Anesthetic drug discovery with computer-aided drug design and machine learning

Xianggen Liu, Zhe Xue, Mingmin Luo, Bowen Ke, Jiancheng Lv
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Abstract

Computer-aided drug design (CADD) has emerged as a highly effective and indispensable tool for streamlining the drug discovery process, leading to significant reductions in cost and time. The integration of CADD with machine learning (ML) and deep learning (DL) technologies further enhances its potential and promises novel advancements in the field. In this article, we provide a review of the computational methods employed in the development of novel anesthetics, outlining their respective advantages and limitations. These techniques have demonstrated their utility across various stages of drug discovery, encompassing the exploration of target-ligand interactions, identification and validation of new binding sites, de novo drug design, evaluation and optimization of absorption, distribution, metabolism, excretion, and toxicity (ADMET) properties in lead compounds, as well as prediction of adverse effects. Through an in-depth exploration of computational approaches and their applications, this article aims to help relevant researchers develop safer and more effective anesthetic drugs.

利用计算机辅助药物设计和机器学习发现麻醉药物
计算机辅助药物设计(CADD)已成为简化药物发现过程不可或缺的高效工具,可显著降低成本和缩短时间。CADD 与机器学习(ML)和深度学习(DL)技术的整合进一步增强了其潜力,并有望在该领域取得新的进展。在本文中,我们将对新型麻醉剂开发过程中采用的计算方法进行回顾,概述其各自的优势和局限性。这些技术已在药物发现的各个阶段证明了它们的实用性,包括探索靶标与配体的相互作用、鉴定和验证新的结合位点、全新药物设计、评估和优化先导化合物的吸收、分布、代谢、排泄和毒性(ADMET)特性以及预测不良反应。本文旨在通过深入探讨计算方法及其应用,帮助相关研究人员开发出更安全、更有效的麻醉药物。
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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