自编码
计算机科学
串联(数学)
人工智能
联营
药物重新定位
药物发现
变压器
机器学习
药品
模式识别(心理学)
深度学习
生物信息学
数学
工程类
药理学
生物
组合数学
电压
电气工程
作者
Changjian Zhou,LI Zhong-zheng,Jia Song,Wensheng Xiang
标识
DOI:10.1016/j.cmpb.2023.108003
摘要
Recent studies have emphasized the significance of computational in silico drug-target binding affinity (DTA) prediction in the field of drug discovery and drug repurposing. However, existing DTA prediction approaches suffer from two major deficiencies that impede their progress. Firstly, while most methods primarily focus on the feature representations of drug-target binding affinity pairs, they fail to consider the long-distance relationships of proteins. Furthermore, many deep learning-based DTA predictors simply model the interaction of drug-target pairs through concatenation, which hampers the ability to enhance prediction performance. To address these issues, this study proposes a novel framework named TransVAE-DTA, which combines the transformer and variational autoencoder (VAE). Inspired by the early success of VAEs, we aim to further investigate the feasibility of VAEs for drug structure encoding, while utilizing the transformer architecture for target feature representation. Additionally, an adaptive attention pooling (AAP) module is designed to fuse the drug and target encoded features. Notably, TransVAE-DTA is proven to maximize the lower bound of the joint likelihood of drug, target, and their DTAs. Experimental results demonstrate the superiority of TransVAE-DTA in drug-target binding affinity prediction assignments on two public Davis and KIBA datasets. In this research, the developed TransVAE-DTA opens a new avenue for engineering drug-target interactions.
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