PERSONAL DE APOYO
GONZALEZ GermÁn Alexis
congresos y reuniones científicas
Título:
Integrative Functional Analysis Improves Information Retrieval in Breast Cancer
Autor/es:
RODRIGUEZ, JUAN CRUZ; GONZALEZ, GERMÁN ALEXIS; FRESNO, CRISTÓBAL; FERNÁNDEZ, ELMER ANDRES
Lugar:
Montevideo
Reunión:
Congreso; 20th Iberoamerican Congress CIARP 2015; 2015
Institución organizadora:
nternational Association for Pattern Recognition
Resumen:
Gene expression analysis does not end in a list of differentially expressed (DE) genes, but requires a comprehensive functional analysis (FA) of the underlying molecular mechanisms. Gene Set and Singular Enrichment Analysis (GSEA and SEA) over Gene Ontology (GO) are the most used FA approaches. Several statistical methods have been developed and compared in terms of computational efficiency and/or appropriateness. However, none of them were evaluated from a biological point of view or in terms of consistency on information retrieval. In this context, questions regarding ?are methods comparable??, ?is one of them preferable to the others??, ?how sensitive are they to different parameterizations?? All of them are crucial questions to face prior choosing a FA tool and they have not been, up to now, fully addressed.In this work we evaluate and compare the effect of different methods and parameters from an information retrieval point of view in both GSEA and SEAunder GO. Several experiments comparing breast cancer subtypes with knowndifferent outcome (i.e. Basal-Like vs. Luminal A) were analyzed. We show that GSEA could lead to very different results according to the used statistic, model and parameters. We also show that GSEA and SEA results are fairly overlapped, indeed they complement each other. Also an integrative framework is proposed to provide complementary and a stable enrichment information according to the analyzed datasets.