Department of Computer Science, Brock University, 1812 Sir Isaac Brock Way, St. Catharines, ON, L2S 3A1, Canada.
Department of Chemistry, Lakehead University, 955 Oliver Road, Thunder Bay, ON, P7B 5E1, Canada.
BMC Bioinformatics. 2024 Jun 8;25(1):208. doi: 10.1186/s12859-024-05822-6.
Drug design is a challenging and important task that requires the generation of novel and effective molecules that can bind to specific protein targets. Artificial intelligence algorithms have recently showed promising potential to expedite the drug design process. However, existing methods adopt multi-objective approaches which limits the number of objectives.
In this paper, we expand this thread of research from the many-objective perspective, by proposing a novel framework that integrates a latent Transformer-based model for molecular generation, with a drug design system that incorporates absorption, distribution, metabolism, excretion, and toxicity prediction, molecular docking, and many-objective metaheuristics. We compared the performance of two latent Transformer models (ReLSO and FragNet) on a molecular generation task and show that ReLSO outperforms FragNet in terms of reconstruction and latent space organization. We then explored six different many-objective metaheuristics based on evolutionary algorithms and particle swarm optimization on a drug design task involving potential drug candidates to human lysophosphatidic acid receptor 1, a cancer-related protein target.
We show that multi-objective evolutionary algorithm based on dominance and decomposition performs the best in terms of finding molecules that satisfy many objectives, such as high binding affinity and low toxicity, and high drug-likeness. Our framework demonstrates the potential of combining Transformers and many-objective computational intelligence for drug design.
药物设计是一项具有挑战性和重要性的任务,需要生成能够与特定蛋白质靶标结合的新型有效分子。人工智能算法最近显示出加速药物设计过程的有前途的潜力。然而,现有的方法采用多目标方法,限制了目标的数量。
在本文中,我们从多目标的角度扩展了这一研究思路,提出了一种新的框架,该框架将基于潜在的 Transformer 的分子生成模型与药物设计系统集成在一起,该系统包含吸收、分布、代谢、排泄和毒性预测、分子对接和多目标元启发式算法。我们比较了两种潜在的 Transformer 模型(ReLSO 和 FragNet)在分子生成任务上的性能,并表明 ReLSO 在重建和潜在空间组织方面优于 FragNet。然后,我们在涉及人类溶血磷脂酸受体 1(一种与癌症相关的蛋白质靶标)的潜在药物候选物的药物设计任务上,探索了基于进化算法和粒子群优化的六种不同的多目标元启发式算法。
我们表明,基于支配和分解的多目标进化算法在寻找满足多个目标(如高结合亲和力和低毒性、高类药性)的分子方面表现最佳。我们的框架展示了将 Transformer 和多目标计算智能相结合用于药物设计的潜力。