4.6 Article

Antimicrobial resistance and machine learning: past, present, and future

期刊

FRONTIERS IN MICROBIOLOGY
卷 14, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fmicb.2023.1179312

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antimicrobial resistance; antibiotic resistance; machine learning; deep learning; bibliometric analysis; healthcare

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Machine learning is widely used in various industries, including the emerging field of predicting antimicrobial resistance. This bibliometric review is expected to inspire further research in this area. The review utilizes standard bibliometric indicators to evaluate the relevance and impact of leading countries, organizations, journals, and authors in this field, and employs VOSviewer and Biblioshiny programs to analyze networks and trends. The study finds that the United States has the highest contribution, followed by China and the United Kingdom, and reveals a significant increase in research on using machine learning to predict antibiotic resistance.
Machine learning has become ubiquitous across all industries, including the relatively new application of predicting antimicrobial resistance. As the first bibliometric review in this field, we expect it to inspire further research in this area. The review employs standard bibliometric indicators such as article count, citation count, and the Hirsch index (H-index) to evaluate the relevance and impact of the leading countries, organizations, journals, and authors in this field. VOSviewer and Biblioshiny programs are utilized to analyze citation and co-citation networks, collaboration networks, keyword co-occurrence, and trend analysis. The United States has the highest contribution with 254 articles, accounting for over 37.57% of the total corpus, followed by China (103) and the United Kingdom (78). Among 58 publishers, the top four publishers account for 45% of the publications, with Elsevier leading with 15% of the publications, followed by Springer Nature (12%), MDPI, and Frontiers Media SA with 9% each. Frontiers in Microbiology is the most frequent publication source (33 articles), followed by Scientific Reports (29 articles), PLoS One (17 articles), and Antibiotics (16 articles). The study reveals a substantial increase in research and publications on the use of machine learning to predict antibiotic resistance. Recent research has focused on developing advanced machine learning algorithms that can accurately forecast antibiotic resistance, and a range of algorithms are now being used to address this issue.

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