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HeteroDualNet: A Dual Convolutional Neural Network With Heterogeneous Layers for Drug-Disease Association Prediction via Chou’s Five-Step Rule

机译:异统计网络:通过Chou的五步规则,一种具有异质层的双卷积神经网络,用于毒性疾病协会预测

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摘要

Identifying new treatments for existing drugs can help reduce drug development costs and explore novel indications of drugs. The prediction of associations between drugs and diseases is challenging because their similarities and relations are complicated and non-linear. We propose a HeteroDualNet model to address this issue. Firstly, three types of matrices are extracted to represent intra-drug similarities, intra-disease similarity and drug-disease associations. The intra-drug similarities consider three drug features and a newly introduced drug-related disease correlation. Secondly, an embedding mechanism is proposed to integrate these matrices in a heterogenous drug-disease association layer (hetero-layer). Further, a neighbouring heterogeneous layer (hetero-layer-N) is constructed to incorporate the biological premise that similar drugs can often treat related diseases. Finally, a dual convolutional neural network is built with hetero-layer and hetero-layer-N as two branches to learn from characteristics of drug-disease and the relations of their neighbours simultaneously. HeteroDualNet outperformed the other four methods in comparison over a public dataset of 763 drugs and 681 diseases in terms of Areas Under the Curves of Receiver Operating Characteristics and Precision-Recall, and recall rate at top k. Case study of five drugs further proved the capacity of HeteroDualNet in finding reliable disease candidates of drugs as validated by database records or literature. Our findings show that the embedded heterogenous layers of original and neighbouring drug-disease representations in a dual neural network improved the association prediction performance.
机译:确定现有药物的新治疗方法可以帮助减少药物开发成本并探索药物的新迹象。预测药物与疾病之间的关联是挑战性的,因为它们的相似之处和关系是复杂和非线性的。我们提出了一个heterodupnet模型来解决这个问题。首先,提取三种类型的基质以表示药物内相似性,疾病内相似性和毒性疾病关联。药物内相似之处考虑了三种药物特征和新引入的药物相关疾病相关性。其次,提出了一种嵌入机制以将这些基质与异质药物 - 疾病结合层(异质层)整合。此外,构建相邻的异质层(异质层-N)以纳入该生物前提,即类似的药物通常可以治疗相关疾病。最后,双卷积神经网络是用异质层和异质层-N构建的,作为两个分支,以学习药物疾病的特征和同时邻居的关系。异统计网络与在接收器操作特性和精密召回曲线下的区域的公共数据集和681个疾病的公共数据集中相比,相比之下。对五种药物的案例研究进一步证明了异障碍的能力在数据库记录或文学中验证的药物可靠疾病候选人。我们的研究结果表明,双神经网络中的嵌入式异质层和邻近的药物疾病表示改善了关联预测性能。

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