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Predicting S. aureusantimicrobial resistance with interpretable genomic space maps

Authors :
Pikalyova, Karina
Orlov, Alexey
Horvath, Dragos
Marcou, Gilles
Varnek, Alexandre
Source :
Molecular Informatics; May 2024, Vol. 43 Issue: 5
Publication Year :
2024

Abstract

Increasing antimicrobial resistance (AMR) represents a global healthcare threat. To decrease the spread of AMR and associated mortality, methods for rapid selection of optimal antibiotic treatment are urgently needed. Machine learning (ML) models based on genomic data to predict resistant phenotypes can serve as a fast screening tool prior to phenotypic testing. Nonetheless, many existing ML methods lack interpretability. Therefore, we present a methodology for visualization of sequence space and AMR prediction based on the non‐linear dimensionality reduction method – generative topographic mapping (GTM). This approach, applied to AMR data of >5000 S. aureusisolates retrieved from the PATRIC database, yielded GTM models with reasonable accuracy for all drugs (balanced accuracy values ≥0.75). The Generative Topographic Maps (GTMs) represent data in the form of illustrative maps of the genomic space and allow for antibiotic‐wise comparison of resistant phenotypes. The maps were also found to be useful for the analysis of genetic determinants responsible for drug resistance. Overall, the GTM‐based methodology is a useful tool for both the illustrative exploration of the genomic sequence space and AMR prediction.

Details

Language :
English
ISSN :
18681743 and 18681751
Volume :
43
Issue :
5
Database :
Supplemental Index
Journal :
Molecular Informatics
Publication Type :
Periodical
Accession number :
ejs66439009
Full Text :
https://doi.org/10.1002/minf.202300263