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Predicting disease-genes based on network information loss and protein complexes in heterogeneous network

机译:基于网络信息丧失和异构网络蛋白复合物预测疾病 - 基因

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摘要

Research on disease-related genes has always been a visible focus in the biological field. This study can help us to reveal the hidden mechanism of human diseases. Although many methods have been developed, the accuracy of identifying disease-genes remains challenging. We propose a computation-based method for predicting disease-genes. The investigations are inspired by the information loss model for evaluating similarities between network nodes and human protein complexes that reflect interactions between genes. Furthermore, we also combine other data such as IncRNA to construct a triple heterogeneous network and design a network propagation algorithm applied to the heterogeneous network (InLPCH). This algorithm effectively reduces the number of false positives in the biological networks when predicting disease-genes and combines the multiple propagation paths of the heterogeneous network to improve prediction accuracy. We conduct extensive experiments over disease-genes dataset. The InLPCH demonstrates high performance in comparison with six other state-of-the-art algorithms. (C) 2018 Elsevier Inc. All rights reserved.
机译:对疾病相关基因的研究始终是生物领域的可见聚焦。本研究可以帮助我们揭示人类疾病的隐藏机制。虽然已经开发了许多方法,但鉴定疾病基因的准确性仍然具有挑战性。我们提出了一种基于计算的预测疾病基因的方法。调查是通过用于评估反映基因之间相互作用的网络节点和人蛋白复合物之间的相似性的信息损失模型的启发。此外,我们还将其他数据组合以构建三重异构网络,并设计应用于异构网络(INLPCH)的网络传播算法。当预测疾病 - 基因时,该算法有效地减少了生物网络中的误报的数量,并结合了异构网络的多传播路径以提高预测精度。我们对氏疾病基因数据集进行了广泛的实验。与六种其他最先进的算法相比,INLPCH展示了高性能。 (c)2018年Elsevier Inc.保留所有权利。

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