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Analysis of protein sequence and interaction data for candidate disease gene prediction

机译:预测候选疾病基因的蛋白质序列和相互作用数据分析

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摘要

Linkage analysis is a successful procedure to associate diseases with specific genomic regions. These regions are often large, containing hundreds of genes, which make experimental methods employed to identify the disease gene arduous and expensive. We present two methods to prioritize candidates for further experimental study: Common Pathway Scanning (CPS) and Common Module Profiling (CMP). CPS is based on the assumption that common phenotypes are associated with dysfunction in proteins that participate in the same complex or pathway. CPS applies network data derived from protein–protein interaction (PPI) and pathway databases to identify relationships between genes. CMP identifies likely candidates using a domain-dependent sequence similarity approach, based on the hypothesis that disruption of genes of similar function will lead to the same phenotype. Both algorithms use two forms of input data: known disease genes or multiple disease loci. When using known disease genes as input, our combinedmethods have a sensitivity of 0.52 and a specificity of 0.97 and reduce the candidate list by 13-fold. Using multiple loci, our methods successfully identify disease genes for all benchmark diseases with a sensitivity of 0.84 and a specificity of 0.63. Our combined approach prioritizes good candidates and will accelerate the disease gene discovery process.
机译:连锁分析是将疾病与特定基因组区域相关联的成功方法。这些区域通常很大,包含数百个基因,这使得用于鉴定疾病基因的实验方法困难而昂贵。我们提供了两种方法来优先考虑可进行进一步实验研究的候选对象:通用路径扫描(CPS)和通用模块分析(CMP)。 CPS基于以下假设:共同的表型与参与相同复合物或途径的蛋白质的功能障碍有关。 CPS应用从蛋白质-蛋白质相互作用(PPI)和途径数据库获得的网络数据来识别基因之间的关系。 CMP基于一种假设,即功能相似的基因被破坏会导致相同的表型,从而使用域依赖性序列相似性方法来识别可能的候选基因。两种算法都使用两种形式的输入数据:已知疾病基因或多个疾病位点。当使用已知的疾病基因作为输入时,我们的组合方法具有0.52的灵敏度和0.97的特异性,并使候选列表减少13倍。使用多个基因座,我们的方法成功鉴定了所有基准疾病的疾病基因,敏感性为0.84,特异性为0.63。我们的组合方法优先考虑好的候选对象,并将加快疾病基因的发现过程。

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