药物发现的多参数器官毒性预测因子

IF 2.8 4区 医学 Q2 TOXICOLOGY
Toxicology Mechanisms and Methods Pub Date : 2020-03-01 Epub Date: 2019-10-29 DOI:10.1080/15376516.2019.1681044
Chirag N Patel, Sivakumar Prasanth Kumar, Rakesh M Rawal, Daxesh P Patel, Frank J Gonzalez, Himanshu A Pandya
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引用次数: 14

摘要

通过计算机预测模型评估主要器官的毒性在药物发现中起着至关重要的作用。计算工具可以利用从实验研究中获得的知识来预测化学毒性,这大大降低了药物发现和开发阶段化合物的损耗率。对药物先导物进行计算机预测和预测药物活性物质的吸收、分布、代谢、排泄和毒性、临床不良影响和代谢等毒理学终点的目的已在学术界和制药行业得到广泛接受。由于不受限制地获得强大的生物标志物,研究人员有机会考虑最准确的预测评分,以评估药物对各种器官的不利影响。多参数模型包括物理化学性质,定量结构-活性关系预测和对接评分,是估计化学毒性的更可靠的预测器,具有反映原子水平洞察力的潜力。这些硅模型为进行体外和体内研究提供了明智的决定,并随后证实了分子线索,破译了化合物的细胞毒性、药代动力学、药效学和器官毒性特性。尽管USFDA在药物发现的后期阶段撤回了药物,这些药物应该通过所有最先进的实验方法和目前可接受的毒性过滤,但迫切需要将所有这些分子关键特性相互联系起来,以增强我们的知识,并指导确定药物优化阶段的线索。目前的计算工具可以基于药效团指纹、毒团和先进的机器学习技术来预测ADMET和器官毒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A multiparametric organ toxicity predictor for drug discovery.
Abstract The assessment of major organ toxicities through in silico predictive models plays a crucial role in drug discovery. Computational tools can predict chemical toxicities using the knowledge gained from experimental studies which drastically reduces the attrition rate of compounds during drug discovery and developmental stages. The purpose of in silico predictions for drug leads and anticipating toxicological endpoints of absorption, distribution, metabolism, excretion and toxicity, clinical adverse impacts and metabolism of pharmaceutically active substances has gained widespread acceptance in academia and pharmaceutical industries. With unrestricted accessibility to powerful biomarkers, researchers have an opportunity to contemplate the most accurate predictive scores to evaluate drug's adverse impact on various organs. A multiparametric model involving physico-chemical properties, quantitative structure-activity relationship predictions and docking score was found to be a more reliable predictor for estimating chemical toxicities with potential to reflect atomic-level insights. These in silico models provide informed decisions to carry out in vitro and in vivo studies and subsequently confirms the molecules clues deciphering the cytotoxicity, pharmacokinetics, and pharmacodynamics and organ toxicity properties of compounds. Even though the drugs withdrawn by USFDA at later phases of drug discovery which should have passed all the state-of-the-art experimental approaches and currently acceptable toxicity filters, there is a dire need to interconnect all these molecular key properties to enhance our knowledge and guide in the identification of leads to drug optimization phases. Current computational tools can predict ADMET and organ toxicities based on pharmacophore fingerprint, toxicophores and advanced machine-learning techniques.
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来源期刊
自引率
3.10%
发文量
66
期刊介绍: Toxicology Mechanisms and Methods is a peer-reviewed journal whose aim is twofold. Firstly, the journal contains original research on subjects dealing with the mechanisms by which foreign chemicals cause toxic tissue injury. Chemical substances of interest include industrial compounds, environmental pollutants, hazardous wastes, drugs, pesticides, and chemical warfare agents. The scope of the journal spans from molecular and cellular mechanisms of action to the consideration of mechanistic evidence in establishing regulatory policy. Secondly, the journal addresses aspects of the development, validation, and application of new and existing laboratory methods, techniques, and equipment. A variety of research methods are discussed, including: In vivo studies with standard and alternative species In vitro studies and alternative methodologies Molecular, biochemical, and cellular techniques Pharmacokinetics and pharmacodynamics Mathematical modeling and computer programs Forensic analyses Risk assessment Data collection and analysis.
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