Singh Chandra Kant, Sodhi Kushneet Kaur
Department of Zoology, University of Delhi, Delhi, India.
Department of Zoology, Sri Guru Tegh Bahadur Khalsa College, University of Delhi, Delhi, India.
Crit Rev Microbiol. 2025 Sep;51(5):860-878. doi: 10.1080/1040841X.2024.2429603. Epub 2024 Nov 18.
Antibiotic resistance has expanded as a result of the careless use of antibiotics in the medical field, the food industry, agriculture, and other industries. By means of genetic recombination between commensal and pathogenic bacteria, the microbes obtain antibiotic resistance genes (ARGs). In bacteria, horizontal gene transfer (HGT) is the main mechanism for acquiring ARGs. With the development of high-throughput sequencing, ARG sequence analysis is now feasible and widely available. Preventing the spread of AMR in the environment requires the implementation of ARGs mapping. The metagenomic technique, in particular, has helped in identifying antibiotic resistance within microbial communities. Due to the exponential growth of experimental and clinical data, significant investments in computer capacity, and advancements in algorithmic techniques, the application of machine learning (ML) algorithms to the problem of AMR has attracted increasing attention over the past five years. The review article sheds a light on the application of bioinformatics for the antibiotic resistance monitoring. The most advanced tool currently being employed to catalog the resistome of various habitats are metagenomics and metatranscriptomics. The future lies in the hands of artificial intelligence (AI) and machine learning (ML) methods, to predict and optimize the interaction of antibiotic-resistant compounds with target proteins.
由于在医学领域、食品工业、农业及其他行业中抗生素的滥用,抗生素耐药性问题日益严重。通过共生菌与病原菌之间的基因重组,微生物获得了抗生素耐药基因(ARGs)。在细菌中,水平基因转移(HGT)是获取ARGs的主要机制。随着高通量测序技术的发展,ARG序列分析现已可行且广泛应用。防止环境中AMR的传播需要进行ARGs图谱绘制。特别是宏基因组技术,有助于识别微生物群落中的抗生素耐药性。由于实验和临床数据呈指数级增长、计算机能力投入巨大以及算法技术的进步,在过去五年中,将机器学习(ML)算法应用于AMR问题已引起越来越多的关注。这篇综述文章揭示了生物信息学在抗生素耐药性监测中的应用。目前用于编目各种生境耐药组的最先进工具是宏基因组学和宏转录组学。未来掌握在人工智能(AI)和机器学习(ML)方法手中,以预测和优化抗生素抗性化合物与靶蛋白的相互作用。