IBIOBA - MPSP   22718
INSTITUTO DE INVESTIGACION EN BIOMEDICINA DE BUENOS AIRES - INSTITUTO PARTNER DE LA SOCIEDAD MAX PLANCK
Unidad Ejecutora - UE
artículos
Título:
Hepatocellular Carcinoma tumor stage classification and gene selection using machine learning models
Autor/es:
YANKILEVICH, P; BEAUSEROY, PIERRE; PALAZZO, MARTIN
Revista:
SADIO Electronic Journal of Informatic and Operation Research
Editorial:
SOCIEDAD ARGENTINA DE INFORMÁTICA E INVESTIGACIÓN OPERATIVA
Referencias:
Lugar: Buenos Aires; Año: 2019
ISSN:
1514-6774
Resumen:
Cancer researchers are facing the opportunity to analyze and learn from big quantities of omic profiles of tumor samples. Different omic data is now available in several databases and the bioinformatics data analysis and interpretation are current bottlenecks. In this study somatic mutations and gene expression data from Hepatocellular carcinoma tumor samples are used to discriminate by Kernel Learning between tumor subtypes and early and late stages. This classification will allow medical doctors to establish an appropriate treatment according to the tumor stage. By building kernel machines we could discriminate both classes with an acceptable classification accuracy. Feature selection have been implemented to select the key genes which differential expression improves the separability between the samples of early and late stages.