预测人类蛋白质与表型关联的计算方法:综述。

IF 3.7 Q2 GENETICS & HEREDITY Phenomics (Cham, Switzerland) Pub Date : 2021-08-06 eCollection Date: 2021-08-01 DOI:10.1007/s43657-021-00019-w
Lizhi Liu, Shanfeng Zhu
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摘要

破译人类蛋白质(基因)与表型之间的关系是表型组学研究的基本任务之一。人类表型本体(HPO)基于标准化的逻辑词汇来描述人类疾病中出现的异常表型,并为计算分析其遗传原因铺平了道路。迄今为止,已有许多计算方法被提出来预测蛋白质的 HPO 注释。在本文中,我们全面回顾了现有的预测新蛋白质 HPO 注释、识别缺失 HPO 注释以及根据某个 HPO 术语确定候选蛋白质优先级的方法。对于每个主题,我们首先给出了问题的形式化描述,然后系统地回顾了已发表的文献,强调了它们的优缺点,接着讨论了面临的挑战和有前景的未来方向。此外,我们还指出了几个值得探讨的潜在课题,包括负面 HPO 注释的选择和 HPO 错误注释的检测。我们相信,这篇综述将为计算表型分析领域的研究人员理解和开发新型预测算法提供启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Computational Methods for Prediction of Human Protein-Phenotype Associations: A Review.

Deciphering the relationship between human proteins (genes) and phenotypes is one of the fundamental tasks in phenomics research. The Human Phenotype Ontology (HPO) builds upon a standardized logical vocabulary to describe the abnormal phenotypes encountered in human diseases and paves the way towards the computational analysis of their genetic causes. To date, many computational methods have been proposed to predict the HPO annotations of proteins. In this paper, we conduct a comprehensive review of the existing approaches to predicting HPO annotations of novel proteins, identifying missing HPO annotations, and prioritizing candidate proteins with respect to a certain HPO term. For each topic, we first give the formalized description of the problem, and then systematically revisit the published literatures highlighting their advantages and disadvantages, followed by the discussion on the challenges and promising future directions. In addition, we point out several potential topics to be worthy of exploration including the selection of negative HPO annotations and detecting HPO misannotations. We believe that this review will provide insight to the researchers in the field of computational phenotype analyses in terms of comprehending and developing novel prediction algorithms.

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