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A Novel Candidate Disease Genes Prioritization Method Based on Module Partition and Rank Fusion

机译:一个新颖的候选致病基因优先级基于模块划分和等级融合方法

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摘要

Identifying disease genes is very important not only for better understanding of gene function and biological process but also for human medical improvement. Many computational methods have been proposed based on the similarity between all known disease genes (seed genes) and candidate genes in the entire gene interaction network. Under the hypothesis that potential disease-related genes should be near the seed genes in the network and only the seed genes that are located in the same module with the candidate genes will contribute to disease genes prediction, three modularized candidate disease gene prioritization algorithms (MCDGPAs) are proposed to identify disease-related genes. MCDGPA is divided into three steps: module partition, genes prioritization in each disease-associated module, and rank fusion for the global ranking. When applied to the prostate cancer and breast cancer network, MCDGPA significantly improves previous algorithms in terms of cross-validation and disease-related genes prediction. In addition, the improvement is robust to the selection of gene prioritization methods when implementing prioritization in each disease-associated module and module partition algorithms when implementing network partition. In this sense MCDGPA is a general framework that allows integrating many previous gene prioritization methods and improving predictive accuracy.
机译:识别疾病基因是非常重要的只是为了更好的理解基因功能和生物过程也是对人类医学改进。提出了基于相似性已知致病基因(种子基因)和候选人基因在整个基因相互作用网络。在潜在的假设疾病相关的基因应该是附近的种子基因网络中,只有种子基因位于相同模块的人选基因将有助于疾病的基因疾病预测3模块化的候选人基因排序算法(MCDGPAs)提出识别疾病相关基因。MCDGPA分为三个步骤:模块优先级在每个分区中,基因疾病有关的模块,和等级融合全球排名。癌症和乳腺癌网络,MCDGPA极大地提高了以前的算法交叉验证和疾病基因预测。健壮的基因选择的优先级方法在实现优先级疾病相关模块和模块划分算法在实现网络分区。在这个意义上MCDGPA是一个通用的框架允许将此前的许多基因优先级的方法和改善预测准确性。

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