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计算多药理学:药物发现的新范式。

Computational polypharmacology: a new paradigm for drug discovery.

作者信息

Chaudhari Rajan, Tan Zhi, Huang Beibei, Zhang Shuxing

机构信息

a Integrated Molecular Discovery Laboratory, Department of Experimental Therapeutics , The University of Texas MD Anderson Cancer Center , Houston , TX , USA.

b The University of Texas Graduate School of Biomedical Sciences , Houston , TX , USA.

出版信息

Expert Opin Drug Discov. 2017 Mar;12(3):279-291. doi: 10.1080/17460441.2017.1280024. Epub 2017 Jan 23.

DOI:10.1080/17460441.2017.1280024
PMID:28067061
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7241838/
Abstract

Over the past couple of years, the cost of drug development has sharply increased along with the high rate of clinical trial failures. Such increase in expenses is partially due to the inability of the "one drug - one target" approach to predict drug side effects and toxicities. To tackle this issue, an alternative approach, known as polypharmacology, is being adopted to study small molecule interactions with multiple targets. Apart from developing more potent and effective drugs, this approach allows for studies of off-target activities and the facilitation of drug repositioning. Although exhaustive polypharmacology studies in-vitro or in-vivo are not practical, computational methods of predicting unknown targets or side effects are being developed. Areas covered: This article describes various computational approaches that have been developed to study polypharmacology profiles of small molecules. It also provides a brief description of the algorithms used in these state-of-the-art methods. Expert opinion: Recent success in computational prediction of multi-targeting drugs has established polypharmacology as a promising alternative approach to tackle some of the daunting complications in drug discovery. This will not only help discover more effective agents, but also present tremendous opportunities to study novel target pharmacology and facilitate drug repositioning efforts in the pharmaceutical industry.

摘要

在过去几年中,随着临床试验失败率居高不下,药物研发成本急剧上升。费用增加的部分原因是“一种药物 - 一个靶点”方法无法预测药物的副作用和毒性。为了解决这个问题,一种称为多药理学的替代方法正在被采用,以研究小分子与多个靶点的相互作用。除了开发更有效力和更有效的药物外,这种方法还允许研究脱靶活性并促进药物重新定位。尽管在体外或体内进行详尽的多药理学研究并不实际,但正在开发预测未知靶点或副作用的计算方法。涵盖领域:本文描述了已开发出的用于研究小分子多药理学特征的各种计算方法。它还简要介绍了这些前沿方法中使用的算法。专家观点:多靶点药物计算预测方面最近取得的成功,已使多药理学成为解决药物发现中一些艰巨复杂问题的一种有前景的替代方法。这不仅将有助于发现更有效的药物,还将为研究新型靶点药理学以及推动制药行业的药物重新定位工作带来巨大机遇。

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