Automatic discovery of 100-miRNA signature for cancer classification using ensemble feature selection.
Alejandro Lopez-RinconMarlet Martinez-ArchundiaGustavo U Martinez-RuizAlexander SchoenhuthAlberto TondaPublished in: BMC bioinformatics (2019)
The 100-miRNA signature is sufficiently stable to provide almost the same classification accuracy as the complete TCGA dataset, and it is further validated on several GEO datasets, across different types of cancer and platforms. Furthermore, a bibliographic analysis confirms that 77 out of the 100 miRNAs in the signature appear in lists of circulating miRNAs used in cancer studies, in stem-loop or mature-sequence form. The remaining 23 miRNAs offer potentially promising avenues for future research.