Robinson Peter N, Webber Caleb
Institute for Medical Genetics and Human Genetics, Charité-Universitätsmedizin Berlin, Berlin, Germany; Berlin Brandenburg Center for Regenerative Therapies (BCRT), Charité-Universitätsmedizin Berlin, Berlin, Germany; Max Planck Institute for Molecular Genetics, Berlin, Germany; Institute for Bioinformatics, Department of Mathematics and Computer Science, Freie Universität Berlin, Berlin, Germany.
MRC Functional Genomics Unit, Department of Physiology, Anatomy and Genetics, University of Oxford, Oxford, United Kingdom.
PLoS Genet. 2014 Apr 3;10(4):e1004268. doi: 10.1371/journal.pgen.1004268. eCollection 2014 Apr.
The use of model organisms as tools for the investigation of human genetic variation has significantly and rapidly advanced our understanding of the aetiologies underlying hereditary traits. However, while equivalences in the DNA sequence of two species may be readily inferred through evolutionary models, the identification of equivalence in the phenotypic consequences resulting from comparable genetic variation is far from straightforward, limiting the value of the modelling paradigm. In this review, we provide an overview of the emerging statistical and computational approaches to objectively identify phenotypic equivalence between human and model organisms with examples from the vertebrate models, mouse and zebrafish. Firstly, we discuss enrichment approaches, which deem the most frequent phenotype among the orthologues of a set of genes associated with a common human phenotype as the orthologous phenotype, or phenolog, in the model species. Secondly, we introduce and discuss computational reasoning approaches to identify phenotypic equivalences made possible through the development of intra- and interspecies ontologies. Finally, we consider the particular challenges involved in modelling neuropsychiatric disorders, which illustrate many of the remaining difficulties in developing comprehensive and unequivocal interspecies phenotype mappings.
使用模式生物作为研究人类遗传变异的工具,极大且迅速地推进了我们对遗传性状潜在病因的理解。然而,虽然通过进化模型可以很容易地推断出两个物种在DNA序列上的等同性,但要确定由可比的遗传变异所导致的表型后果的等同性却绝非易事,这限制了建模范式的价值。在本综述中,我们概述了新兴的统计和计算方法,以客观地确定人类与模式生物之间的表型等同性,并以脊椎动物模型小鼠和斑马鱼为例进行说明。首先,我们讨论富集方法,该方法将与常见人类表型相关的一组基因的直系同源物中最常见的表型视为模式物种中的直系同源表型或表型相似物。其次,我们介绍并讨论通过种内和种间本体的发展而得以实现的用于识别表型等同性的计算推理方法。最后,我们考虑在对神经精神疾病进行建模时所涉及的特殊挑战,这些挑战说明了在开发全面且明确的种间表型映射方面仍然存在的许多困难。