用于推进药物发现和开发的深度学习工具

IF 2.8 4区 生物学
3 Biotech Pub Date : 2022-05-01 Epub Date: 2022-04-09 DOI:10.1007/s13205-022-03165-8
Sagorika Nag, Anurag T K Baidya, Abhimanyu Mandal, Alen T Mathew, Bhanuranjan Das, Bharti Devi, Rajnish Kumar
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引用次数: 0

摘要

几十年前,药物发现和开发仅限于一群药物化学家在实验室里进行大量的测试、验证和合成程序,所有这些都需要投入大量的时间和财富才能将一种药物投入临床。计算技术的进步加上多组学数据的蓬勃发展,促进了各种生物信息学/药物信息学/化学信息学工具的开发,帮助加快了药物开发过程。但是,随着人工智能(AI)、机器学习(ML)和深度学习(DL)的出现,传统的药物发现过程进一步合理化。以大数据形式存在于全球各种数据库中的大量生物数据成为基于 ML/DL 方法的原材料,有助于准确识别模式和模型,从而以更少的时间、劳动力和财富投入来确定具有治疗活性的分子。在本综述中,我们首先介绍了药物发现流程中的一般概念,然后概述了药物发现流程中可以利用 ML/DL 的领域。我们还介绍了 ML 和 DL 及其应用、各种学习方法以及用于开发基于 ML/DL 算法的训练模型。此外,我们还总结了公共领域现有的各种基于 DL 的工具及其在药物发现范例中的应用,其中包括用于识别药物靶点和药物靶点相互作用的 DL 工具,如 DeepCPI、DeepDTA、WideDTA、PADME DeepAffinity 和 DeepPocket。此外,我们还讨论了用于蛋白质结构预测、新化学支架从头设计、化学库虚拟筛选以确定新药、吸收、分布、代谢、排泄和毒性(ADMET)预测、代谢物预测、临床试验设计和口服生物利用度预测的各种基于 DL 的模型。最后,我们试图揭示一些成功应用于药物发现和开发流程中的基于 ML/DL 的模型,同时也讨论了当前在药物发现和开发中应用 DL 工具所面临的挑战和前景。我们相信,这篇综述对于在药物发现项目中寻找 DL 工具的药物化学家和计算化学家会有所帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep learning tools for advancing drug discovery and development.

A few decades ago, drug discovery and development were limited to a bunch of medicinal chemists working in a lab with enormous amount of testing, validations, and synthetic procedures, all contributing to considerable investments in time and wealth to get one drug out into the clinics. The advancements in computational techniques combined with a boom in multi-omics data led to the development of various bioinformatics/pharmacoinformatics/cheminformatics tools that have helped speed up the drug development process. But with the advent of artificial intelligence (AI), machine learning (ML) and deep learning (DL), the conventional drug discovery process has been further rationalized. Extensive biological data in the form of big data present in various databases across the globe acts as the raw materials for the ML/DL-based approaches and helps in accurate identifications of patterns and models which can be used to identify therapeutically active molecules with much fewer investments on time, workforce and wealth. In this review, we have begun by introducing the general concepts in the drug discovery pipeline, followed by an outline of the fields in the drug discovery process where ML/DL can be utilized. We have also introduced ML and DL along with their applications, various learning methods, and training models used to develop the ML/DL-based algorithms. Furthermore, we have summarized various DL-based tools existing in the public domain with their application in the drug discovery paradigm which includes DL tools for identification of drug targets and drug-target interaction such as DeepCPI, DeepDTA, WideDTA, PADME DeepAffinity, and DeepPocket. Additionally, we have discussed various DL-based models used in protein structure prediction, de novo design of new chemical scaffolds, virtual screening of chemical libraries for hit identification, absorption, distribution, metabolism, excretion, and toxicity (ADMET) prediction, metabolite prediction, clinical trial design, and oral bioavailability prediction. In the end, we have tried to shed light on some of the successful ML/DL-based models used in the drug discovery and development pipeline while also discussing the current challenges and prospects of the application of DL tools in drug discovery and development. We believe that this review will be useful for medicinal and computational chemists searching for DL tools for use in their drug discovery projects.

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来源期刊
3 Biotech
3 Biotech BIOTECHNOLOGY & APPLIED MICROBIOLOGY-
自引率
0.00%
发文量
314
期刊介绍: 3 Biotech publishes the results of the latest research related to the study and application of biotechnology to: - Medicine and Biomedical Sciences - Agriculture - The Environment The focus on these three technology sectors recognizes that complete Biotechnology applications often require a combination of techniques. 3 Biotech not only presents the latest developments in biotechnology but also addresses the problems and benefits of integrating a variety of techniques for a particular application. 3 Biotech will appeal to scientists and engineers in both academia and industry focused on the safe and efficient application of Biotechnology to Medicine, Agriculture and the Environment.
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