Shah Pir Masoom, Zhu Huimin, Lu Zhangli, Wang Kaili, Tang Jing, Li Min
School of Computer Science and Engineering, Central South University, Changsha, China.
School of Computer Science and Technology, Donghua University, Shanghai, China.
Nat Commun. 2025 May 30;16(1):5021. doi: 10.1038/s41467-025-59917-6.
Identifying novel drugs that can interact with target proteins is a highly challenging, time-consuming, and costly task in drug discovery and development. Numerous machine learning-based models have recently been utilized to accelerate the drug discovery process. However, these existing methods are primarily uni-tasking, either designed to predict drug-target interaction (DTI) or generate new drugs. Through the lens of pharmacological research, these tasks are intrinsically interconnected and play a critical role in effective drug development. Therefore, the learning models must be utilized in such a manner to learn the structural properties of drug molecules, the conformational dynamics of proteins, and the bioactivity between drugs and targets. To this end, this paper develops a novel multitask learning framework that can predict drug-target binding affinities and simultaneously generate new target-aware drug variants, using common features for both tasks. In addition, we developed the FetterGrad algorithm to address the optimization challenges associated with multitask learning particularly those caused by gradient conflicts between distinct tasks. Comprehensive experiments on three real-world datasets demonstrate that the proposed model provides an effective mechanism for predicting drug-target binding affinities and generating novel drugs, thus greatly facilitating the drug discovery process.
在药物研发过程中,识别能够与靶蛋白相互作用的新型药物是一项极具挑战性、耗时且成本高昂的任务。最近,众多基于机器学习的模型被用于加速药物研发进程。然而,这些现有方法主要是单任务的,要么旨在预测药物 - 靶标相互作用(DTI),要么用于生成新药物。从药理学研究的角度来看,这些任务本质上是相互关联的,并且在有效的药物开发中起着关键作用。因此,学习模型必须以这样一种方式来使用,即学习药物分子的结构特性、蛋白质的构象动力学以及药物与靶标之间的生物活性。为此,本文开发了一种新颖的多任务学习框架,该框架可以预测药物 - 靶标结合亲和力,并同时使用两个任务的共同特征生成新的具有靶标意识的药物变体。此外,我们开发了FetterGrad算法来解决与多任务学习相关的优化挑战,特别是那些由不同任务之间的梯度冲突引起的挑战。在三个真实世界数据集上进行的综合实验表明,所提出的模型为预测药物 - 靶标结合亲和力和生成新型药物提供了一种有效机制,从而极大地促进了药物研发过程。