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Prioritizing human disease genes by multiple data integration

机译:通过多种数据整合确定人类疾病基因的优先级

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Now multiple types of data are available for prioritizing human disease genes, including gene-disease associations, disease phenotype similarities, locations of genes or their corresponding proteins in biological networks, etc. Integrating multiple types of data is expected to be effective for prioritizing human disease genes. In this paper, we propose a multiple data integration method based on the theory of Markov Random Field (MRF) and the method of Bayesian analysis for prioritizing human disease genes. The proposed method is not only flexible in easily incorporating different kinds of data, but also reliable in predicting candidate disease genes. Numerical experiments are carried out by integrating known gene-disease associations, protein complexes, protein-protein interactions and gene expression profiles. Predictions are evaluated by both the leave-one-out method and the fold enrichment method. The sensitivity and the specificity can reach at roughly 80% simultaneously. The method achieves 56.02-fold enrichment on average when integrating all those biological data in our experiments.
机译:现在,多种类型的数据可用于优先考虑人类疾病基因,包括基因疾病关联,疾病表型相似性,基因的位置或它们在生物网络中的相应蛋白质等。预计将多种类型的数据相结合,将有效优先考虑人类疾病基因。在本文中,我们提出了一种基于Markov随机场(MRF)理论的多数据集成方法及贝叶斯分析方法优先考虑人类疾病基因。所提出的方法不仅易于掺入不同类型的数据,而且在预测候选疾病基因方面也可靠。通过将已知的基因疾病缔合,蛋白质复合物,蛋白质 - 蛋白质相互作用和基因表达谱集成来进行数值实验。通过休养方式和折叠富集方法评估预测。灵敏度和特异性同时可以达到大约80%。当在我们的实验中整合所有这些生物数据时,该方法平均达到56.02倍的富集。

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