首页> 外文期刊>Evolution: International Journal of Organic Evolution >ECOLOGICAL AND EVOLUTIONARY GENOMICS IN THE WILD TOMATOES (SOLANUM SECT. LYCOPERSICON)
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ECOLOGICAL AND EVOLUTIONARY GENOMICS IN THE WILD TOMATOES (SOLANUM SECT. LYCOPERSICON)

机译:野生番茄的生态和进化基因组学(SOLANUM SECTION。LYCOPERSICON)

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摘要

The plant group Solanum section Lycopersicon (the clade containing the domesticated tomato and its wild relatives) is ideal for integrating genomic tools and approaches into ecological and evolutionary research. Wild species within Lycopersicon span broad morphological, physiological, life history, mating system, and biochemical variation, and are separated by substantial, but incomplete postmating reproductive barriers, making this an ideal system for genetic analyses of these traits. This ecological and evolutionary diversity is matched by many logistical advantages, including extensive historical occurrence records for all species in the group, publicly available germplasm for hundreds of known wild accessions, demonstrated experimental tractability, and extensive genetic, genomic, and functional tools and information from the tomato research community. Here I introduce the numerous advantages of this system for Ecological and Evolutionary Functional Genomics (EEFG), and outline several ecological and evolutionary phenotypes and questions that can be fruitfully tackled in this system. These include biotic and abiotic adaptation, reproductive trait evolution, and the genetic basis of speciation. With the modest enhancement of some research strengths, this system is poised to join the best of our currently available model EEFG systems.
机译:植物组茄科切片番茄(包含驯化的番茄及其野生近缘的进化枝)是将基因组工具和方法整合到生态和进化研究中的理想选择。 Lycopersicon内的野生物种跨越广泛的形态,生理,生活史,交配系统和生化变异,并被大量但不完整的繁殖后代屏障隔开,这使其成为对这些性状进行遗传分析的理想系统。这种生态和进化多样性具有许多后勤优势,包括该群体所有物种的广泛历史发生记录,数百种已知野生种的可公开获得的种质,证明的实验可操作性以及广泛的遗传,基因组和功能工具以及来自番茄研究社区。在这里,我将介绍该系统对于生态和进化功能基因组学(EEFG)的众多优势,并概述了几种生态和进化表型以及可以在该系统中有效解决的问题。其中包括生物和非生物适应,生殖性状进化和物种形成的遗传基础。随着某些研究力量的适度增强,该系统已准备好加入我们目前可用的EEFG模型中最好的系统。

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