| Literature DB >> 32604604 |
Georgios Feretzakis1,2,3, Evangelos Loupelis2, Aikaterini Sakagianni4, Dimitris Kalles1, Malvina Lada5, Constantinos Christopoulos5, Evangelos Dimitrellos5, Maria Martsoukou6, Nikoleta Skarmoutsou6, Stavroula Petropoulou2, Konstantinos Alexiou7, Aikaterini Velentza6, Sophia Michelidou4, Konstantinos Valakis4.
Abstract
Multi-drug-resistant (MDR) infections and their devastating consequences constitute a global problem and a constant threat to public health with immense costs for their treatment. Early identification of the pathogen and its antibiotic resistance profile is crucial for a favorable outcome. Given the fact that more than 24 hours are usually required to perform common antibiotic resistance tests after the sample collection, the implementation of machine learning methods could be of significant help in selecting empirical antibiotic treatment based only on the sample type, Gram stain, and patient's basic characteristics. In this paper, five machine learning (ML) algorithms have been tested to determine antibiotic susceptibility predictions using simple demographic data of the patients, as well as culture results and antibiotic susceptibility tests. Implementing ML algorithms to antimicrobial susceptibility data may offer insightful antibiotic susceptibility predictions to assist clinicians in decision-making regarding empirical treatment.Entities:
Keywords: AMR; Antibiotic resistance; Machine Learning
Mesh:
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Year: 2020 PMID: 32604604 DOI: 10.3233/SHTI200497
Source DB: PubMed Journal: Stud Health Technol Inform ISSN: 0926-9630