Encoding Clinical Data with the Human Phenotype Ontology for Computational Differential Diagnostics
Sebastian Köhler, N. Christine Øien, Orion J. Buske, Tudor Groza, Julius O. B. Jacobsen, Craig McNamara, Nicole Vasilevsky, Leigh C. Carmody, J. P. Gourdine, Michael Gargano, Julie A. McMurry, Daniel Danis, Christopher J. Mungall, Damian Smedley, Melissa Haendel, Peter N. Robinson
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Abstract
The Human Phenotype Ontology (HPO) is a standardized set of phenotypic terms that are organized in a hierarchical fashion. It is a widely used resource for capturing human disease phenotypes for computational analysis to support differential diagnostics. The HPO is frequently used to create a set of terms that accurately describe the observed clinical abnormalities of an individual being evaluated for suspected rare genetic disease. This profile is compared with computational disease profiles in the HPO database with the aim of identifying genetic diseases with comparable phenotypic profiles. The computational analysis can be coupled with the analysis of whole-exome or whole-genome sequencing data through applications such as Exomiser. This article explains how to choose an optimal set of HPO terms for these cases and enter them with software, such as PhenoTips and PatientArchive, and demonstrates how to use Phenomizer and Exomiser to generate a computational differential diagnosis. © 2019 by John Wiley & Sons, Inc.
用人类表型本体编码临床数据用于计算鉴别诊断
人类表型本体(Human Phenotype Ontology, HPO)是以分层方式组织的一组标准化的表型术语。它是一种广泛使用的资源,用于捕获人类疾病表型的计算分析,以支持鉴别诊断。HPO经常用于创建一组术语,准确描述正在评估疑似罕见遗传疾病的个体的观察到的临床异常。该档案与HPO数据库中的计算疾病档案进行比较,目的是确定具有可比表型档案的遗传疾病。计算分析可以通过Exomiser等应用程序与全外显子组或全基因组测序数据的分析相结合。本文解释了如何为这些病例选择一组最佳的HPO术语,并使用软件(如PhenoTips和PatientArchive)输入它们,并演示了如何使用Phenomizer和Exomiser生成计算性鉴别诊断。©2019 by John Wiley &儿子,Inc。
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