Using Machine Learning to Predict Antimicrobial Resistance-A Literature Review.
Aikaterini SakagianniChristina KoufopoulouGeorgios FeretzakisDimitris KallesVassilios S VerykiosPavlos MyrianthefsGeorgios FildisisPublished in: Antibiotics (Basel, Switzerland) (2023)
Machine learning (ML) algorithms are increasingly applied in medical research and in healthcare, gradually improving clinical practice. Among various applications of these novel methods, their usage in the combat against antimicrobial resistance (AMR) is one of the most crucial areas of interest, as increasing resistance to antibiotics and management of difficult-to-treat multidrug-resistant infections are significant challenges for most countries worldwide, with life-threatening consequences. As antibiotic efficacy and treatment options decrease, the need for implementation of multimodal antibiotic stewardship programs is of utmost importance in order to restrict antibiotic misuse and prevent further aggravation of the AMR problem. Both supervised and unsupervised machine learning tools have been successfully used to predict early antibiotic resistance, and thus support clinicians in selecting appropriate therapy. In this paper, we reviewed the existing literature on machine learning and artificial intelligence (AI) in general in conjunction with antimicrobial resistance prediction. This is a narrative review, where we discuss the applications of ML methods in the field of AMR and their value as a complementary tool in the antibiotic stewardship practice, mainly from the clinician's point of view.
Keyphrases
- antimicrobial resistance
- machine learning
- artificial intelligence
- healthcare
- big data
- deep learning
- multidrug resistant
- primary care
- clinical practice
- chronic pain
- palliative care
- public health
- klebsiella pneumoniae
- case report
- escherichia coli
- pain management
- pseudomonas aeruginosa
- cystic fibrosis
- acinetobacter baumannii
- health insurance