Anisimova M, Liberles D A
Department of Biology, University College London, London, UK.
Heredity (Edinb). 2007 Dec;99(6):567-79. doi: 10.1038/sj.hdy.6801052. Epub 2007 Sep 12.
Continued genome sequencing has fueled progress in statistical methods for understanding the action of natural selection at the molecular level. This article reviews various statistical techniques (and their applicability) for detecting adaptation events and the functional divergence of proteins. As large-scale automated studies become more frequent, they provide a useful resource for generating biological null hypotheses for further experimental and statistical testing. Furthermore, they shed light on typical patterns of lineage-specific evolution of organisms, on the functional and structural evolution of protein families and on the interplay between the two. More complex models are being developed to better reflect the underlying biological and chemical processes and to complement simpler statistical models. Linking molecular processes to their statistical signatures in genomes can be demanding, and the proper application of statistical models is discussed.
持续的基因组测序推动了在分子水平上理解自然选择作用的统计方法的进步。本文综述了用于检测适应事件和蛋白质功能差异的各种统计技术(及其适用性)。随着大规模自动化研究变得越来越频繁,它们为生成生物学零假设以进行进一步的实验和统计检验提供了有用的资源。此外,它们还揭示了生物谱系特异性进化的典型模式、蛋白质家族的功能和结构进化以及两者之间的相互作用。正在开发更复杂的模型,以更好地反映潜在的生物学和化学过程,并补充更简单的统计模型。将分子过程与其在基因组中的统计特征联系起来可能具有挑战性,本文还讨论了统计模型的正确应用。