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Translation of off-target effects: prediction of ADRs by integrated experimental and computational approach

机译:脱靶效应的转换:通过综合实验和计算方法预测ADR

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Adverse drug reactions (ADRs) are associated with most drugs, often discovered late in drug development and sometimes only during extended course of clinical use. They are linked either to the therapeutic target or pathway, or could emerge as the consequence of known or unknown off-target effect(s) of a drug or drug combinations. ADRs are a major burden on patients, medical professionals and the society in general. Discovery of intolerable ADRs during clinical trials significantly contributes to high attrition rates with associated rising costs. Thus, prediction of ADRs at the early stage of drug discovery is an emerging approach; however, it remains a challenging task to identify the mode of action of drug candidates which might lead to ADRs. We review here the implementation of in vitro and in silico tools streamlined for the prediction of ADRs as early as the target/lead identification and lead optimization phases of the drug discovery process. This integrated approach has been developed during the past decade by both academic institutions and the pharmaceutical industry with the aim to provide toxicological analysis, assessment and ranking of drug candidates on a broad scale. The major aim is to be able to mitigate targets associated with ADRs earlier and guide chemistry to address the therapeutic and side effects in parallel. The major components of this effort are (1) experimental approach: early in vitro safety profiling linked to (2) computational toxicology algorithms and models utilizing statistics, data mining, cheminformatics and system biology. The third component embraces the translational aspect for clinical ADRs, which includes in vivo exposure. In this review we focus on the prediction of the integrated molecular network approach.
机译:药物不良反应(ADR)与大多数药物有关,通常在药物开发后期发现,有时仅在长期的临床使用过程中才发现。它们与治疗靶标或途径相关,或者可能由于药物或药物组合的已知或未知脱靶作用而出现。 ADR是患者,医疗专业人员和整个社会的主要负担。在临床试验中发现无法忍受的ADR显着促进了高流失率以及相关的成本上升。因此,在药物开发的早期阶段预测ADR是一种新兴方法。然而,确定可能导致ADR的候选药物的作用方式仍然是一项艰巨的任务。我们在这里回顾了早在药物发现过程的目标/潜在顾客识别和潜在顾客优化阶段就简化了用于预测ADR的体外和计算机模拟工具的实施情况。在过去的十年中,学术机构和制药业都开发了这种综合方法,旨在广泛地提供候选药物的毒理学分析,评估和排名。主要目的是能够较早减轻与ADR相关的靶点并指导化学治疗以并行解决治疗和副作用。这项工作的主要组成部分是(1)实验方法:与(2)利用统计,数据挖掘,化学信息学和系统生物学的计算毒理学算法和模型相关的早期体外安全性分析。第三部分包括临床ADR的翻译方面,包括体内暴露。在这篇综述中,我们着重于整合分子网络方法的预测。

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