info:eu-repo/semantics/article
Analysis of genetic association using hierarchical clustering and cluster validation indices
Fecha
2017-10Registro en:
Pagnuco, Inti Anabela; Pastore, Juan Ignacio; Abras, Guillermo; Brun, Marcel; Ballarin, Virginia Laura; Analysis of genetic association using hierarchical clustering and cluster validation indices; Academic Press Inc Elsevier Science; Genomics; 109; 5-6; 10-2017; 438-445
0888-7543
CONICET Digital
CONICET
Autor
Pagnuco, Inti Anabela
Pastore, Juan Ignacio
Abras, Guillermo
Brun, Marcel
Ballarin, Virginia Laura
Resumen
It is usually assumed that co-expressed genes suggest co-regulation in the underlying regulatory network. Determining sets of co-expressed genes is an important task, based on some criteria of similarity. This task is usually performed by clustering algorithms, where the genes are clustered into meaningful groups based on their expression values in a set of experiment. In this work, we propose a method to find sets of co-expressed genes, based on cluster validation indices as a measure of similarity for individual gene groups, and a combination of variants of hierarchical clustering to generate the candidate groups. We evaluated its ability to retrieve significant sets on simulated correlated and real genomics data, where the performance is measured based on its detection ability of co-regulated sets against a full search. Additionally, we analyzed the quality of the best ranked groups using an online bioinformatics tool that provides network information for the selected genes.