Qianqian Huang, Lei Zhou, Yahui Xue, Heng Du, Yue Zhuo, Ruihan Mao, Yaoxin Liu, Tiantian Yan, Wanying Li, Xiaofeng Wang, Jianfeng Liu
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引用次数: 0
摘要
育种计划的设计对于实现经济收益最大化至关重要。由于真实世界的试验往往成本高昂且耗时,因此模拟是测试这些计划的最有效措施。我们开发了 GOplan,这是一个全面且用户友好的 R 软件包,旨在开发考虑纯种种群和杂交系统的动物育种计划。与其他传统模拟器相比,它拥有主流的杂交育种框架,简化了建模过程,并使用基因流和贝叶斯优化方法来提高育种计划的效率。GOplan 包括三个关键功能:runCore() 用于评估核心育种计划的效果;runWhole() 用于预测经济结果和杂交育种系统的生产性能;runOpt() 用于优化杂交育种结构以获得更大的收益。这些功能有助于育种人员更好地规划和加快育种目标的实现。此外,贝叶斯优化算法在本研究中的应用为今后开发新的优化算法提供了宝贵的启示。该软件可在 https://github.com/CAU-TeamLiuJF/GOplan 上获取。
GOplan: an R package for animal breeding program design via integrating Gene Flow and Bayesian optimization methods.
The design of breeding programs is crucial for maximizing economic gains. Simulation provides the most efficient measures to test these programs, as real-world trials are often costly and time-consuming. We developed GOplan, a comprehensive and user-friendly R package designed to develop animal breeding programs considering pure-bred populations and crossbreeding systems. Compared with other traditional simulators, it has mainstream crossbreeding frameworks that streamline modeling and use Gene Flow and Bayesian optimization methods to enhance breeding program efficiency. GOplan includes 3 key functions: runCore() to evaluate the effects of nucleus breeding programs, runWhole() to predict economic outcomes and the production performance of crossbreeding systems, and runOpt() to optimize crossbreeding structures for greater profitability. These functions support breeders in better planning and accelerating breeding goals. Additionally, the application of Bayesian optimization algorithms in this study provides valuable insights for developing new optimization algorithms in the future. The software is available at https://github.com/CAU-TeamLiuJF/GOplan.
期刊介绍:
G3: Genes, Genomes, Genetics provides a forum for the publication of high‐quality foundational research, particularly research that generates useful genetic and genomic information such as genome maps, single gene studies, genome‐wide association and QTL studies, as well as genome reports, mutant screens, and advances in methods and technology. The Editorial Board of G3 believes that rapid dissemination of these data is the necessary foundation for analysis that leads to mechanistic insights.
G3, published by the Genetics Society of America, meets the critical and growing need of the genetics community for rapid review and publication of important results in all areas of genetics. G3 offers the opportunity to publish the puzzling finding or to present unpublished results that may not have been submitted for review and publication due to a perceived lack of a potential high-impact finding. G3 has earned the DOAJ Seal, which is a mark of certification for open access journals, awarded by DOAJ to journals that achieve a high level of openness, adhere to Best Practice and high publishing standards.