Piquing artificial intelligence towards drug discovery: Tools, techniques, and applications

药物发现 药物开发 计算机科学 药品 领域(数学) 数据科学 人工智能 过程(计算) 药理学 生物信息学 医学 生物 数学 操作系统 纯数学
作者
Peter Chinedu Agu,Chidiebere Nwiboko Obulose
出处
期刊:Drug Development Research [Wiley]
卷期号:85 (2): e22159-e22159 被引量:27
标识
DOI:10.1002/ddr.22159
摘要

The purpose of this study was to discuss how artificial intelligence (AI) methods have affected the field of drug development. It looks at how AI models and data resources are reshaping the drug development process by offering more affordable and expedient options to conventional approaches. The paper opens with an overview of well-known information sources for drug development. The discussion then moves on to molecular representation techniques that make it possible to convert data into representations that computers can understand. The paper also gives a general overview of the algorithms used in the creation of drug discovery models based on AI. In particular, the paper looks at how AI algorithms might be used to forecast drug toxicity, drug bioactivity, and drug physicochemical properties. De novo drug design, binding affinity prediction, and other AI-based models for drug-target interaction were covered in deeper detail. Modern applications of AI in nanomedicine design and pharmacological synergism/antagonism prediction were also covered. The potential advantages of AI in drug development are highlighted as the evaluation comes to a close. It underlines how AI may greatly speed up and improve the efficiency of drug discovery, resulting in the creation of new and better medicines. To fully realize the promise of AI in drug discovery, the review acknowledges the difficulties that come with its uses in this field and advocates for more study and development.
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