Vertebrate Genomics Team, European Bioinformatics Institute, Wellcome Trust Genome Campus, Hinxton, Cambridge, United Kingdom.
Hum Mutat. 2012 May;33(5):858-66. doi: 10.1002/humu.22051. Epub 2012 Mar 16.
Mouse phenotype data represents a valuable resource for the identification of disease-associated genes, especially where the molecular basis is unknown and there is no clue to the candidate gene's function, pathway involvement or expression pattern. However, until recently these data have not been systematically used due to difficulties in mapping between clinical features observed in humans and mouse phenotype annotations. Here, we describe a semantic approach to solve this problem and demonstrate highly significant recall of known disease-gene associations and orthology relationships. A Web application (MouseFinder; www.mousemodels.org) has been developed to allow users to search the results of our whole-phenome comparison of human and mouse. We demonstrate its use in identifying ARTN as a strong candidate gene within the 1p34.1-p32 mapped locus for a hereditary form of ptosis.
鼠类表型数据是鉴定疾病相关基因的宝贵资源,尤其是在分子基础未知且候选基因的功能、途径参与或表达模式没有线索的情况下。然而,直到最近,由于在人类观察到的临床特征和鼠类表型注释之间进行映射存在困难,这些数据尚未得到系统利用。在这里,我们描述了一种语义方法来解决这个问题,并证明了对已知疾病-基因关联和同源关系的高度显著召回率。已经开发了一个 Web 应用程序(MouseFinder;www.mousemodels.org),允许用户搜索我们对人类和小鼠全表型比较的结果。我们展示了它在鉴定遗传性上睑下垂 1p34.1-p32 定位区域内的 ARTN 作为一个强有力的候选基因中的应用。