Advances in machine intelligence-driven virtual screening approaches for big-data

IF 10.9 1区 医学 Q1 CHEMISTRY, MEDICINAL Medicinal Research Reviews Pub Date : 2023-12-21 DOI:10.1002/med.21995
Neeraj Kumar, Vishal Acharya
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Abstract

Virtual screening (VS) is an integral and ever-evolving domain of drug discovery framework. The VS is traditionally classified into ligand-based (LB) and structure-based (SB) approaches. Machine intelligence or artificial intelligence has wide applications in the drug discovery domain to reduce time and resource consumption. In combination with machine intelligence algorithms, VS has emerged into revolutionarily progressive technology that learns within robust decision orders for data curation and hit molecule screening from large VS libraries in minutes or hours. The exponential growth of chemical and biological data has evolved as “big-data” in the public domain demands modern and advanced machine intelligence-driven VS approaches to screen hit molecules from ultra-large VS libraries. VS has evolved from an individual approach (LB and SB) to integrated LB and SB techniques to explore various ligand and target protein aspects for the enhanced rate of appropriate hit molecule prediction. Current trends demand advanced and intelligent solutions to handle enormous data in drug discovery domain for screening and optimizing hits or lead with fewer or no false positive hits. Following the big-data drift and tremendous growth in computational architecture, we presented this review. Here, the article categorized and emphasized individual VS techniques, detailed literature presented for machine learning implementation, modern machine intelligence approaches, and limitations and deliberated the future prospects.

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机器智能驱动的大数据虚拟筛选方法的进展。
虚拟筛选(VS)是药物发现框架中一个不可或缺且不断发展的领域。虚拟筛选传统上分为基于配体(LB)和基于结构(SB)的方法。机器智能或人工智能已广泛应用于药物发现领域,以减少时间和资源消耗。结合机器智能算法,VS 已成为一项革命性的先进技术,可在数分钟或数小时内从大型 VS 库中学习用于数据整理和筛选命中分子的强大决策指令。化学和生物数据的指数级增长已演变为公共领域的 "大数据",这就要求采用现代先进的机器智能驱动 VS 方法,从超大 VS 库中筛选命中分子。VS 已从单独的方法(LB 和 SB)发展到 LB 和 SB 集成技术,以探索配体和靶蛋白的各个方面,从而提高合适的命中分子预测率。当前的趋势需要先进的智能解决方案来处理药物发现领域的海量数据,以筛选和优化命中分子或先导分子,减少或消除假阳性命中。随着大数据的发展和计算架构的巨大增长,我们提出了这篇综述。在此,文章对个别 VS 技术、机器学习实施的详细文献、现代机器智能方法、局限性进行了分类和强调,并讨论了未来前景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
29.30
自引率
0.00%
发文量
52
审稿时长
2 months
期刊介绍: Medicinal Research Reviews is dedicated to publishing timely and critical reviews, as well as opinion-based articles, covering a broad spectrum of topics related to medicinal research. These contributions are authored by individuals who have made significant advancements in the field. Encompassing a wide range of subjects, suitable topics include, but are not limited to, the underlying pathophysiology of crucial diseases and disease vectors, therapeutic approaches for diverse medical conditions, properties of molecular targets for therapeutic agents, innovative methodologies facilitating therapy discovery, genomics and proteomics, structure-activity correlations of drug series, development of new imaging and diagnostic tools, drug metabolism, drug delivery, and comprehensive examinations of the chemical, pharmacological, pharmacokinetic, pharmacodynamic, and clinical characteristics of significant drugs.
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