Domain-aware machine learning (ML) models have been increasingly adopted for accelerating small molecule therapeutic design in the recent years. These models have been enabled by significant advancement in state-of-the-art artificial intelligence (AI) and computing infrastructures. Several ML architectures are pre-dominantly and independently used either for predicting the properties of small molecules, or for generating lead therapeutic candidates. Synergetically using these individual components along with robust representation and data generation techniques autonomously in closed loops holds enormous promise for accelerated drug design which is a time consuming and expensive task otherwise. In this perspective, we present the most recent breakthrough achieved by each of the components, and how such autonomous AI and ML workflow can be realized to radically accelerate the hit identification and lead optimization. Taken together, this could significantly shorten the timeline for end-to-end antiviral discovery and optimization times to weeks upon the arrival of a novel zoonotic transmission event. Our perspective serves as a guide for researchers to practice autonomous molecular design in therapeutic discovery.
翻译:近些年来,为加速小型分子治疗设计,人们越来越多地采用了解磁体的机器学习模式(ML)加速了小型分子治疗设计,这些模式得益于先进人造智能和计算机基础设施的显著进步。一些ML结构在预测小分子特性或产生铅治疗候选物方面处于领先和独立使用的地位。同时在闭路循环中自主地使用这些个别组成部分以及强大的代表性和数据生成技术,对于加速药物设计是一个耗时和昂贵的任务,有着巨大的希望。从这个角度讲,我们介绍了每个组成部分所取得的最新突破,以及如何实现这种自主的AI和ML工作流程,以大大加快命中识别和铅优化。加在一起,这可以大大缩短最终到最终的抗病毒发现和优化时间,缩短到新的动物洞察传播事件的到几周。我们的观点可以指导研究人员在治疗发现中进行自主分子设计。