Computer-aided nanodrug discovery: recent progress and future prospects

IF 40.4 1区 化学 Q1 CHEMISTRY, MULTIDISCIPLINARY
Jia-Jia Zheng, Qiao-Zhi Li, Zhenzhen Wang, Xiaoli Wang, Yuliang Zhao and Xingfa Gao
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Abstract

Nanodrugs, which utilise nanomaterials in disease prevention and therapy, have attracted considerable interest since their initial conceptualisation in the 1990s. Substantial efforts have been made to develop nanodrugs for overcoming the limitations of conventional drugs, such as low targeting efficacy, high dosage and toxicity, and potential drug resistance. Despite the significant progress that has been made in nanodrug discovery, the precise design or screening of nanomaterials with desired biomedical functions prior to experimentation remains a significant challenge. This is particularly the case with regard to personalised precision nanodrugs, which require the simultaneous optimisation of the structures, compositions, and surface functionalities of nanodrugs. The development of powerful computer clusters and algorithms has made it possible to overcome this challenge through in silico methods, which provide a comprehensive understanding of the medical functions of nanodrugs in relation to their physicochemical properties. In addition, machine learning techniques have been widely employed in nanodrug research, significantly accelerating the understanding of bio–nano interactions and the development of nanodrugs. This review will present a summary of the computational advances in nanodrug discovery, focusing on the understanding of how the key interfacial interactions, namely, surface adsorption, supramolecular recognition, surface catalysis, and chemical conversion, affect the therapeutic efficacy of nanodrugs. Furthermore, this review will discuss the challenges and opportunities in computer-aided nanodrug discovery, with particular emphasis on the integrated “computation + machine learning + experimentation” strategy that can potentially accelerate the discovery of precision nanodrugs.

Abstract Image

Abstract Image

计算机辅助纳米药物发现:最新进展与未来展望。
纳米药物是一种利用纳米材料预防和治疗疾病的药物,自 20 世纪 90 年代提出这一概念以来,已引起了广泛关注。为克服传统药物的局限性,如低靶向效力、高剂量和毒性以及潜在的耐药性,人们在开发纳米药物方面做出了巨大努力。尽管在纳米药物发现方面取得了重大进展,但在实验前精确设计或筛选具有所需生物医学功能的纳米材料仍然是一项重大挑战。个性化精准纳米药物尤其如此,需要同时优化纳米药物的结构、成分和表面功能。功能强大的计算机集群和算法的发展使得通过硅学方法克服这一挑战成为可能,这种方法可以全面了解纳米药物的医疗功能与其物理化学特性的关系。此外,机器学习技术已广泛应用于纳米药物研究,大大加快了对生物纳米相互作用的理解和纳米药物的开发。本综述将总结纳米药物发现方面的计算进展,重点介绍对关键界面相互作用(即表面吸附、超分子识别、表面催化和化学转化)如何影响纳米药物疗效的理解。此外,本综述还将讨论计算机辅助纳米药物发现所面临的挑战和机遇,并特别强调 "计算+机器学习+实验 "的综合策略有可能加速精准纳米药物的发现。
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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来源期刊
Chemical Society Reviews
Chemical Society Reviews 化学-化学综合
CiteScore
80.80
自引率
1.10%
发文量
345
审稿时长
6.0 months
期刊介绍: Chemical Society Reviews is published by: Royal Society of Chemistry. Focus: Review articles on topics of current interest in chemistry; Predecessors: Quarterly Reviews, Chemical Society (1947–1971); Current title: Since 1971; Impact factor: 60.615 (2021); Themed issues: Occasional themed issues on new and emerging areas of research in the chemical sciences
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