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基于层注意图卷积网络的人体微生物-药物关联预测。

Prediction of Human Microbe-Drug Association based on Layer Attention Graph Convolutional Network.

机构信息

School of Computer Science and Artificial Intelligence & Aliyun School of Big Data, Changzhou University, Changzhou, 213164, China.

School of AI & Computer Science, Jiangnan University, Wuxi, 214122, China.

出版信息

Curr Med Chem. 2024;31(31):5097-5109. doi: 10.2174/0109298673249941231108091326.

Abstract

UNLABELLED

Human microbes are closely associated with a variety of complex diseases and have emerged as drug targets. Identification of microbe-related drugs is becoming a key issue in drug development and precision medicine. It can also provide guidance for solving the increasingly serious problem of drug resistance enhancement in viruses.

METHODS

In this paper, we have proposed a novel model of layer attention graph convolutional network for microbe-drug association prediction. First, multiple biological data have been integrated into a heterogeneous network. Then, the heterogeneous network has been incorporated into a graph convolutional network to determine the embedded microbe and drug. Finally, the microbe-drug association scores have been obtained by decoding the embedding of microbe and drug based on the layer attention mechanism.

RESULTS

To evaluate the performance of our proposed model, leave-one-out crossvalidation (LOOCV) and 5-fold cross-validation have been implemented on the two datasets of aBiofilm and MDAD. As a result, based on the aBiofilm dataset, our proposed model has attained areas under the curve (AUC) of 0.9178 and 0.9022 on global LOOCV and local LOOCV, respectively. Based on aBiofilm dataset, the proposed model has attained an AUC value of 0.9018 and 0.8902 on global LOOCV and local LOOCV, respectively. In addition, the average AUC and standard deviation of the proposed model for 5- fold cross-validation on the aBiofilm and MDAD datasets were 0.9141±6.8556e-04 and 0.8982±7.5868e-04, respectively. Also, two kinds of case studies have been further conducted to evaluate the proposed models.

CONCLUSION

Traditional methods for microbe-drug association prediction are timeconsuming and laborious. Therefore, the computational model proposed was used to predict new microbe-drug associations. Several evaluation results have shown the proposed model to achieve satisfactory results and that it can play a role in drug development and precision medicine.

摘要

未加标签

人体微生物与多种复杂疾病密切相关,已成为药物靶点。微生物相关药物的鉴定已成为药物开发和精准医学的关键问题。它还可以为解决病毒耐药性增强这一日益严重的问题提供指导。

方法

本文提出了一种用于微生物-药物关联预测的新型层注意图卷积网络模型。首先,将多种生物数据整合到一个异构网络中。然后,将异构网络纳入图卷积网络,以确定嵌入式微生物和药物。最后,通过基于层注意机制对微生物和药物的嵌入进行解码,获得微生物-药物关联分数。

结果

为了评估我们提出的模型的性能,在 aBiofilm 和 MDAD 两个数据集上进行了留一法交叉验证(LOOCV)和 5 折交叉验证。结果表明,基于 aBiofilm 数据集,我们提出的模型在全局 LOOCV 和局部 LOOCV 上的曲线下面积(AUC)分别为 0.9178 和 0.9022。基于 aBiofilm 数据集,所提出的模型在全局 LOOCV 和局部 LOOCV 上的 AUC 值分别为 0.9018 和 0.8902。此外,所提出的模型在 aBiofilm 和 MDAD 数据集上的 5 折交叉验证的平均 AUC 和标准偏差分别为 0.9141±6.8556e-04 和 0.8982±7.5868e-04。此外,还进一步进行了两种案例研究来评估所提出的模型。

结论

传统的微生物-药物关联预测方法既费时又费力。因此,使用计算模型来预测新的微生物-药物关联。几项评估结果表明,所提出的模型取得了令人满意的结果,可以在药物开发和精准医学中发挥作用。

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