计算命中发现:一个行业视角

IF 6.8 1区 医学 Q1 CHEMISTRY, MEDICINAL
Paraskevi Gkeka, Fredrik Svensson, Carlos Roca Magadán, Marcel John de Groot and Steven V. Jerome*, 
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引用次数: 0

摘要

计算命中发现,特别是虚拟筛选,几十年来一直是药物发现活动的支柱,为湿法实验提供了成本效益的补充。随着这些方法围绕成熟的软件程序和高达1000万的库存化学库进行融合,这一领域的创新速度大大放缓。然而,最近,由于计算能力的大幅提高,超大按需虚拟图书馆的出现,大容量神经网络的发展,自由能计算的适用范围的扩大,以及蛋白质结构预测的进展,虚拟筛选领域目前正在发生重大变化。我们提供了一份来自行业从业者的指南,总结了不断变化的计算命中寻找领域的关键方面,包括构建高性能端到端筛选工作流程的实用建议,通过避免常见陷阱来降低风险的策略,确定成功标准,并简要讨论了在不久的将来可能影响药物发现的新兴技术。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Computational Hit Finding: An Industry Perspective

Computational Hit Finding: An Industry Perspective

Computational hit finding, particularly virtual screening, has been a mainstay of drug discovery campaigns for decades, providing a cost-efficient complement to wet experiments. Innovation in this space slowed considerably as these approaches converged around mature software programs and stock chemical libraries up to ∼10 million in size. Recently, however, powered by massive increases in computational power, the emergence of ultralarge make-on-demand virtual libraries, the development of large capacity neural networks, the expansion of the domain of applicability of free energy calculations, and advances in protein structure prediction, the virtual screening field is currently seeing major change. We present a guide from industry practitioners summarizing key aspects on the changing computational hit finding landscape including practical recommendations for building a performant end-to-end screening workflow, strategies to mitigate risk by avoiding common pitfalls, determining success criteria, and a brief discussion of emerging technologies likely to impact drug discovery in the near future.

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来源期刊
Journal of Medicinal Chemistry
Journal of Medicinal Chemistry 医学-医药化学
CiteScore
4.00
自引率
11.00%
发文量
804
审稿时长
1.9 months
期刊介绍: The Journal of Medicinal Chemistry is a prestigious biweekly peer-reviewed publication that focuses on the multifaceted field of medicinal chemistry. Since its inception in 1959 as the Journal of Medicinal and Pharmaceutical Chemistry, it has evolved to become a cornerstone in the dissemination of research findings related to the design, synthesis, and development of therapeutic agents. The Journal of Medicinal Chemistry is recognized for its significant impact in the scientific community, as evidenced by its 2022 impact factor of 7.3. This metric reflects the journal's influence and the importance of its content in shaping the future of drug discovery and development. The journal serves as a vital resource for chemists, pharmacologists, and other researchers interested in the molecular mechanisms of drug action and the optimization of therapeutic compounds.
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