Department of Drug and Health Sciences, University of Catania, Viale A. Doria 6, 95125 Catania, Italy.
Department of Chemical Science, University of Catania, Viale A. Doria 6, 95125 Catania, Italy.
Molecules. 2024 Nov 13;29(22):5349. doi: 10.3390/molecules29225349.
In recent years, the advent of computational techniques to predict the potential activity of a drug interacting with a receptor or to predict the structure of unidentified proteins with aberrant characteristics has significantly impacted the field of drug design. We provide a comprehensive review of the current state of in silico approaches and software for investigating the effects of receptor mutations associated with human diseases, focusing on both frequent and rare mutations. The reported techniques include virtual screening, homology modeling, threading, docking, and molecular dynamics. This review clearly shows that it is common for successful studies to integrate different techniques in drug design, with docking and molecular dynamics being the most frequently used techniques. This trend reflects the current emphasis on developing novel therapies for diseases resulting from receptor mutations with the recently discovered AlphaFold algorithm as the driving force.
近年来,计算技术的出现使得预测药物与受体相互作用的潜在活性或预测具有异常特征的未知蛋白质的结构成为可能,这极大地推动了药物设计领域的发展。我们全面回顾了当前用于研究与人类疾病相关的受体突变影响的计算方法和软件,重点关注常见和罕见突变。报道的技术包括虚拟筛选、同源建模、穿线、对接和分子动力学。本综述清楚地表明,在药物设计中成功的研究通常需要整合不同的技术,对接和分子动力学是最常用的技术。这一趋势反映了当前的重点是开发针对受体突变引起的疾病的新型疗法,最近发现的 AlphaFold 算法是推动这一趋势的动力。