基于多层图卷积网络和注意机制的微生物与疾病关联预测

K. Shi, Lin Li, Juehua Yu, Yi Zhang, Xiaolan Xie
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引用次数: 0

摘要

近年来的临床证据证实,人类疾病是由居住在人体内的微生物影响的。识别潜在的微生物与疾病的关联可以提供对疾病发病机制的深入了解。然而,传统的生物学实验效率低下且成本高昂,计算方法成为一种新的替代选择。在这项工作中,我们引入了一种具有多层图卷积网络和注意机制的图神经网络方法(MLAGCNMDA)来预测潜在的微生物-疾病对。在MLAGCNMDA中,基于已知的微生物与疾病之间的关联以及微生物与疾病之间的多重相似性,构建了一个异构网络。此外,采用多层图卷积网络模型学习异构网络的节点嵌入,在每个图卷积层中引入注意机制来区分相邻节点的重要性。最后,使用双线性解码器对节点嵌入进行解码以重建微生物与疾病的关联。实验表明,该方法在留一和五重交叉验证评估框架下的可靠平均auc分别为0.945和0.946,优于基线方法。结直肠癌和肝硬化两种疾病的病例研究进一步证实了我们方法的可靠性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Microbe-Disease Associations via Multiple Layer Graph Convolutional Network and Attention Mechanism
Recently clinical evidences have confirmed that human diseases are affected by the microbes inhabiting human bodies. Identifying latent microbe-disease associations can provide a deep insight into the pathogenesis of diseases. However, traditional biological experiments are inefficient and expensive to achieve pathogenic microbes for diseases, computational approaches become a new alternative choice. In this work, we introduce a graph neural network method (MLAGCNMDA) with multiple layers of graph convolutional network and attention mechanism to predict potential microbe-disease pairs. In MLAGCNMDA, a heterogeneous network is constructed based on the known microbe-disease associations and multiple similarities between microbes and diseases. Moreover, nodes embedding of the heterogeneous network are learned by a multi-layer graph convolutional network model, in which the attention mechanism is introduced in each graph convolutional layer to distinguish the importance of neighbor nodes. Finally, a bilinear decoder is used to decode the node embedding to reconstruct microbe-disease associations. The experiments show that our method outperforms the baseline methods with reliable average AUCs of 0.945 and 0.946 in the Leave-one-out and 5-fold cross validation assessment framework. Case studies on two diseases, i.e., colorectal carcinoma and liver cirrhosis, further confirm the reliability and effectiveness of our method.
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