DeepDDS: deep graph neural network with attention mechanism to predict synergistic drug combinations

可解释性 计算机科学 机器学习 人工智能 深度学习 人工神经网络 药品 水准点(测量) 化学信息学 试验装置 图形 数据挖掘 生物信息学 理论计算机科学 药理学 生物 地理 大地测量学
作者
Jinxian Wang,Xuejun Liu,Siyuan Shen,Lei Deng,Hui Liu
出处
期刊:Briefings in Bioinformatics [Oxford University Press]
卷期号:23 (1) 被引量:60
标识
DOI:10.1093/bib/bbab390
摘要

Drug combination therapy has become an increasingly promising method in the treatment of cancer. However, the number of possible drug combinations is so huge that it is hard to screen synergistic drug combinations through wet-lab experiments. Therefore, computational screening has become an important way to prioritize drug combinations. Graph neural network has recently shown remarkable performance in the prediction of compound-protein interactions, but it has not been applied to the screening of drug combinations.In this paper, we proposed a deep learning model based on graph neural network and attention mechanism to identify drug combinations that can effectively inhibit the viability of specific cancer cells. The feature embeddings of drug molecule structure and gene expression profiles were taken as input to multilayer feedforward neural network to identify the synergistic drug combinations. We compared DeepDDS (Deep Learning for Drug-Drug Synergy prediction) with classical machine learning methods and other deep learning-based methods on benchmark data set, and the leave-one-out experimental results showed that DeepDDS achieved better performance than competitive methods. Also, on an independent test set released by well-known pharmaceutical enterprise AstraZeneca, DeepDDS was superior to competitive methods by more than 16% predictive precision. Furthermore, we explored the interpretability of the graph attention network and found the correlation matrix of atomic features revealed important chemical substructures of drugs. We believed that DeepDDS is an effective tool that prioritized synergistic drug combinations for further wet-lab experiment validation.Source code and data are available at https://github.com/Sinwang404/DeepDDS/tree/master.
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