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Improving Disease Gene Prioritization by Comparing the Semantic Similarity of Phenotypes in Mice with Those of Human Diseases

机译:通过比较小鼠表型与人类疾病表型的语义相似性来改善疾病基因的优先级

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摘要

Despite considerable progress in understanding the molecular origins of hereditary human diseases, the molecular basis of several thousand genetic diseases still remains unknown. High-throughput phenotype studies are underway to systematically assess the phenotype outcome of targeted mutations in model organisms. Thus, comparing the similarity between experimentally identified phenotypes and the phenotypes associated with human diseases can be used to suggest causal genes underlying a disease. In this manuscript, we present a method for disease gene prioritization based on comparing phenotypes of mouse models with those of human diseases. For this purpose, either human disease phenotypes are "translated" into a mouse-based representation (using the Mammalian Phenotype Ontology), or mouse phenotypes are "translated" into a human-based representation (using the Human Phenotype Ontology). We apply a measure of semantic similarity and rank experimentally identified phenotypes in mice with respect to their phenotypic similarity to human diseases. Our method is evaluated on manually curated and experimentally verified gene-disease associations for human and for mouse. We evaluate our approach using a Receiver Operating Characteristic (ROC) analysis and obtain an area under the ROC curve of up to 0.899. Furthermore, we are able to confirm previous results that the Vax1 gene is involved in Septo-Optic Dysplasia and suggest Gdf6 and Marcks as further potential candidates. Our method significantly outperforms previous phenotype-based approaches of prioritizing gene-disease associations. To enable the adaption of our method to the analysis of other phenotype data, our software and prioritization results are freely available under a BSD licence at http://code.google.com/p/phenomeblast/wiki/CAMP. Furthermore, our method has been integrated in PhenomeNET and the results can be explored using the PhenomeBrowser at http://phenomebrowser.net.
机译:尽管在了解人类遗传疾病的分子起源方面取得了巨大进步,但数千种遗传疾病的分子基础仍然未知。高通量表型研究正在进行中,以系统地评估模型生物中靶向突变的表型结果。因此,比较实验鉴定的表型和与人类疾病相关的表型之间的相似性可用于暗示疾病的病因基因。在这份手稿中,我们提出了一种基于小鼠模型与人类疾病表型的疾病基因优先级排序方法。为此,将人类疾病表型“翻译”为基于小鼠的表示(使用哺乳动物表型本体),或将小鼠表型“翻译”为基于人的表示(使用人类表型本体)。我们应用了一种语义相似性的测量方法,并根据小鼠与人类疾病的表型相似性对实验确定的表型进行了排名。我们的方法是针对人和小鼠的人工策划和实验验证的基因疾病关联进行评估的。我们使用接收器工作特征(ROC)分析评估我们的方法,并在ROC曲线下获得的面积最大为0.899。此外,我们能够确认以前的结果,即Vax1基因参与了视光发育不良,并建议Gdf6和Marcks作为进一步的潜在候选者。我们的方法明显优于以前基于表型的基因-疾病关联优先方法。为了使我们的方法适应其他表型数据的分析,我们的软件和优先级排序结果可通过BSD许可免费获得,网址为http://code.google.com/p/phenomeblast/wiki/CAMP。此外,我们的方法已集成到PhenomeNET中,可以使用位于http://phenomebrowser.net的PhenomeBrowser探索结果。

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