Applying Machine Learning for Antibiotic Development and Prediction of Microbial Resistance.

IF 3.5 3区 化学 Q2 CHEMISTRY, MULTIDISCIPLINARY Chemistry - An Asian Journal Pub Date : 2024-07-01 DOI:10.1002/asia.202400102
Apurva Panjla, Saurabh Joshi, Geetanjali Singh, Sarah E Bamford, Adam Mechler, Sandeep Verma
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Abstract

Antimicrobial resistance (AMR) poses a serious threat to human health worldwide. It is now more challenging than ever to introduce a potent antibiotic to the market considering rapid emergence of antimicrobial resistance, surpassing the rate of antibiotic drug discovery. Hence, new approaches need to be developed to accelerate the rate of drug discovery process and meet the demands for new antibiotics, while reducing the cost of their development. Machine learning holds immense promise of becoming a useful tool, especially since in the last two decades, exponential growth has occurred in computational power and biological big data analytics. Recent advancements in machine learning algorithms for drug discovery have provided significant clues for potential antibiotic classes. Apart from discovery of new scaffolds, machine learning protocols will significantly impact prediction of AMR patterns and drug metabolism. In this review, we outline power of machine learning in antibiotic drug discovery, metabolic fate, and AMR prediction to support researchers engaged and interested in this field.

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将机器学习应用于抗生素开发和微生物耐药性预测。
抗菌药耐药性(AMR)对全球人类健康构成严重威胁。考虑到抗菌药耐药性的迅速出现,抗生素药物的发现速度已经超过了抗菌药耐药性的发现速度,因此向市场推出强效抗生素比以往任何时候都更具挑战性。因此,需要开发新的方法来加快药物发现过程的速度,满足对新抗生素的需求,同时降低开发成本。机器学习有望成为一种有用的工具,尤其是在过去二十年里,计算能力和生物大数据分析呈指数级增长。机器学习算法在药物发现方面的最新进展为潜在的抗生素类别提供了重要线索。除了发现新的支架,机器学习协议还将对 AMR 模式和药物代谢的预测产生重大影响。在这篇综述中,我们将概述机器学习在抗生素药物发现、代谢命运和AMR预测方面的力量,以支持从事这一领域研究并对其感兴趣的研究人员。
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来源期刊
Chemistry - An Asian Journal
Chemistry - An Asian Journal 化学-化学综合
CiteScore
7.00
自引率
2.40%
发文量
535
审稿时长
1.3 months
期刊介绍: Chemistry—An Asian Journal is an international high-impact journal for chemistry in its broadest sense. The journal covers all aspects of chemistry from biochemistry through organic and inorganic chemistry to physical chemistry, including interdisciplinary topics. Chemistry—An Asian Journal publishes Full Papers, Communications, and Focus Reviews. A professional editorial team headed by Dr. Theresa Kueckmann and an Editorial Board (headed by Professor Susumu Kitagawa) ensure the highest quality of the peer-review process, the contents and the production of the journal. Chemistry—An Asian Journal is published on behalf of the Asian Chemical Editorial Society (ACES), an association of numerous Asian chemical societies, and supported by the Gesellschaft Deutscher Chemiker (GDCh, German Chemical Society), ChemPubSoc Europe, and the Federation of Asian Chemical Societies (FACS).
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