The Sordariomycetes: an expanding resource with Big Data for mining in evolutionary genomics and transcriptomics.

IF 2.1 Q3 MYCOLOGY Frontiers in fungal biology Pub Date : 2023-06-30 eCollection Date: 2023-01-01 DOI:10.3389/ffunb.2023.1214537
Zheng Wang, Wonyong Kim, Yen-Wen Wang, Elizabeta Yakubovich, Caihong Dong, Frances Trail, Jeffrey P Townsend, Oded Yarden
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Abstract

Advances in genomics and transcriptomics accompanying the rapid accumulation of omics data have provided new tools that have transformed and expanded the traditional concepts of model fungi. Evolutionary genomics and transcriptomics have flourished with the use of classical and newer fungal models that facilitate the study of diverse topics encompassing fungal biology and development. Technological advances have also created the opportunity to obtain and mine large datasets. One such continuously growing dataset is that of the Sordariomycetes, which exhibit a richness of species, ecological diversity, economic importance, and a profound research history on amenable models. Currently, 3,574 species of this class have been sequenced, comprising nearly one-third of the available ascomycete genomes. Among these genomes, multiple representatives of the model genera Fusarium, Neurospora, and Trichoderma are present. In this review, we examine recently published studies and data on the Sordariomycetes that have contributed novel insights to the field of fungal evolution via integrative analyses of the genetic, pathogenic, and other biological characteristics of the fungi. Some of these studies applied ancestral state analysis of gene expression among divergent lineages to infer regulatory network models, identify key genetic elements in fungal sexual development, and investigate the regulation of conidial germination and secondary metabolism. Such multispecies investigations address challenges in the study of fungal evolutionary genomics derived from studies that are often based on limited model genomes and that primarily focus on the aspects of biology driven by knowledge drawn from a few model species. Rapidly accumulating information and expanding capabilities for systems biological analysis of Big Data are setting the stage for the expansion of the concept of model systems from unitary taxonomic species/genera to inclusive clusters of well-studied models that can facilitate both the in-depth study of specific lineages and also investigation of trait diversity across lineages. The Sordariomycetes class, in particular, offers abundant omics data and a large and active global research community. As such, the Sordariomycetes can form a core omics clade, providing a blueprint for the expansion of our knowledge of evolution at the genomic scale in the exciting era of Big Data and artificial intelligence, and serving as a reference for the future analysis of different taxonomic levels within the fungal kingdom.

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Sordariomycetes:利用大数据挖掘进化基因组学和转录组学的不断扩大的资源。
基因组学和转录组学的进步伴随着组学数据的快速积累,提供了新的工具,改变和扩展了模式真菌的传统概念。进化基因组学和转录组学随着经典和更新真菌模型的使用而蓬勃发展,这些模型有助于研究真菌生物学和发展等不同主题。技术进步也为获取和挖掘大型数据集创造了机会。其中一个不断增长的数据集是Sordariomycetes的数据集,它展示了物种的丰富性、生态多样性、经济重要性,以及对可接受模型的深刻研究历史。目前,3574个此类物种已被测序,占可用子囊菌基因组的近三分之一。在这些基因组中,存在镰刀菌属、神经孢子菌属和木霉属的多个代表。在这篇综述中,我们审查了最近发表的关于Sordariomycetes的研究和数据,这些研究和数据通过对真菌的遗传、致病和其他生物学特征的综合分析,为真菌进化领域提供了新的见解。其中一些研究应用了不同谱系中基因表达的祖先状态分析来推断调控网络模型,确定真菌性发育的关键遗传因素,并研究分生孢子萌发和次生代谢的调控。这种多物种研究解决了真菌进化基因组学研究中的挑战,这些研究通常基于有限的模式基因组,主要关注由少数模式物种的知识驱动的生物学方面。大数据的快速积累信息和系统生物学分析能力的扩展,为模型系统的概念从单一的分类物种/属扩展到经过充分研究的模型的包容性集群奠定了基础,这既有助于对特定谱系的深入研究,也有助于跨谱系特征多样性的调查。特别是Sordariomycetes类,提供了丰富的组学数据和庞大而活跃的全球研究社区。因此,Sordariomycetes可以形成一个核心组学分支,为我们在大数据和人工智能的激动人心的时代在基因组尺度上扩展进化知识提供蓝图,并为未来分析真菌界不同分类水平提供参考。
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CiteScore
2.70
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审稿时长
13 weeks
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