2024
DOI: 10.1093/nargab/lqae079
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Optimizing hybrid ensemble feature selection strategies for transcriptomic biomarker discovery in complex diseases

Elsa Claude,
Mickaël Leclercq,
Patricia Thébault
et al.

Abstract: Biomedical research takes advantage of omic data, such as transcriptomics, to unravel the complexity of diseases. A conventional strategy identifies transcriptomic biomarkers characterized by expression patterns associated with a phenotype by relying on feature selection approaches. Hybrid ensemble feature selection (HEFS) has become increasingly popular as it ensures robustness of the selected features by performing data and functional perturbations. However, it remains difficult to make the best suited choic… Show more

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