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在人工智能时代探索“类药物”小分子的化学空间。

Exploring chemical space for "druglike" small molecules in the age of AI.

作者信息

Kattuparambil Aman Achuthan, Chaurasia Dheeraj Kumar, Shekhar Shashank, Srinivasan Ashwin, Mondal Sukanta, Aduri Raviprasad, Jayaram B

机构信息

Department of Biological Sciences, BITS Pilani K K Birla Goa Campus, Zuarinagar, Goa, India.

School of Interdisciplinary Research, Indian Institute of Technology Delhi, New Delhi, India.

出版信息

Front Mol Biosci. 2025 Mar 17;12:1553667. doi: 10.3389/fmolb.2025.1553667. eCollection 2025.

Abstract

The announcement of 2024 Nobel Prize in Chemistry to Alphafold has reiterated the role of AI in biology and mainly in the domain of "drug discovery". Till few years ago, structure-based drug design (SBDD) has been the preferred experimental design in many academic and pharmaceutical R and D divisions for developing novel therapeutics. However, with the advent of AI, the drug design field especially has seen a paradigm shift in its R&D across platforms. If "drug design" is a game, there are two main players, the small molecule drug and its target biomolecule, and the rules governing the game are mainly based on the interactions between these two players. In this brief review, we will be discussing our efforts in improving the state-of-the-art technology with respect to small molecules as well as in understanding the rules of the game. The review is broadly divided into five sections with the first section introducing the field and the challenges faced and the role of AI in this domain. In the second section, we describe some of the existing small molecule libraries developed in our labs and follow-up this section with a more recent knowledge-based resource available for public use. In section four, we describe some of the screening tools developed in our laboratories and are available for public use. Finally, section five delves into how domain knowledge is improving the utilization of AI in drug design. We provide three case studies from our work to illustrate this work. Finally, we conclude with our thoughts on the future scope of AI in drug design.

摘要

2024年诺贝尔化学奖授予阿尔法折叠(AlphaFold),这一消息再次凸显了人工智能在生物学领域,尤其是在“药物发现”领域的作用。直到几年前,基于结构的药物设计(SBDD)在许多学术和制药研发部门一直是开发新型疗法的首选实验设计。然而,随着人工智能的出现,药物设计领域在其跨平台研发方面尤其发生了范式转变。如果说“药物设计”是一场游戏,那么主要有两个参与者,即小分子药物及其目标生物分子,而支配这场游戏的规则主要基于这两个参与者之间的相互作用。在这篇简短的综述中,我们将讨论我们在改进小分子相关的最先进技术以及理解游戏规则方面所做的努力。这篇综述大致分为五个部分,第一部分介绍该领域以及所面临的挑战和人工智能在该领域的作用。在第二部分,我们描述了我们实验室开发的一些现有的小分子文库,并在这一部分之后介绍了一个可供公众使用的基于最新知识的资源。在第四部分,我们描述了我们实验室开发的一些可供公众使用的筛选工具。最后,第五部分深入探讨领域知识如何在药物设计中提高人工智能的利用率。我们提供了三个来自我们工作的案例研究来说明这项工作。最后,我们以对人工智能在药物设计未来发展前景的思考作为总结。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d667/11955463/e402cbb22102/fmolb-12-1553667-g001.jpg

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