Department of Pharmacology, North Eastern Indira Gandhi Regional Institute of Health and Medical Sciences (NEIGRIHMS), Mawdiangdiang, Shillong 793018, Meghalaya, India.
Department of Pharmacology, All India Institute of Medical Sciences (AIIMS), Virbhadra Road, Rishikesh 249203, Uttarakhand, India.
Int J Mol Sci. 2023 Jan 19;24(3):2026. doi: 10.3390/ijms24032026.
The discovery and advances of medicines may be considered as the ultimate relevant translational science effort that adds to human invulnerability and happiness. But advancing a fresh medication is a quite convoluted, costly, and protracted operation, normally costing USD ~2.6 billion and consuming a mean time span of 12 years. Methods to cut back expenditure and hasten new drug discovery have prompted an arduous and compelling brainstorming exercise in the pharmaceutical industry. The engagement of Artificial Intelligence (AI), including the deep-learning (DL) component in particular, has been facilitated by the employment of classified big data, in concert with strikingly reinforced computing prowess and cloud storage, across all fields. AI has energized computer-facilitated drug discovery. An unrestricted espousing of machine learning (ML), especially DL, in many scientific specialties, and the technological refinements in computing hardware and software, in concert with various aspects of the problem, sustain this progress. ML algorithms have been extensively engaged for computer-facilitated drug discovery. DL methods, such as artificial neural networks (ANNs) comprising multiple buried processing layers, have of late seen a resurgence due to their capability to power automatic attribute elicitations from the input data, coupled with their ability to obtain nonlinear input-output pertinencies. Such features of DL methods augment classical ML techniques which bank on human-contrived molecular descriptors. A major part of the early reluctance concerning utility of AI in pharmaceutical discovery has begun to melt, thereby advancing medicinal chemistry. AI, along with modern experimental technical knowledge, is anticipated to invigorate the quest for new and improved pharmaceuticals in an expeditious, economical, and increasingly compelling manner. DL-facilitated methods have just initiated kickstarting for some integral issues in drug discovery. Many technological advances, such as "message-passing paradigms", "spatial-symmetry-preserving networks", "hybrid de novo design", and other ingenious ML exemplars, will definitely come to be pervasively widespread and help dissect many of the biggest, and most intriguing inquiries. Open data allocation and model augmentation will exert a decisive hold during the progress of drug discovery employing AI. This review will address the impending utilizations of AI to refine and bolster the drug discovery operation.
药物的发现和进步可以被认为是增加人类免疫力和幸福感的最终相关转化科学努力。但是,推进一种新的药物是一个相当复杂、昂贵和漫长的过程,通常需要花费 26 亿美元,并需要 12 年的平均时间。降低成本和加速新药发现的方法促使制药行业进行了艰苦而紧迫的头脑风暴。人工智能(AI)的应用,包括特别是深度学习(DL)组件,得益于分类大数据的应用,以及在所有领域都显著增强的计算能力和云存储。人工智能激发了计算机辅助药物发现。机器学习(ML),特别是深度学习(DL)在许多科学专业中的无限制应用,以及计算硬件和软件的技术改进,与问题的各个方面一起,推动了这一进展。ML 算法已广泛应用于计算机辅助药物发现。深度学习方法,如包含多个隐藏处理层的人工神经网络(ANNs),由于其从输入数据中自动提取属性的能力,以及获得非线性输入-输出相关性的能力,最近重新兴起。DL 方法的这些特征增强了依赖于人为设计的分子描述符的经典 ML 技术。人们对 AI 在药物发现中的实用性的早期部分抵触情绪已经开始消退,从而推进了药物化学的发展。AI 与现代实验技术知识相结合,有望以快速、经济且越来越引人注目的方式推动新的和改进的药物的研究。DL 辅助方法刚刚开始为药物发现中的一些关键问题启动。许多技术进步,如“消息传递范式”、“空间对称保持网络”、“混合从头设计”和其他巧妙的 ML 范例,肯定会得到广泛普及,并帮助剖析许多最大、最有趣的问题。开放数据分配和模型增强将在 AI 药物发现过程中发挥决定性作用。这篇综述将讨论 AI 在完善和支持药物发现方面的潜在应用。