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通过一种改进的基于网络的推理方法对化学作用机制进行计算机模拟预测。

In silico prediction of chemical mechanism of action via an improved network-based inference method.

作者信息

Wu Zengrui, Lu Weiqiang, Wu Dang, Luo Anqi, Bian Hanping, Li Jie, Li Weihua, Liu Guixia, Huang Jin, Cheng Feixiong, Tang Yun

机构信息

Shanghai Key Laboratory of New Drug Design, School of Pharmacy, East China University of Science and Technology, Shanghai, China.

Shanghai Key Laboratory of Regulatory Biology, Institute of Biomedical Sciences and School of Life Sciences, East China Normal University, Shanghai, China.

出版信息

Br J Pharmacol. 2016 Dec;173(23):3372-3385. doi: 10.1111/bph.13629. Epub 2016 Nov 1.

Abstract

BACKGROUND AND PURPOSE

Deciphering chemical mechanism of action (MoA) enables the development of novel therapeutics (e.g. drug repositioning) and evaluation of drug side effects. Development of novel computational methods for chemical MoA assessment under a systems pharmacology framework would accelerate drug discovery and development with greater efficiency and low cost.

EXPERIMENTAL APPROACH

In this study, we proposed an improved network-based inference method, balanced substructure-drug-target network-based inference (bSDTNBI), to predict MoA for old drugs, clinically failed drugs and new chemical entities. Specifically, three parameters were introduced into network-based resource diffusion processes to adjust the initial resource allocation of different node types, the weighted values of different edge types and the influence of hub nodes. The performance of the method was systematically validated by benchmark datasets and bioassays.

KEY RESULTS

High performance was yielded for bSDTNBI in both 10-fold and leave-one-out cross validations. A global drug-target network was built to explore MoA of anticancer drugs and repurpose old drugs for 15 cancer types/subtypes. In a case study, 27 predicted candidates among 56 commercially available compounds were experimentally validated to have binding affinities on oestrogen receptor α with IC or EC values ≤10 μM. Furthermore, two dual ligands with both agonistic and antagonistic activities ≤1 μM would provide potential lead compounds for the development of novel targeted therapy in breast cancer or osteoporosis.

CONCLUSION AND IMPLICATIONS

In summary, bSDTNBI would provide a powerful tool for the MoA assessment on both old drugs and novel compounds in drug discovery and development.

摘要

背景与目的

解析化学作用机制(MoA)有助于开发新型疗法(如药物重新定位)并评估药物副作用。在系统药理学框架下开发用于化学作用机制评估的新型计算方法,将以更高的效率和更低的成本加速药物研发。

实验方法

在本研究中,我们提出了一种改进的基于网络的推理方法,即基于平衡子结构 - 药物 - 靶点网络的推理(bSDTNBI),用于预测老药、临床失败药物和新化学实体的作用机制。具体而言,在基于网络的资源扩散过程中引入了三个参数,以调整不同节点类型的初始资源分配、不同边类型的加权值以及枢纽节点的影响。通过基准数据集和生物测定系统地验证了该方法的性能。

关键结果

bSDTNBI在10倍交叉验证和留一法交叉验证中均表现出高性能。构建了一个全局药物 - 靶点网络,以探索抗癌药物的作用机制并将老药重新用于15种癌症类型/亚型。在一个案例研究中,56种市售化合物中的27种预测候选物经实验验证对雌激素受体α具有结合亲和力,IC或EC值≤10 μM。此外,两种激动和拮抗活性均≤1 μM的双配体将为乳腺癌或骨质疏松症新型靶向治疗的开发提供潜在的先导化合物。

结论与启示

总之,bSDTNBI将为药物研发中老药和新型化合物的作用机制评估提供一个强大的工具。

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