Application of computational methods for anticancer drug discovery, design, and optimization

Diego Prada-Gracia , Sara Huerta-Yépez , Liliana M. Moreno-Vargas
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引用次数: 60

Abstract

Developing a novel drug is a complex, risky, expensive and time-consuming venture. It is estimated that the conventional drug discovery process ending with a new medicine ready for the market can take up to 15 years and more than a billion USD. Fortunately, this scenario has recently changed with the arrival of new approaches. Many novel technologies and methodologies have been developed to increase the efficiency of the drug discovery process, and computational methodologies have become a crucial component of many drug discovery programs. From hit identification to lead optimization, techniques such as ligand- or structure-based virtual screening are widely used in many discovery efforts. It is the case for designing potential anticancer drugs and drug candidates, where these computational approaches have had a major impact over the years and have provided fruitful insights into the field of cancer. In this paper, we review the concept of rational design presenting some of the most representative examples of molecules identified by means of it. Key principles are illustrated through case studies including specifically successful achievements in the field of anticancer drug design to demonstrate that research advances, with the aid of in silico drug design, have the potential to create novel anticancer drugs.

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计算方法在抗癌药物发现、设计和优化中的应用
开发一种新药是一项复杂、有风险、昂贵且耗时的冒险。据估计,传统的药物发现过程以新药上市为结束,可能需要长达15年的时间和超过10亿美元的资金。幸运的是,随着新方法的出现,这种情况最近发生了变化。许多新的技术和方法已经被开发出来,以提高药物发现过程的效率,计算方法已经成为许多药物发现计划的关键组成部分。从命中识别到先导优化,诸如基于配体或结构的虚拟筛选等技术被广泛应用于许多发现工作中。设计潜在的抗癌药物和候选药物也是如此,这些计算方法多年来产生了重大影响,并为癌症领域提供了富有成效的见解。在本文中,我们回顾了理性设计的概念,并提出了一些最有代表性的分子识别的例子。通过案例研究,包括在抗癌药物设计领域的具体成功成就,说明了研究进展,在计算机药物设计的帮助下,有可能创造出新的抗癌药物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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