Toward Robust Machine Learning Models for MALDI-TOF MS: Novel Approaches for Mycobacterium abscessus Subspecies Identification
Erica Padial-Fuillerat, Juan E. Martínez-Manjón, Igor Zwir, Manuel J. Arroyo, Mario Blázquez-Sánchez, David Rodríguez-Temporal, Belén Rodríguez, Luis Mancera, Coral del Val

TL;DR
This paper presents a machine learning approach using MALDI-TOF MS to accurately identify Mycobacterium abscessus subspecies, improving diagnostic accuracy and antimicrobial therapy selection.
Contribution
The study introduces a novel analytical pipeline combining SVMs, ComBat correction, and feature selection for robust subspecies identification.
Findings
The best model achieved 97% F1 score and 97.17% AUC-ROC for subspecies discrimination.
SHAP analysis confirmed the biological relevance of selected spectral features, especially for M. abscessus subsp. bolletii.
Most models showed high geometric mean and index balanced accuracy (>0.90), ensuring consistent sensitivity and specificity.
Abstract
Distinguishing Mycobacterium abscessus subspecies presents significant diagnostic challenges due to their genetic homogeneity and variability in analytical platforms. Our research combines matrix-assisted laser desorption/ionization time-of-flight (MALDI-TOF) mass spectrometry with machine learning (ML) approaches to enhance discrimination accuracy, utilizing 325 spectra profiles from diverse European hospitals. The analytical pipeline incorporates specialized techniques for geographical data harmonization, feature selection, and balancing class representation. The best model employs support vector machines (SVMs) with ComBat correction, Boruta feature selection, and centroid clustering for class imbalance, achieving a discrimination performance of 97% F1 score and 97.17% AUC-ROC on test samples. Noteworthily, most tested models improved their discrimination performance with the…
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Taxonomy
TopicsMycobacterium research and diagnosis · Bacterial Identification and Susceptibility Testing · Tuberculosis Research and Epidemiology
