SINC(I)   25518
INSTITUTO DE INVESTIGACION EN SEÑALES, SISTEMAS E INTELIGENCIA COMPUTACIONAL
Unidad Ejecutora - UE
artículos
Título:
Complexity measures of the mature miRNA for improving pre-miRNAs prediction (IF 5.610)
Autor/es:
J. RAAD, G. STEGMAYER, D.H. MILONE; J. RAAD, G. STEGMAYER, D.H. MILONE
Revista:
BIOINFORMATICS (OXFORD, ENGLAND)
Editorial:
OXFORD UNIV PRESS
Referencias:
Lugar: Oxford; Año: 2020 vol. 36 p. 2319 - 2327
ISSN:
1367-4803
Resumen:
Motivation: The discovery of microRNA (miRNA) in the last decade has certainly changed the understanding of gene regulation in the cell. Although a large number of algorithms with different features have been proposed, they still predict an impractical amount of false positives. Most of the proposed features are based on the structure of precursors of the miRNA (pre-miRNA) only, not considering the important and relevant information contained in the mature miRNA. Such new kind of features could certainly improve the performance of the predictors of new miRNAs.Results: This paper presents three new features that are based on the sequence information contained in the mature miRNA. We will show how these new features, when used by a classical supervised machine learning approach as well as by more recent proposals based on deep learning, improve the prediction performance in a significant way. Moreover, several experimental conditions were defined and tested in order to evaluate the novel features impact in situations close to genome-wide analysis. The results show that the incorporation of new features based on the mature miRNA allow to improve the detection of new miRNAs independently of the classifier used.