论文标题
药物目标相互作用预测的关联学习机制
Associative Learning Mechanism for Drug-Target Interaction Prediction
论文作者
论文摘要
作为药物开发的必要过程,找到可以选择性地与特定蛋白质结合的药物化合物是高度挑战性和昂贵的。代表药物目标相互作用(DTI)强度的药物目标亲和力(DTA)在过去十年中在DTI预测任务中发挥了重要作用。尽管已将深度学习应用于与DTA相关的研究,但现有的解决方案忽略了分子亚结构之间的基本相关性在分子表示学习药物化合物分子/蛋白质靶标之间的基本相关性。此外,传统方法缺乏DTA预测过程的解释性。这导致缺少分子间相互作用的特征信息,从而影响预测性能。因此,本文提出了一种使用交互式学习和自动编码器机制的DTA预测方法。提出的模型增强了通过药物/蛋白质分子表示学习模块捕获单个分子序列的特征信息的相应能力,并通过交互式信息学习模块补充了分子序列对之间的信息相互作用。 DTA值预测模块融合了药物目标对相互作用信息,以输出DTA的预测值。此外,从理论上讲,本文提出的方法最大化了DTA预测模型联合分布的证据下限(ELBO),从而增强了实际值和预测值之间概率分布的一致性。实验结果证实了相互变压器 - 药物目标亲和力(MT-DTA)的性能比其他比较方法更好。
As a necessary process in drug development, finding a drug compound that can selectively bind to a specific protein is highly challenging and costly. Drug-target affinity (DTA), which represents the strength of drug-target interaction (DTI), has played an important role in the DTI prediction task over the past decade. Although deep learning has been applied to DTA-related research, existing solutions ignore fundamental correlations between molecular substructures in molecular representation learning of drug compound molecules/protein targets. Moreover, traditional methods lack the interpretability of the DTA prediction process. This results in missing feature information of intermolecular interactions, thereby affecting prediction performance. Therefore, this paper proposes a DTA prediction method with interactive learning and an autoencoder mechanism. The proposed model enhances the corresponding ability to capture the feature information of a single molecular sequence by the drug/protein molecular representation learning module and supplements the information interaction between molecular sequence pairs by the interactive information learning module. The DTA value prediction module fuses the drug-target pair interaction information to output the predicted value of DTA. Additionally, this paper theoretically proves that the proposed method maximizes evidence lower bound (ELBO) for the joint distribution of the DTA prediction model, which enhances the consistency of the probability distribution between the actual value and the predicted value. The experimental results confirm mutual transformer-drug target affinity (MT-DTA) achieves better performance than other comparative methods.