Please use this identifier to cite or link to this item: http://hdl.handle.net/1942/42963
Title: Predicting Antimicrobial Resistance Trends Combining Standard Linear Algebra with Machine Learning Algorithms
Authors: Castiglione, Filippo
Daugulis, Peteris
MANCINI, Emiliano 
Oldenkamp, Rik
Schultsz, Constance
Vagale, Vija
Issue Date: 2024
Publisher: UNIV LATVIA
Source: Baltic Journal of Modern Computing, 12 (1) , p. 30 -49
Abstract: Antimicrobial resistance prediction is a pivotal ongoing research activity that is currently being explored across various levels. In this context, we present the application of two prediction methods that model the antimicrobial resistance of Neisseria gonorrhoeae on the national level as an outcome of socio-economic processes. The methods use two different implementations of the principal component analysis combined with classification algorithms. Using these two methods, we generated forecasts concerning antimicrobial resistance of Neisseria gonorrhoeae, using publicly available databases encompassing over 200 countries from 1998 to 2021. Both approaches exhibit similar mean absolute averages and correlations when comparing available measurements with predictions. Steps of statistical analysis and applications are and error reduction possibilities.
Notes: Daugulis, P (corresponding author), Daugavpils Univ, Daugavpils, Latvia.
filippo.castiglione@tii.ae; peteris.daugulis@du.lv;
emiliano.mancini@uhasselt.be; r.oldenkamp@vu.nl; c.schultsz@aighd.org;
vija.vagale@du.lv
Keywords: PCA;principal component regression;antimicrobial resistance;AMR prevalence prediction;Neisseria gonorrhoea;surveillance
Document URI: http://hdl.handle.net/1942/42963
ISSN: 2255-8942
e-ISSN: 2255-8950
DOI: 10.22364/bjmc.2024.12.1.03
ISI #: 001194961500007
Category: A1
Type: Journal Contribution
Appears in Collections:Research publications

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