Web-Based Quantitative Structure–Activity Relationship Resources Facilitate Effective Drug Discovery

IF 8.6 2区 化学 Q1 Chemistry
Yu-Liang Wang, Jing-Yi Li, Xing-Xing Shi, Zheng Wang, Ge-Fei Hao, Guang-Fu Yang
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引用次数: 6

Abstract

Traditional drug discovery effectively contributes to the treatment of many diseases but is limited by high costs and long cycles. Quantitative structure–activity relationship (QSAR) methods were introduced to evaluate the activity of compounds virtually, which saves the significant cost of determining the activities of the compounds experimentally. Over the past two decades, many web tools for QSAR modeling with various features have been developed to facilitate the usage of QSAR methods. These web tools significantly reduce the difficulty of using QSAR and indirectly promote drug discovery. However, there are few comprehensive summaries of these QSAR tools, and researchers may have difficulty determining which tool to use. Hence, we systematically surveyed the mainstream web tools for QSAR modeling. This work may guide researchers in choosing appropriate web tools for developing QSAR models, and may also help develop more bioinformatics tools based on these existing resources. For nonprofessionals, we also hope to make more people aware of QSAR methods and expand their use.

Graphic Abstract

基于网络的定量构效关系资源促进有效的药物发现
传统的药物发现有效地促进了许多疾病的治疗,但由于成本高和周期长而受到限制。引入定量构效关系(Quantitative structure-activity relationship, QSAR)方法对化合物的活性进行虚拟评价,大大节省了实验测定化合物活性的成本。在过去的二十年中,已经开发了许多具有各种特征的QSAR建模网络工具,以促进QSAR方法的使用。这些网络工具显著降低了QSAR的使用难度,并间接促进了药物的发现。然而,很少有这些QSAR工具的综合总结,研究人员可能难以确定使用哪种工具。因此,我们系统地调查了QSAR建模的主流网络工具。这项工作可以指导研究人员选择合适的网络工具来开发QSAR模型,也可以帮助开发更多基于这些现有资源的生物信息学工具。对于非专业人士,我们也希望让更多的人了解QSAR方法并扩大其使用范围。图形抽象
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来源期刊
Topics in Current Chemistry
Topics in Current Chemistry 化学-化学综合
CiteScore
11.70
自引率
1.20%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Topics in Current Chemistry provides in-depth analyses and forward-thinking perspectives on the latest advancements in chemical research. This renowned journal encompasses various domains within chemical science and their intersections with biology, medicine, physics, and materials science. Each collection within the journal aims to offer a comprehensive understanding, accessible to both academic and industrial readers, of emerging research in an area that captivates a broader scientific community. In essence, Topics in Current Chemistry illuminates cutting-edge chemical research, fosters interdisciplinary collaboration, and facilitates knowledge-sharing among diverse scientific audiences.
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