LCASPMDA: a computational model for predicting potential microbe-drug associations based on learnable graph convolutional attention networks and self-paced iterative sampling ensemble

Zinuo Yang, Lei Wang, Xiangrui Zhang, Bin Zeng, Zhen Zhang, Xin Liu
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Abstract

Numerous studies show that microbes in the human body are very closely linked to the human host and can affect the human host by modulating the efficacy and toxicity of drugs. However, discovering potential microbe-drug associations through traditional wet labs is expensive and time-consuming, hence, it is important and necessary to develop effective computational models to detect possible microbe-drug associations.In this manuscript, we proposed a new prediction model named LCASPMDA by combining the learnable graph convolutional attention network and the self-paced iterative sampling ensemble strategy to infer latent microbe-drug associations. In LCASPMDA, we first constructed a heterogeneous network based on newly downloaded known microbe-drug associations. Then, we adopted the learnable graph convolutional attention network to learn the hidden features of nodes in the heterogeneous network. After that, we utilized the self-paced iterative sampling ensemble strategy to select the most informative negative samples to train the Multi-Layer Perceptron classifier and put the newly-extracted hidden features into the trained MLP classifier to infer possible microbe-drug associations.Intensive experimental results on two different public databases including the MDAD and the aBiofilm showed that LCASPMDA could achieve better performance than state-of-the-art baseline methods in microbe-drug association prediction.
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LCASPMDA:基于可学习图卷积注意力网络和自步进迭代采样集合的潜在微生物-药物关联预测计算模型
大量研究表明,人体内的微生物与人类宿主有着非常密切的联系,可以通过调节药物的药效和毒性来影响人类宿主。然而,通过传统的湿实验室发现潜在的微生物-药物关联既昂贵又耗时,因此,开发有效的计算模型来检测可能的微生物-药物关联是非常重要和必要的。在本手稿中,我们提出了一种新的预测模型,名为LCASPMDA,它结合了可学习图卷积注意力网络和自步进迭代采样集合策略来推断潜在的微生物-药物关联。在 LCASPMDA 中,我们首先根据新下载的已知微生物-药物关联构建了一个异构网络。然后,我们采用可学习图卷积注意力网络来学习异构网络中节点的隐藏特征。在两个不同的公共数据库(包括 MDAD 和 aBiofilm)上的大量实验结果表明,LCASPMDA 在微生物-药物关联预测方面的性能优于最先进的基线方法。
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