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A Computational Method Based on the Integration of Heterogeneous Networks for Predicting Disease-Gene Associations

机译:基于异构网络集成的疾病基因关联预测计算方法

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摘要

The identification of disease-causing genes is a fundamental challenge in human health and of great importance in improving medical care, and provides a better understanding of gene functions. Recent computational approaches based on the interactions among human proteins and disease similarities have shown their power in tackling the issue. In this paper, a novel systematic and global method that integrates two heterogeneous networks for prioritizing candidate disease-causing genes is provided, based on the observation that genes causing the same or similar diseases tend to lie close to one another in a network of protein-protein interactions. In this method, the association score function between a query disease and a candidate gene is defined as the weighted sum of all the association scores between similar diseases and neighbouring genes. Moreover, the topological correlation of these two heterogeneous networks can be incorporated into the definition of the score function, and finally an iterative algorithm is designed for this issue. This method was tested with 10-fold cross-validation on all 1,126 diseases that have at least a known causal gene, and it ranked the correct gene as one of the top ten in 622 of all the 1,428 cases, significantly outperforming a state-of-the-art method called PRINCE. The results brought about by this method were applied to study three multi-factorial disorders: breast cancer, Alzheimer disease and diabetes mellitus type 2, and some suggestions of novel causal genes and candidate disease-causing subnetworks were provided for further investigation.
机译:致病基因的鉴定是人类健康的一项基本挑战,在改善医疗保健方面具有重要意义,并提供了对基因功能的更好理解。基于人类蛋白质之间的相互作用和疾病相似性的最新计算方法已经显示出解决该问题的能力。在本文中,基于观察到导致相同或相似疾病的基因在蛋白质网络中往往彼此靠近的现象,提供了一种新颖的系统性全局方法,该方法整合了两个异构网络来对候选致病基因进行优先排序。蛋白质相互作用。在这种方法中,查询疾病和候选基因之间的关联评分函数定义为相似疾病和邻近基因之间的所有关联评分的加权和。此外,可以将这两个异构网络的拓扑相关性纳入评分函数的定义中,最后针对该问题设计了一种迭代算法。对所有具有至少一个已知因果基因的1,126种疾病进行了10倍交叉验证的测试,该方法将正确的基因列为所有1,428例病例中的622例中排名前十的基因之一。最先进的方法称为PRINCE。该方法所产生的结果被用于研究三种多因素疾病:乳腺癌,阿尔茨海默氏病和2型糖尿病,并提供了一些新颖的病因基因和候选致病子网络的建议,以供进一步研究。

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