Negative dataset selection impacts machine learning-based predictors for multiple bacterial species promoters
Abstract
Motivation Advances in bacterial promoter predictors based on machine learning have greatly improved identification metrics. However, existing models overlooked the impact of negative datasets, previously identified in GC-content discrepancies between positive and negative datasets in single-species models. This study aims to investigate whether multiple-species models for promoter classification are inherently biased due to the selection criteria of negative datasets. We further explore whether the generation of synthetic random sequences (SRS) that mimic GC-content distribution of promoters can partly reduce this bias.Results Multiple-species predictors exhibited GC-content bias when using CDS as a negative dataset, suggested by specificity and sensibility metrics in a species-specific manner, and investigated by dimensionality reduction. We demonstrated a reduction in this bias by using the SRS dataset, with less detection of background noise in real genomic data. In both scenarios DNABERT showed the best metrics. These findings suggest that GC-balanced datasets can enhance the generalizability of promoter predictors across Bacteria.Availability and implementation The source code of the experiments is freely available at https://github.com/maigonzalezh/MultispeciesPromoterClassifier.
Más información
Título según WOS: | ID WOS:001464987400001 Not found in local WOS DB |
Título de la Revista: | BIOINFORMATICS |
Volumen: | 41 |
Número: | 4 |
Editorial: | OXFORD UNIV PRESS |
Fecha de publicación: | 2025 |
DOI: |
10.1093/bioinformatics/btaf135 |
Notas: | ISI |