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OVA: integrating molecular and physical phenotype data from multiple biomedical domain ontologies with variant filtering for enhanced variant prioritization

机译:OVA:将来自多个生物医学领域本体的分子和物理表型数据与变体过滤相结合以增强变体优先级

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摘要

>Motivation: Exome sequencing has become a de facto standard method for Mendelian disease gene discovery in recent years, yet identifying disease-causing mutations among thousands of candidate variants remains a non-trivial task.>Results: Here we describe a new variant prioritization tool, OVA (ontology variant analysis), in which user-provided phenotypic information is exploited to infer deeper biological context. OVA combines a knowledge-based approach with a variant-filtering framework. It reduces the number of candidate variants by considering genotype and predicted effect on protein sequence, and scores the remainder on biological relevance to the query phenotype.We take advantage of several ontologies in order to bridge knowledge across multiple biomedical domains and facilitate computational analysis of annotations pertaining to genes, diseases, phenotypes, tissues and pathways. In this way, OVA combines information regarding molecular and physical phenotypes and integrates both human and model organism data to effectively prioritize variants. By assessing performance on both known and novel disease mutations, we show that OVA performs biologically meaningful candidate variant prioritization and can be more accurate than another recently published candidate variant prioritization tool.>Availability and implementation: OVA is freely accessible at >Supplementary information: are available at Bioinformatics online.>Contact:
机译:>动机:近年来,外显子测序已成为孟德尔疾病基因发现的事实上的标准方法,但在数千种候选变体中鉴定致病突变仍然是一项艰巨的任务。>结果: 在这里,我们描述了一种新的变体优先级排序工具OVA(本体变体分析),其中利用了用户提供的表型信息来推断更深的生物学背景。 OVA将基于知识的方法与变量过滤框架相结合。它通过考虑基因型和预测的对蛋白质序列的影响来减少候选变体的数量,并对其余与查询表型的生物学相关性进行评分。我们利用了几种本体,以便跨多个生物医学领域进行知识桥接并促进注释的计算分析与基因,疾病,表型,组织和途径有关。通过这种方式,OVA结合了有关分子和物理表型的信息,并整合了人类和模型生物的数据,从而有效地确定了变异的优先级。通过评估已知疾病和新型疾病突变的性能,我们证明OVA可以进行具有生物学意义的候选变异优先级确定,并且比最近发布的另一种候选变异优先级确定工具更准确。>可用性和实施​​:OVA可以免费访问在>补充信息:可从在线生物信息学获得。>联系方式:

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