as: BASF, Bayer, and Corteva Agriscience. It is my hope that I have managed to bring to light some of the contributions made by Rohan to global agriculture, and maybe encourage others to complete the picture with their perspectives.</p><p>not applicable.</p><ol data-track-component=\\\"outbound reference\\\"><li data-counter=\\\"1.\\\"><p>Gianola D, Cantet RJ, Dekkers JCM, Pérez-Enciso M. Rohan Fernando: a road from Sri Lanka to Ames. Genet Sel Evol. 2022;54:9.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"2.\\\"><p>Ritchie H, Rosado P, Roser M. Crop yields. 2022. https://ourworldindata.org/crop-yields/ Accessed 17 Jan 2024.</p></li><li data-counter=\\\"3.\\\"><p>Fernando RL, Gianola D. Optimum properties of the conditional mean as a selection criterion. Theor Appl Genet. 1986;72:822–5.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\\\"4.\\\"><p>Gianola D, Fernando RL. Bayesian methods in animal breeding theory. J Anim Sci. 1986;63:217–44.</p><p>Article Google Scholar </p></li><li data-counter=\\\"5.\\\"><p>Fernando RL. Genetic evaluation and selection using genotypic, phenotypic and pedigree information. In Proceedings of the 6th World Congress on Genetics Applied to Livestock Production: 11–16 January 1998; Armidale. 1998.</p></li><li data-counter=\\\"6.\\\"><p>Sorensen D, Fernando R, Gianola D. Inferring the trajectory of genetic variance in the course of artificial selection. Genet Res. 2001;77:83–94.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\\\"7.\\\"><p>Wolc A, Kranis A, Arango J, Settar P, Fulton JE, O’Sullivan NP, et al. Implementation of genomic selection in the poultry industry. Anim Front. 2016;6:23–31.</p><p>Article Google Scholar </p></li><li data-counter=\\\"8.\\\"><p>Fernando RL, Grossman M. Marker assisted selection using best linear unbiased prediction. Genet Sel Evol. 1989;21:467–77.</p><p>Article PubMed Central Google Scholar </p></li><li data-counter=\\\"9.\\\"><p>Wang T, Fernando RL, Grossman M. Genetic evaluation by best linear unbiased prediction using marker and trait information in a multibreed population. Genetics. 1998;148:507–15.</p><p>Article CAS PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"10.\\\"><p>Fernando RL, Habier D, Stricker C, Dekkers JCM, Totir LR. Genomic selection. Acta Agric Scand A Anim Sci. 2007;57:192–5.</p><p>CAS Google Scholar </p></li><li data-counter=\\\"11.\\\"><p>Habier D, Fernando RL, Dekkers JCM. The impact of genetic relationship information on genome-assisted breeding values. Genetics. 2007;177:2389–97.</p><p>Article CAS PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"12.\\\"><p>Habier D, Fernando RL, Kizilkaya K, Garrick DJ. Extension of the Bayesian alphabet for genomic selection. BMC Bioinformatics. 2011;12:186.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"13.\\\"><p>Fernando RL, Stricker C, Elston RC. The finite polygenic mixed model: an alternative formulation for the mixed model of inheritance. Theor Appl Genet. 1994;88:573–80.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\\\"14.\\\"><p>Stricker C, Fernando RL, Elston RC. An algorithm to approximate the likelihood for pedigree data with loops by cutting. Theor Appl Genet. 1995;91:1054–63.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\\\"15.\\\"><p>Fernandez SA, Fernando RL, Guldbrandtsen B, Totir LR, Carriquiry AL. Sampling genotypes in large pedigrees with loops. Genet Sel Evol. 2001;33:337–67.</p><p>Article CAS PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"16.\\\"><p>Totir LR, Fernando RL, Abraham J. An efficient algorithm to compute marginal posterior genotype probabilities for every member of a pedigree with loops. Genet Sel Evol. 2009;41:52.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"17.\\\"><p>Wang T, Fernando RL, Kachman SD. Matvec users’ guide. Version 1.03. 2003. https://www.yumpu.com/en/document/read/53822742/matvec-users-guide/. Accessed 17 Jan 2024.</p></li><li data-counter=\\\"18.\\\"><p>Fernando R, Garrick D. GenSel - User manual for a portfolio of genomic selection related analyses. Version 2.12. 2. Ames: Iowa State University; 2009.</p></li><li data-counter=\\\"19.\\\"><p>Cheng H, Fernando RL, Garrick DJ. JWAS: Julia implementation of whole-genome analysis software. In Proceedings of the 11<sup>th</sup> World Congress on Genetics Applied to Livestock Production: 11–16 February 2018; Auckland. 2018</p></li><li data-counter=\\\"20.\\\"><p>Kizilkaya K, Fernando RL, Garrick DJ. Genomic prediction of simulated multibreed and purebred performance using observed fifty thousand single nucleotide polymorphism genotypes. J Anim Sci. 2010;88:544–51.</p><p>Article CAS PubMed Google Scholar </p></li><li data-counter=\\\"21.\\\"><p>Cheng H, Fernando R, Garrick D, Zhao T, Qu J. JWAS version 2: leveraging biological information and high-throughput phenotypes into genomic prediction and association. In: Proceedings of 12th World Congress on Genetics Applied to Livestock Production: 3–8 August 2022; Rotterdam. 2022.</p></li><li data-counter=\\\"22.\\\"><p>Zhong S, Dekkers JC, Fernando RL, Jannink JL. Factors affecting accuracy from genomic selection in populations derived from multiple inbred lines: a barley case study. Genetics. 2009;182:355–64.</p><p>Article CAS PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"23.\\\"><p>Zhao Y, Zeng J, Fernando R, Reif JC. Genomic prediction of hybrid wheat performance. Crop Sci. 2013;53:802–10.</p><p>Article Google Scholar </p></li><li data-counter=\\\"24.\\\"><p>Melchinger AE, Fernando R, Stricker CC, Schön CC, Auinger HJ. Genomic prediction in hybrid breeding: I. Optimizing the training set design. Theor Appl Genet. 2023;136:176.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"25.\\\"><p>Kaminsky JP (Editor). The Quotable Jefferson. Princeton: Princeton University Press. 2006</p></li><li data-counter=\\\"26.\\\"><p>Technow F, Messina CD, Totir LR, Cooper M. Integrating crop growth models with whole genome prediction through approximate Bayesian computation. PLoS One. 2015;10: e0130855.</p><p>Article PubMed PubMed Central Google Scholar </p></li><li data-counter=\\\"27.\\\"><p>Messina CD, Technow F, Tang T, Totir R, Gho C, Cooper M. Leveraging biological insight and environmental variation to improve phenotypic prediction: Integrating crop growth models (CGM) with whole genome prediction (WGP). Eur J Agron. 2018;100:151–62.</p><p>Article Google Scholar </p></li><li data-counter=\\\"28.\\\"><p>Jighly A, Thayalakumaran T, O’Leary GJ, Kant S, Panozzo J, Aggarwal R, et al. Using genomic prediction with crop growth models enables the prediction of associated traits in wheat. J Exp Bot. 2023;74:1389–402.</p><p>Article CAS PubMed Google Scholar </p></li></ol><p>Download references<svg aria-hidden=\\\"true\\\" focusable=\\\"false\\\" height=\\\"16\\\" role=\\\"img\\\" width=\\\"16\\\"><use xlink:href=\\\"#icon-eds-i-download-medium\\\" xmlns:xlink=\\\"http://www.w3.org/1999/xlink\\\"></use></svg></p><h3>Authors and Affiliations</h3><ol><li><p>Breeding Technologies, Seed Product Development, Corteva Agriscience, Johnston, IA, 50131, USA</p><p>Liviu Radu Totir</p></li></ol><span>Authors</span><ol><li><span>Liviu Radu Totir</span>View author publications<p>You can also search for this author in <span>PubMed<span> </span>Google Scholar</span></p></li></ol><h3>Contributions</h3><p>LRT wrote, read and approved the final manuscript.</p><h3>Corresponding author</h3><p>Correspondence to Liviu Radu Totir.</p><h3>Publisher's Note</h3><p>Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.</p><p><b>Open Access</b> This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.</p>\\n<p>Reprints and permissions</p><img alt=\\\"Check for updates. Verify currency and authenticity via CrossMark\\\" height=\\\"81\\\" loading=\\\"lazy\\\" src=\\\"data:image/svg+xml;base64,<svg height="81" width="57" xmlns="http://www.w3.org/2000/svg"><g fill="none" fill-rule="evenodd"><path d="m17.35 35.45 21.3-14.2v-17.03h-21.3" fill="#989898"/><path d="m38.65 35.45-21.3-14.2v-17.03h21.3" fill="#747474"/><path d="m28 .5c-12.98 0-23.5 10.52-23.5 23.5s10.52 23.5 23.5 23.5 23.5-10.52 23.5-23.5c0-6.23-2.48-12.21-6.88-16.62-4.41-4.4-10.39-6.88-16.62-6.88zm0 41.25c-9.8 0-17.75-7.95-17.75-17.75s7.95-17.75 17.75-17.75 17.75 7.95 17.75 17.75c0 4.71-1.87 9.22-5.2 12.55s-7.84 5.2-12.55 5.2z" fill="#535353"/><path d="m41 36c-5.81 6.23-15.23 7.45-22.43 2.9-7.21-4.55-10.16-13.57-7.03-21.5l-4.92-3.11c-4.95 10.7-1.19 23.42 8.78 29.71 9.97 6.3 23.07 4.22 30.6-4.86z" fill="#9c9c9c"/><path d="m.2 58.45c0-.75.11-1.42.33-2.01s.52-1.09.91-1.5c.38-.41.83-.73 1.34-.94.51-.22 1.06-.32 1.65-.32.56 0 1.06.11 1.51.35.44.23.81.5 1.1.81l-.91 1.01c-.24-.24-.49-.42-.75-.56-.27-.13-.58-.2-.93-.2-.39 0-.73.08-1.05.23-.31.16-.58.37-.81.66-.23.28-.41.63-.53 1.04-.13.41-.19.88-.19 1.39 0 1.04.23 1.86.68 2.46.45.59 1.06.88 1.84.88.41 0 .77-.07 1.07-.23s.59-.39.85-.68l.91 1c-.38.43-.8.76-1.28.99-.47.22-1 .34-1.58.34-.59 0-1.13-.1-1.64-.31-.5-.2-.94-.51-1.31-.91-.38-.4-.67-.9-.88-1.48-.22-.59-.33-1.26-.33-2.02zm8.4-5.33h1.61v2.54l-.05 1.33c.29-.27.61-.51.96-.72s.76-.31 1.24-.31c.73 0 1.27.23 1.61.71.33.47.5 1.14.5 2.02v4.31h-1.61v-4.1c0-.57-.08-.97-.25-1.21-.17-.23-.45-.35-.83-.35-.3 0-.56.08-.79.22-.23.15-.49.36-.78.64v4.8h-1.61zm7.37 6.45c0-.56.09-1.06.26-1.51.18-.45.42-.83.71-1.14.29-.3.63-.54 1.01-.71.39-.17.78-.25 1.18-.25.47 0 .88.08 1.23.24.36.16.65.38.89.67s.42.63.54 1.03c.12.41.18.84.18 1.32 0 .32-.02.57-.07.76h-4.36c.07.62.29 1.1.65 1.44.36.33.82.5 1.38.5.29 0 .57-.04.83-.13s.51-.21.76-.37l.55 1.01c-.33.21-.69.39-1.09.53-.41.14-.83.21-1.26.21-.48 0-.92-.08-1.34-.25-.41-.16-.76-.4-1.07-.7-.31-.31-.55-.69-.72-1.13-.18-.44-.26-.95-.26-1.52zm4.6-.62c0-.55-.11-.98-.34-1.28-.23-.31-.58-.47-1.06-.47-.41 0-.77.15-1.07.45-.31.29-.5.73-.58 1.3zm2.5.62c0-.57.09-1.08.28-1.53.18-.44.43-.82.75-1.13s.69-.54 1.1-.71c.42-.16.85-.24 1.31-.24.45 0 .84.08 1.17.23s.61.34.85.57l-.77 1.02c-.19-.16-.38-.28-.56-.37-.19-.09-.39-.14-.61-.14-.56 0-1.01.21-1.35.63-.35.41-.52.97-.52 1.67 0 .69.17 1.24.51 1.66.34.41.78.62 1.32.62.28 0 .54-.06.78-.17.24-.12.45-.26.64-.42l.67 1.03c-.33.29-.69.51-1.08.65-.39.15-.78.23-1.18.23-.46 0-.9-.08-1.31-.24-.4-.16-.75-.39-1.05-.7s-.53-.69-.7-1.13c-.17-.45-.25-.96-.25-1.53zm6.91-6.45h1.58v6.17h.05l2.54-3.16h1.77l-2.35 2.8 2.59 4.07h-1.75l-1.77-2.98-1.08 1.23v1.75h-1.58zm13.69 1.27c-.25-.11-.5-.17-.75-.17-.58 0-.87.39-.87 1.16v.75h1.34v1.27h-1.34v5.6h-1.61v-5.6h-.92v-1.2l.92-.07v-.72c0-.35.04-.68.13-.98.08-.31.21-.57.4-.79s.42-.39.71-.51c.28-.12.63-.18 1.04-.18.24 0 .48.02.69.07.22.05.41.1.57.17zm.48 5.18c0-.57.09-1.08.27-1.53.17-.44.41-.82.72-1.13.3-.31.65-.54 1.04-.71.39-.16.8-.24 1.23-.24s.84.08 1.24.24c.4.17.74.4 1.04.71s.54.69.72 1.13c.19.45.28.96.28 1.53s-.09 1.08-.28 1.53c-.18.44-.42.82-.72 1.13s-.64.54-1.04.7-.81.24-1.24.24-.84-.08-1.23-.24-.74-.39-1.04-.7c-.31-.31-.55-.69-.72-1.13-.18-.45-.27-.96-.27-1.53zm1.65 0c0 .69.14 1.24.43 1.66.28.41.68.62 1.18.62.51 0 .9-.21 1.19-.62.29-.42.44-.97.44-1.66 0-.7-.15-1.26-.44-1.67-.29-.42-.68-.63-1.19-.63-.5 0-.9.21-1.18.63-.29.41-.43.97-.43 1.67zm6.48-3.44h1.33l.12 1.21h.05c.24-.44.54-.79.88-1.02.35-.24.7-.36 1.07-.36.32 0 .59.05.78.14l-.28 1.4-.33-.09c-.11-.01-.23-.02-.38-.02-.27 0-.56.1-.86.31s-.55.58-.77 1.1v4.2h-1.61zm-47.87 15h1.61v4.1c0 .57.08.97.25 1.2.17.24.44.35.81.35.3 0 .57-.07.8-.22.22-.15.47-.39.73-.73v-4.7h1.61v6.87h-1.32l-.12-1.01h-.04c-.3.36-.63.64-.98.86-.35.21-.76.32-1.24.32-.73 0-1.27-.24-1.61-.71-.33-.47-.5-1.14-.5-2.02zm9.46 7.43v2.16h-1.61v-9.59h1.33l.12.72h.05c.29-.24.61-.45.97-.63.35-.17.72-.26 1.1-.26.43 0 .81.08 1.15.24.33.17.61.4.84.71.24.31.41.68.53 1.11.13.42.19.91.19 1.44 0 .59-.09 1.11-.25 1.57-.16.47-.38.85-.65 1.16-.27.32-.58.56-.94.73-.35.16-.72.25-1.1.25-.3 0-.6-.07-.9-.2s-.59-.31-.87-.56zm0-2.3c.26.22.5.37.73.45.24.09.46.13.66.13.46 0 .84-.2 1.15-.6.31-.39.46-.98.46-1.77 0-.69-.12-1.22-.35-1.61-.23-.38-.61-.57-1.13-.57-.49 0-.99.26-1.52.77zm5.87-1.69c0-.56.08-1.06.25-1.51.16-.45.37-.83.65-1.14.27-.3.58-.54.93-.71s.71-.25 1.08-.25c.39 0 .73.07 1 .2.27.14.54.32.81.55l-.06-1.1v-2.49h1.61v9.88h-1.33l-.11-.74h-.06c-.25.25-.54.46-.88.64-.33.18-.69.27-1.06.27-.87 0-1.56-.32-2.07-.95s-.76-1.51-.76-2.65zm1.67-.01c0 .74.13 1.31.4 1.7.26.38.65.58 1.15.58.51 0 .99-.26 1.44-.77v-3.21c-.24-.21-.48-.36-.7-.45-.23-.08-.46-.12-.7-.12-.45 0-.82.19-1.13.59-.31.39-.46.95-.46 1.68zm6.35 1.59c0-.73.32-1.3.97-1.71.64-.4 1.67-.68 3.08-.84 0-.17-.02-.34-.07-.51-.05-.16-.12-.3-.22-.43s-.22-.22-.38-.3c-.15-.06-.34-.1-.58-.1-.34 0-.68.07-1 .2s-.63.29-.93.47l-.59-1.08c.39-.24.81-.45 1.28-.63.47-.17.99-.26 1.54-.26.86 0 1.51.25 1.93.76s.63 1.25.63 2.21v4.07h-1.32l-.12-.76h-.05c-.3.27-.63.48-.98.66s-.73.27-1.14.27c-.61 0-1.1-.19-1.48-.56-.38-.36-.57-.85-.57-1.46zm1.57-.12c0 .3.09.53.27.67.19.14.42.21.71.21.28 0 .54-.07.77-.2s.48-.31.73-.56v-1.54c-.47.06-.86.13-1.18.23-.31.09-.57.19-.76.31s-.33.25-.41.4c-.09.15-.13.31-.13.48zm6.29-3.63h-.98v-1.2l1.06-.07.2-1.88h1.34v1.88h1.75v1.27h-1.75v3.28c0 .8.32 1.2.97 1.2.12 0 .24-.01.37-.04.12-.03.24-.07.34-.11l.28 1.19c-.19.06-.4.12-.64.17-.23.05-.49.08-.76.08-.4 0-.74-.06-1.02-.18-.27-.13-.49-.3-.67-.52-.17-.21-.3-.48-.37-.78-.08-.3-.12-.64-.12-1.01zm4.36 2.17c0-.56.09-1.06.27-1.51s.41-.83.71-1.14c.29-.3.63-.54 1.01-.71.39-.17.78-.25 1.18-.25.47 0 .88.08 1.23.24.36.16.65.38.89.67s.42.63.54 1.03c.12.41.18.84.18 1.32 0 .32-.02.57-.07.76h-4.37c.08.62.29 1.1.65 1.44.36.33.82.5 1.38.5.3 0 .58-.04.84-.13.25-.09.51-.21.76-.37l.54 1.01c-.32.21-.69.39-1.09.53s-.82.21-1.26.21c-.47 0-.92-.08-1.33-.25-.41-.16-.77-.4-1.08-.7-.3-.31-.54-.69-.72-1.13-.17-.44-.26-.95-.26-1.52zm4.61-.62c0-.55-.11-.98-.34-1.28-.23-.31-.58-.47-1.06-.47-.41 0-.77.15-1.08.45-.31.29-.5.73-.57 1.3zm3.01 2.23c.31.24.61.43.92.57.3.13.63.2.98.2.38 0 .65-.08.83-.23s.27-.35.27-.6c0-.14-.05-.26-.13-.37-.08-.1-.2-.2-.34-.28-.14-.09-.29-.16-.47-.23l-.53-.22c-.23-.09-.46-.18-.69-.3-.23-.11-.44-.24-.62-.4s-.33-.35-.45-.55c-.12-.21-.18-.46-.18-.75 0-.61.23-1.1.68-1.49.44-.38 1.06-.57 1.83-.57.48 0 .91.08 1.29.25s.71.36.99.57l-.74.98c-.24-.17-.49-.32-.73-.42-.25-.11-.51-.16-.78-.16-.35 0-.6.07-.76.21-.17.15-.25.33-.25.54 0 .14.04.26.12.36s.18.18.31.26c.14.07.29.14.46.21l.54.19c.23.09.47.18.7.29s.44.24.64.4c.19.16.34.35.46.58.11.23.17.5.17.82 0 .3-.06.58-.17.83-.12.26-.29.48-.51.68-.23.19-.51.34-.84.45-.34.11-.72.17-1.15.17-.48 0-.95-.09-1.41-.27-.46-.19-.86-.41-1.2-.68z" fill="#535353"/></g></svg>\\\" width=\\\"57\\\"/><h3>Cite this article</h3><p>Totir, L.R. Academic research and training to advance global agriculture through quantitative genetics: a personal perspective on the contributions of Rohan Fernando. <i>Genet Sel Evol</i> <b>56</b>, 36 (2024). https://doi.org/10.1186/s12711-024-00906-6</p><p>Download citation<svg aria-hidden=\\\"true\\\" focusable=\\\"false\\\" height=\\\"16\\\" role=\\\"img\\\" width=\\\"16\\\"><use xlink:href=\\\"#icon-eds-i-download-medium\\\" xmlns:xlink=\\\"http://www.w3.org/1999/xlink\\\"></use></svg></p><ul data-test=\\\"publication-history\\\"><li><p>Published<span>: </span><span><time datetime=\\\"2024-05-03\\\">03 May 2024</time></span></p></li><li><p>DOI</abbr><span>: </span><span>https://doi.org/10.1186/s12711-024-00906-6</span></p></li></ul><h3>Share this article</h3><p>Anyone you share the following link with will be able to read this content:</p><button data-track=\\\"click\\\" data-track-action=\\\"get shareable link\\\" data-track-external=\\\"\\\" data-track-label=\\\"button\\\" type=\\\"button\\\">Get shareable link</button><p>Sorry, a shareable link is not currently available for this article.</p><p data-track=\\\"click\\\" data-track-action=\\\"select share url\\\" data-track-label=\\\"button\\\"></p><button data-track=\\\"click\\\" data-track-action=\\\"copy share url\\\" data-track-external=\\\"\\\" data-track-label=\\\"button\\\" type=\\\"button\\\">Copy to clipboard</button><p> Provided by the Springer Nature SharedIt content-sharing initiative </p>\",\"PeriodicalId\":55120,\"journal\":{\"name\":\"Genetics Selection Evolution\",\"volume\":null,\"pages\":null},\"PeriodicalIF\":3.6000,\"publicationDate\":\"2024-05-03\",\"publicationTypes\":\"Journal Article\",\"fieldsOfStudy\":null,\"isOpenAccess\":false,\"openAccessPdf\":\"\",\"citationCount\":\"0\",\"resultStr\":null,\"platform\":\"Semanticscholar\",\"paperid\":null,\"PeriodicalName\":\"Genetics Selection Evolution\",\"FirstCategoryId\":\"99\",\"ListUrlMain\":\"https://doi.org/10.1186/s12711-024-00906-6\",\"RegionNum\":1,\"RegionCategory\":\"农林科学\",\"ArticlePicture\":[],\"TitleCN\":null,\"AbstractTextCN\":null,\"PMCID\":null,\"EPubDate\":\"\",\"PubModel\":\"\",\"JCR\":\"Q1\",\"JCRName\":\"AGRICULTURE, DAIRY & ANIMAL SCIENCE\",\"Score\":null,\"Total\":0}","platform":"Semanticscholar","paperid":null,"PeriodicalName":"Genetics Selection Evolution","FirstCategoryId":"99","ListUrlMain":"https://doi.org/10.1186/s12711-024-00906-6","RegionNum":1,"RegionCategory":"农林科学","ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q1","JCRName":"AGRICULTURE, DAIRY & ANIMAL SCIENCE","Score":null,"Total":0}
引用次数: 0
摘要
然而,罗汉认为这些只是实现对当前科学问题的全面理解、培养他的学生以及帮助推进与农业相关的科学知识的垫脚石。因此,除了路线图类型的出版物使他对所从事研究领域的关键技术方面有了清晰的认识和理解(例如,从 2006 年开始,他发表了大量关于全基因组分析和基因组选择的出版物),罗汉共同编写的软件包使社区能够将这些知识应用于大规模的实际使用案例中[20, 21]。罗汉的科学出版物记录包含了他对植物育种的许多贡献,例如[22, 23],最近的一篇发表于 2023 年[24]。罗汉采用三步 "系统 "方法解决复杂而实用的遗传评估问题,种业是其受益者之一。例如,作为杜邦先锋与伊利诺伊大学合作的一部分,从 2005 年到 2011 年,我有机会每周与罗汉在伊利诺伊大学共事一天。这些每周一次的一对一工作会议主要侧重于讨论和理解与新兴的全基因组分析和基因组选择领域相关的方法论和软件开发策略的复杂性。罗汉一直热衷于确保这些新兴领域不仅仅是理论上的练习,还应该由植物育种人员来实施,以帮助全球种植者高效地创造新的改良作物品种。因此,我们的合作有助于杜邦先锋/科蒂娃农业科学公司更快地为全球客户提供更好的种子产品。这有助于提高单位面积土地的生产率。托马斯-杰斐逊(Thomas Jefferson)有一句名言:"能为任何国家提供的最大服务就是为其文化增添一种有用的植物"[25]。通过与杜邦先锋/Corteva Agriscience 的合作,罗汉不仅为一个国家,而且为人类提供了这项伟大的服务。接下来,我将谈谈罗汉培养研究生和博士后的方式。回首我与他共度的岁月,从学生到合作者,我再一次认识到 "系统 "的培养方法。在我看来,罗汉培养学生时注重四种行为:(1) 和蔼可亲;(2) 技术卓越;(3) 无私协作;(4) 尊重探究。我第一次见到罗翰是在 1995 年 8 月,当时我从罗马尼亚来到 UIUC 开始攻读动物育种与遗传学研究生课程。罗翰知道我没有住处,便让我在他家暂住,尽管玛吉-费尔南多(罗翰的第三个孩子)在我抵达前一周出生。这是罗汉多次对我表示友好而不求回报的第一次。这不仅让我感受到了自己的价值,还让我认识到,善意是建立有凝聚力的技术团队的重要杠杆。虽然罗翰总是很亲切,但他从一开始就明确表示,要想在他的项目中取得成功,就必须在应用和理论统计、定量遗传学和科学编程方面达到卓越的技术水平。不知不觉中,通过努力在罗翰的项目中取得卓越的技术成就,我也奠定了从动物育种无缝过渡到植物育种的基础。难能可贵的是,为了帮助我达到预期的卓越技术水平,Rohan 花了无数个小时与我并肩作战,研究算法和理论,用 C + + 编程,并撰写科学文章的草稿。通过这些工作,我认识到善良和卓越的技术是相辅相成的,两者结合在一起会非常有效。无私合作的重要性是我从 Rohan 身上学到的下一课。在我与罗汉共事期间,他以一种非常无私的合作方式对待所有的科研工作。他总是把主要精力放在解决感兴趣的科学问题上,而不担心因自己的贡献而获得荣誉。这种无私的合作方式,再加上他卓越的技术水平和仁慈,使罗汉成为查尔斯-亨德森(Charles Henderson)、丹-贾诺拉(Dan Gianola)、丹尼尔-索伦森(Daniel Sorensen)、莫什-索勒(Moshe Soller)、比尔-希尔(Bill Hill)、罗伯特-埃尔斯顿(Robert Elston)、杰克-德克斯(Jack Dekkers)、多里安-加里克(Dorian Garrick)、阿尔布雷希特-梅尔辛格(Albrecht Melchinger)等许多杰出科学家争相聘请和尊敬的合作者。不过,罗汉对待学生和职业生涯初期的科学家也同样具有无私的合作精神,因此通过导师和指导帮助他们中的许多人在项目上取得进展。 0/)适用于本文提供的数据,除非在数据的信用行中另有说明。转载和授权引用本文Totir, L.R. Academic research and training to advance global agriculture through quantitative genetics: a personal perspective on the contributions of Rohan Fernando.Genet Sel Evol 56, 36 (2024). https://doi.org/10.1186/s12711-024-00906-6Download citationPublished: 03 May 2024DOI: https://doi.org/10.1186/s12711-024-00906-6Share this articleAnyone you share the following link with will be able to read this content:Get shareable linkSorry, a shareable link is not currently available for this article.Copy to clipboard Provided by the Springer Nature SharedIt content-sharing initiative.
Academic research and training to advance global agriculture through quantitative genetics: a personal perspective on the contributions of Rohan Fernando
Rohan Fernando is known and celebrated for many outstanding technical contributions to Animal Breeding and Quantitative Genetics [1]. The intent of this Editorial is to provide a personal perspective on the impact of Rohan’s scientific and pedagogical excellence on global agriculture. In the animal breeding and genetics community, it is well known that Rohan has played key technical roles in multiple public/private partnerships that resulted in measurable improvements in animal agriculture. What is less known is that Rohan has also made important contributions towards the productivity and resilience of the seed industry and thus plant agriculture.
I am a former graduate and post-doctoral student of Rohan, working under his supervision from August 1995 to September 2004, first at the University of Illinois at Urbana Champaign (UIUC) and then at Iowa State University (ISU). I joined DuPont Pioneer—now Corteva Agriscience, one of the leading global Agriscience companies, in October 2004. Here, I have spent my entire career working with teams that develop and deploy methodology and software for optimized breeding analytics and decision systems to accelerate global crop improvement. Given this background, I will provide a personal perspective on Rohan’s contributions to the seed industry and thus plant agriculture.
The seed industry is a key component in building productive, resilient, and sustainable agricultural systems (Fig. 1).
Increased yield output per unit area of land is critical given the societal constraint of restricted land use for agriculture [2]. To achieve this, modern plant agriculture makes use of scientific and technological expertise from a very wide range of domains, in an integrated and coordinated systems-based approach. The coordinated use of applied statistics, quantitative genetics, statistical computing, and decision science, focused on optimization of artificial selection within plant breeding programs, is a critical lever used to increase agricultural productivity per hectare. Given this context, the impact of Rohan’s career on the seed industry can be traced back to two main areas: (1) creation of clear scientific and software roadmaps for optimized use of novel applied statistics, quantitative genetics, and statistical computing techniques, and (2) training of graduate and post-doctoral students in a style that enabled them to seamlessly use skill sets learned in the field of animal breeding for plant breeding.
First, I will address the impact of the scientific and software roadmaps that were created by Rohan during his career. When looking at the trajectory of his scientific career, as reflected by his more than 200 peer-reviewed publications, three main areas of research can be identified: (1) theory and software to enable optimized data-driven artificial selection and breeding program design e.g. [3,4,5,6,7]; (2) theory and software for integration of genomic data in breeding—from marker assisted best linear unbiased prediction (MABLUP) to genomic selection e.g. [8,9,10,11,12]; and (3) theory and software for genotype probability computations in pedigreed populations under various inheritance models e.g. [13,14,15,16]. All three research areas are critical for genetic improvement in both animal and plant agriculture. As illustrated by the selected references, Rohan built roadmaps in these research areas by (1) leveraging a unique and exquisite knowledge and understanding of applied and theoretical statistics, quantitative genetics, and high-performance scientific computer programming and (2) always fostering inclusive and collaborative work patterns with students and collaborators. While working with Rohan, I noticed that he always used a 3-step “systems” approach for any new algorithm, idea, theory, or programming language to be added into his scientific roadmaps. First, in-depth discussions focused on strengths and weaknesses, second doubling down on understanding all relevant technical nuances, and third programming it from scratch within cohesive high performance software platforms. Because of this 3-step “systems” approach to research, in addition to his many peer-reviewed publications, Rohan co-authored several high-performance scientific programs with students and collaborators such as MATVEC [17] and GenSel [18] both programmed in C + + , and JWAS [19] programmed in Julia. Each of these highly complex software platforms could have become the crowning achievement of many scientific careers. However, Rohan viewed them only as steppingstones towards achieving a complete understanding of the scientific problem at hand, training his students, and helping advance scientific knowledge relevant to agriculture. As a result, in addition to the roadmap type publications that brought clarity and understanding of critical technical aspects of the research areas he worked on (e.g., his large number of publications on whole-genome analysis and genomic selection, starting in 2006), the software packages co-authored by Rohan enabled the community to apply these learnings in large scale practical use cases [20, 21].
Rohan’s scientific publication record contains many contributions to plant breeding e.g. [22, 23] with the most recent one in 2023 [24]. The seed industry has been one of the beneficiaries of Rohan’s 3 step “systems” approach to solving complex but practical genetic evaluation problems. For example, as part of a DuPont Pioneer—ISU collaboration, I had the opportunity to work one day a week with Rohan at ISU from 2005 through 2011. These weekly one on one working sessions focused primarily on discussing and understanding the intricacies of the methodology and software development strategies relevant to the emerging whole-genome analysis and genomic selection domains. Rohan was always passionate about making sure that these emerging domains would be more than just a theoretical exercise, and that they should be implemented by plant breeders to aid in the efficient creation of new and improved crop varieties for the global grower community. Thus, our collaborative efforts helped DuPont Pioneer/Corteva Agriscience bring better seed products to our global customers faster. This helped increase the productivity per unit area of land. Thomas Jefferson famously said that “The greatest service which can be rendered any country is to add a useful plant to its culture” [25]. Through the collaboration with DuPont Pioneer/Corteva Agriscience, Rohan was able to provide this great service not just to one country, but to humankind.
Next, I will address the way Rohan trained graduate and post-doctoral students. When I look back at the many years I spent with him, first as a student and then as a collaborator, I recognize once more a “systems” approach to training. From my perspective, Rohan trained his students by focusing on four behaviors: (1) kindness, (2) technical excellence, (3) unselfish collaboration, and (4) respectful inquisitiveness. In the following, I will use my personal experience to discuss some aspects of this training approach.
I first met Rohan in August 1995 when I arrived at UIUC from Romania to start my graduate studies in Animal Breeding and Genetics. Knowing that I did not have a place to stay, Rohan offered me temporary accommodation in his home although Margie Fernando (Rohan’s third child) was born the week prior to my arrival. This was the first of many instances when Rohan showed kindness towards me without asking anything in return. This not only made me feel valued, but also realize that kindness is a critical lever in building cohesive technical teams. While always kind, Rohan made it very clear from the beginning that achieving technical excellence in applied and theoretical statistics, quantitative genetics, and scientific programming is a requirement to be successful in his program. Without realizing it, by striving to achieve technical excellence in Rohan’s program, I was also building the foundation that allowed me to seamlessly transition from animal to plant breeding. The remarkable fact was that, to help me achieve the level of technical excellence expected, Rohan spent countless hours working side by side with me on algorithms and theory, programing in C + + , and writing drafts of scientific articles. Through this, I learned that kindness and technical excellence go hand in hand and are very effective when used together. The importance of unselfish collaboration was the next lesson I learned from Rohan. During my tenure with Rohan, he approached all scientific engagements in a very unselfish collaborative manner. His primary focus was always on solving the scientific problem of interest without worrying about getting credit for his contributions. This unselfish collaborative approach, combined with his outstanding technical excellence and kindness, made Rohan a highly sought-after and respected collaborator for many distinguished scientists such as Charles Henderson, Dan Gianola, Daniel Sorensen, Moshe Soller, Bill Hill, Robert Elston, Jack Dekkers, Dorian Garrick, Albrecht Melchinger etc. many of whom he wrote publications with. However, Rohan treated students and early career scientists with the same unselfish collaborative spirit, thus helping many of them move forward on their projects through mentorship and guidance. Finally, Rohan always role modeled to his students the need for respectful inquisitiveness when working on problems where the expertise resides in other fields of science. I recall us spending many hours in the late 1990’s early 2000’s discussing fine points and intricacies of Markov chain Monte Carlo (MCMC) theory with Wolfgang Kliemann who was a Mathematics professor at ISU or discussing graph theory and high-performance parallel computing programming with various faculty in Computer Science. I also recall taking, at Rohan’s recommendation, a class in Measure Theory in the Mathematics Department at ISU to try to better understand the foundational theory behind MCMC. While at the time I did not see the immediate practical value of these scientific domains, which were also rather difficult for me to understand, it became clear in time that Rohan was in fact setting the foundation needed for him to become one of if not the foremost technical expert in Bayesian MCMC methodology and computational software applied to agriculture. Through his actions, he was teaching his students the value of respectful inquisitiveness when working on complex problems that require interactions with experts from other scientific domains.
In my experience, all four behaviors cultivated by Rohan in his training system are essential to succeed as a technical expert in the seed industry and more broadly plant agriculture. This is especially true in a global research and development organization, like the one at Corteva Agriscience, that operates based on multi-cultural teamwork, collaboration, agility and continuous integration of new science and technology into large-scale production systems.
From a personal perspective, it has become second nature for me to leverage Rohan’s “systems” based approach to research and training as we develop new scientific roadmaps at Corteva Agriscience. A relevant example is the scientific roadmap that we have developed for the integration of crop growth models with whole genome prediction [26, 27]. I argue that we have developed this new roadmap by leveraging most if not all the components role modeled by Rohan throughout his career: (1) form a cohesive team with a talented early career post-doctoral scientist (Frank Technow 2014 to 2015); (2) establish unselfish collaboration and respectful inquisitiveness based working patterns with crop growth modeling experts (Charlie Messina and Mark Cooper); and (3) adopt and promote the 3-step “systems” approach to enable additional collaborators to help evaluate and explore the value of the new roadmap developed [28]. This editorial provides a personal perspective on the impact of Rohan Fernando on the seed industry and thus plant agriculture. However, it is likely an incomplete view given that several other former students of Rohan work in key roles in the seed industry for companies such as: BASF, Bayer, and Corteva Agriscience. It is my hope that I have managed to bring to light some of the contributions made by Rohan to global agriculture, and maybe encourage others to complete the picture with their perspectives.
not applicable.
Gianola D, Cantet RJ, Dekkers JCM, Pérez-Enciso M. Rohan Fernando: a road from Sri Lanka to Ames. Genet Sel Evol. 2022;54:9.
Article PubMed PubMed Central Google Scholar
Ritchie H, Rosado P, Roser M. Crop yields. 2022. https://ourworldindata.org/crop-yields/ Accessed 17 Jan 2024.
Fernando RL, Gianola D. Optimum properties of the conditional mean as a selection criterion. Theor Appl Genet. 1986;72:822–5.
Article CAS PubMed Google Scholar
Gianola D, Fernando RL. Bayesian methods in animal breeding theory. J Anim Sci. 1986;63:217–44.
Article Google Scholar
Fernando RL. Genetic evaluation and selection using genotypic, phenotypic and pedigree information. In Proceedings of the 6th World Congress on Genetics Applied to Livestock Production: 11–16 January 1998; Armidale. 1998.
Sorensen D, Fernando R, Gianola D. Inferring the trajectory of genetic variance in the course of artificial selection. Genet Res. 2001;77:83–94.
Article CAS PubMed Google Scholar
Wolc A, Kranis A, Arango J, Settar P, Fulton JE, O’Sullivan NP, et al. Implementation of genomic selection in the poultry industry. Anim Front. 2016;6:23–31.
Article Google Scholar
Fernando RL, Grossman M. Marker assisted selection using best linear unbiased prediction. Genet Sel Evol. 1989;21:467–77.
Article PubMed Central Google Scholar
Wang T, Fernando RL, Grossman M. Genetic evaluation by best linear unbiased prediction using marker and trait information in a multibreed population. Genetics. 1998;148:507–15.
Article CAS PubMed PubMed Central Google Scholar
Fernando RL, Habier D, Stricker C, Dekkers JCM, Totir LR. Genomic selection. Acta Agric Scand A Anim Sci. 2007;57:192–5.
CAS Google Scholar
Habier D, Fernando RL, Dekkers JCM. The impact of genetic relationship information on genome-assisted breeding values. Genetics. 2007;177:2389–97.
Article CAS PubMed PubMed Central Google Scholar
Habier D, Fernando RL, Kizilkaya K, Garrick DJ. Extension of the Bayesian alphabet for genomic selection. BMC Bioinformatics. 2011;12:186.
Article PubMed PubMed Central Google Scholar
Fernando RL, Stricker C, Elston RC. The finite polygenic mixed model: an alternative formulation for the mixed model of inheritance. Theor Appl Genet. 1994;88:573–80.
Article CAS PubMed Google Scholar
Stricker C, Fernando RL, Elston RC. An algorithm to approximate the likelihood for pedigree data with loops by cutting. Theor Appl Genet. 1995;91:1054–63.
Article CAS PubMed Google Scholar
Fernandez SA, Fernando RL, Guldbrandtsen B, Totir LR, Carriquiry AL. Sampling genotypes in large pedigrees with loops. Genet Sel Evol. 2001;33:337–67.
Article CAS PubMed PubMed Central Google Scholar
Totir LR, Fernando RL, Abraham J. An efficient algorithm to compute marginal posterior genotype probabilities for every member of a pedigree with loops. Genet Sel Evol. 2009;41:52.
Article PubMed PubMed Central Google Scholar
Wang T, Fernando RL, Kachman SD. Matvec users’ guide. Version 1.03. 2003. https://www.yumpu.com/en/document/read/53822742/matvec-users-guide/. Accessed 17 Jan 2024.
Fernando R, Garrick D. GenSel - User manual for a portfolio of genomic selection related analyses. Version 2.12. 2. Ames: Iowa State University; 2009.
Cheng H, Fernando RL, Garrick DJ. JWAS: Julia implementation of whole-genome analysis software. In Proceedings of the 11th World Congress on Genetics Applied to Livestock Production: 11–16 February 2018; Auckland. 2018
Kizilkaya K, Fernando RL, Garrick DJ. Genomic prediction of simulated multibreed and purebred performance using observed fifty thousand single nucleotide polymorphism genotypes. J Anim Sci. 2010;88:544–51.
Article CAS PubMed Google Scholar
Cheng H, Fernando R, Garrick D, Zhao T, Qu J. JWAS version 2: leveraging biological information and high-throughput phenotypes into genomic prediction and association. In: Proceedings of 12th World Congress on Genetics Applied to Livestock Production: 3–8 August 2022; Rotterdam. 2022.
Zhong S, Dekkers JC, Fernando RL, Jannink JL. Factors affecting accuracy from genomic selection in populations derived from multiple inbred lines: a barley case study. Genetics. 2009;182:355–64.
Article CAS PubMed PubMed Central Google Scholar
Zhao Y, Zeng J, Fernando R, Reif JC. Genomic prediction of hybrid wheat performance. Crop Sci. 2013;53:802–10.
Article Google Scholar
Melchinger AE, Fernando R, Stricker CC, Schön CC, Auinger HJ. Genomic prediction in hybrid breeding: I. Optimizing the training set design. Theor Appl Genet. 2023;136:176.
Article PubMed PubMed Central Google Scholar
Kaminsky JP (Editor). The Quotable Jefferson. Princeton: Princeton University Press. 2006
Technow F, Messina CD, Totir LR, Cooper M. Integrating crop growth models with whole genome prediction through approximate Bayesian computation. PLoS One. 2015;10: e0130855.
Article PubMed PubMed Central Google Scholar
Messina CD, Technow F, Tang T, Totir R, Gho C, Cooper M. Leveraging biological insight and environmental variation to improve phenotypic prediction: Integrating crop growth models (CGM) with whole genome prediction (WGP). Eur J Agron. 2018;100:151–62.
Article Google Scholar
Jighly A, Thayalakumaran T, O’Leary GJ, Kant S, Panozzo J, Aggarwal R, et al. Using genomic prediction with crop growth models enables the prediction of associated traits in wheat. J Exp Bot. 2023;74:1389–402.
You can also search for this author in PubMedGoogle Scholar
Contributions
LRT wrote, read and approved the final manuscript.
Corresponding author
Correspondence to Liviu Radu Totir.
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.
Reprints and permissions
Cite this article
Totir, L.R. Academic research and training to advance global agriculture through quantitative genetics: a personal perspective on the contributions of Rohan Fernando. Genet Sel Evol56, 36 (2024). https://doi.org/10.1186/s12711-024-00906-6
Download citation
Published:
DOI: https://doi.org/10.1186/s12711-024-00906-6
Share this article
Anyone you share the following link with will be able to read this content:
Sorry, a shareable link is not currently available for this article.
Provided by the Springer Nature SharedIt content-sharing initiative
期刊介绍:
Genetics Selection Evolution invites basic, applied and methodological content that will aid the current understanding and the utilization of genetic variability in domestic animal species. Although the focus is on domestic animal species, research on other species is invited if it contributes to the understanding of the use of genetic variability in domestic animals. Genetics Selection Evolution publishes results from all levels of study, from the gene to the quantitative trait, from the individual to the population, the breed or the species. Contributions concerning both the biological approach, from molecular genetics to quantitative genetics, as well as the mathematical approach, from population genetics to statistics, are welcome. Specific areas of interest include but are not limited to: gene and QTL identification, mapping and characterization, analysis of new phenotypes, high-throughput SNP data analysis, functional genomics, cytogenetics, genetic diversity of populations and breeds, genetic evaluation, applied and experimental selection, genomic selection, selection efficiency, and statistical methodology for the genetic analysis of phenotypes with quantitative and mixed inheritance.