Harnessing Computational Modeling for Efficient Drug Design Strategies

IF 0.7 4区 化学 Q4 CHEMISTRY, ORGANIC Letters in Organic Chemistry Pub Date : 2024-02-02 DOI:10.2174/0115701786267754231114064015
Kuldeep Singh, Bharat Bhushan, Akhalesh Kumar Dube, Anit Kumar Jha, Ketki Rani, Akhilesh Kumar Mishra, Prateek Porwal
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Abstract

: Computational modeling has become a crucial tool in drug design, offering efficiency and cost-effectiveness. This paper discusses the various computational modeling techniques used in drug design and their role in enabling efficient drug discovery strategies. Molecular docking predicts the binding affinity of a small molecule to a target protein, allowing the researchers to identify potential lead compounds and optimize their interactions. Molecular dynamics simulations provide insights into protein-ligand complexes, enabling the exploration of conformational changes, binding free energies, and fundamental protein-ligand interactions. Integrating computational modeling with machine learning algorithms, such as QSAR modeling and virtual screening, enables the prediction of compound properties and prioritizes potential drug candidates. High-performance computing resources and advanced algorithms are essential for accelerating drug design workflows, with parallel computing, cloud computing, and GPU acceleration reducing computational time. The paper also addresses the challenges and limitations of computational modeling in drug design, such as the accuracy of scoring functions, protein flexibility representation, and validation of predictive models. It emphasizes the need for experimental validation and iterative refinement of computational predictions to ensure the reliability and efficacy of designed drugs.
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利用计算建模实现高效药物设计策略
:计算建模已成为药物设计的重要工具,具有高效性和成本效益。本文讨论了药物设计中使用的各种计算建模技术及其在实现高效药物发现战略中的作用。分子对接可以预测小分子与目标蛋白质的结合亲和力,使研究人员能够确定潜在的先导化合物并优化它们之间的相互作用。分子动力学模拟可以深入了解蛋白质-配体复合物,从而探索构象变化、结合自由能以及蛋白质-配体的基本相互作用。将计算建模与机器学习算法(如 QSAR 建模和虚拟筛选)相结合,可以预测化合物的特性,并确定潜在候选药物的优先次序。高性能计算资源和先进算法对于加速药物设计工作流程至关重要,并行计算、云计算和 GPU 加速可以缩短计算时间。论文还探讨了药物设计中计算建模所面临的挑战和局限性,如评分函数的准确性、蛋白质的灵活性表示和预测模型的验证。它强调了实验验证和迭代改进计算预测的必要性,以确保设计药物的可靠性和有效性。
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
Letters in Organic Chemistry
Letters in Organic Chemistry 化学-有机化学
CiteScore
1.30
自引率
12.50%
发文量
135
审稿时长
7 months
期刊介绍: Aims & Scope Letters in Organic Chemistry publishes original letters (short articles), research articles, mini-reviews and thematic issues based on mini-reviews and short articles, in all areas of organic chemistry including synthesis, bioorganic, medicinal, natural products, organometallic, supramolecular, molecular recognition and physical organic chemistry. The emphasis is to publish quality papers rapidly by taking full advantage of latest technology for both submission and review of the manuscripts. The journal is an essential reading for all organic chemists belonging to both academia and industry.
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