| Literature DB >> 17203979 |
Bruno Meunier1, Emilie Dumas, Isabelle Piec, Daniel Béchet, Michel Hébraud, Jean-François Hocquette.
Abstract
Hierarchical clustering methodology is a powerful data mining approach for a first exploration of proteomic data. It enables samples or proteins to be grouped blindly according to their expression profiles. Nevertheless, the clustering results depend on parameters such as data preprocessing, between-profile similarity measurement, and the dendrogram construction procedure. We assessed several clustering strategies by calculating the F-measure, a widely used quality metric. The combination, on logged matrix, of Pearson correlation and Ward's methods for data aggregation is among the best clustering strategies, at least with the data sets we studied. This study was carried out using PermutMatrix, a freely available software derived from transcriptomics.Mesh:
Year: 2007 PMID: 17203979 DOI: 10.1021/pr060343h
Source DB: PubMed Journal: J Proteome Res ISSN: 1535-3893 Impact factor: 4.466