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药物设计中的可药性和类药性概念:生物建模和预测工具是否有发言权?

Druggability and drug-likeness concepts in drug design: are biomodelling and predictive tools having their say?

机构信息

Molecular Bio-Computation & Drug Design Lab, School of Health Sciences, University of KwaZulu-Natal, Westville, Durban, 4000, South Africa.

出版信息

J Mol Model. 2020 May 8;26(6):120. doi: 10.1007/s00894-020-04385-6.

Abstract

The drug discovery process typically involves target identification and design of suitable drug molecules against these targets. Despite decades of experimental investigations in the drug discovery domain, about 96% overall failure rate has been recorded in drug development due to the "undruggability" of various identified disease targets, in addition to other challenges. Likewise, the high attrition rate of drug candidates in the drug discovery process has also become an enormous challenge for the pharmaceutical industry. To alleviate this negative outlook, new trends in drug discovery have emerged. By drifting away from experimental research methods, computational tools and big data are becoming valuable in the prediction of biological target druggability and the drug-likeness of potential therapeutic agents. These tools have proven to be useful in saving time and reducing research costs. As with any emerging technique, however, controversial opinions have been presented regarding the validation of predictive computational tools. To address the challenges associated with these varying opinions, this review attempts to highlight the principles of druggability and drug-likeness and their recent advancements in the drug discovery field. Herein, we present the different computational tools and their reliability of predictive analysis in the drug discovery domain. We believe that this report would serve as a comprehensive guide towards computational-oriented drug discovery research. Graphical abstract Highlights of methods for assessing the druggability of biological targets.

摘要

药物发现过程通常涉及针对这些靶点的目标识别和合适药物分子的设计。尽管在药物发现领域进行了几十年的实验研究,但由于各种已确定的疾病靶点的“不可成药性”以及其他挑战,药物开发的总体失败率约为 96%。同样,药物发现过程中候选药物的高淘汰率也成为制药行业的巨大挑战。为了缓解这种负面局面,药物发现出现了新趋势。通过远离实验研究方法,计算工具和大数据在预测生物靶标可成药性和潜在治疗剂的药物相似性方面变得具有价值。这些工具已被证明在节省时间和降低研究成本方面非常有用。然而,与任何新兴技术一样,关于预测计算工具的验证,也提出了一些有争议的观点。为了解决这些不同观点带来的挑战,本综述试图强调可成药性和药物相似性的原则及其在药物发现领域的最新进展。在此,我们介绍了不同的计算工具及其在药物发现领域预测分析的可靠性。我们相信,本报告将成为计算导向的药物发现研究的综合指南。

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