Jukič Marko, Bren Urban
Laboratory of Physical Chemistry and Chemical Thermodynamics, Faculty of Chemistry and Chemical Engineering, University of Maribor, Maribor, Slovenia.
Faculty of Mathematics, Natural Sciences and Information Technologies, University of Primorska, Koper, Slovenia.
Front Pharmacol. 2022 May 3;13:864412. doi: 10.3389/fphar.2022.864412. eCollection 2022.
Advances in computer hardware and the availability of high-performance supercomputing platforms and parallel computing, along with artificial intelligence methods are successfully complementing traditional approaches in medicinal chemistry. In particular, machine learning is gaining importance with the growth of the available data collections. One of the critical areas where this methodology can be successfully applied is in the development of new antibacterial agents. The latter is essential because of the high attrition rates in new drug discovery, both in industry and in academic research programs. Scientific involvement in this area is even more urgent as antibacterial drug resistance becomes a public health concern worldwide and pushes us increasingly into the post-antibiotic era. In this review, we focus on the latest machine learning approaches used in the discovery of new antibacterial agents and targets, covering both small molecules and antibacterial peptides. For the benefit of the reader, we summarize all applied machine learning approaches and available databases useful for the design of new antibacterial agents and address the current shortcomings.
计算机硬件的进步、高性能超级计算平台和并行计算的可用性,以及人工智能方法,正在成功地补充药物化学中的传统方法。特别是,随着可用数据集的增长,机器学习正变得越来越重要。这种方法可以成功应用的关键领域之一是新型抗菌剂的开发。由于新药发现的高淘汰率,无论是在工业界还是学术研究项目中,后者都至关重要。随着抗菌药物耐药性成为全球公共卫生问题,并将我们日益推向抗生素后时代,科学界在这一领域的参与变得更加紧迫。在这篇综述中,我们重点关注用于发现新型抗菌剂和靶点的最新机器学习方法,涵盖小分子和抗菌肽。为了读者的利益,我们总结了所有应用的机器学习方法以及对新型抗菌剂设计有用的可用数据库,并阐述了当前的不足之处。