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Assessing semantic similarity measures for the characterization of human regulatory pathways
2006
Bioinformatics
Motivation: Pathway modeling requires the integration of multiple data including prior knowledge. In this study, we quantitatively assess the application of Gene Ontology (GO)-derived similarity measures for the characterization of direct and indirect interactions within human regulatory pathways. The characterization would help the integration of prior pathway knowledge for the modeling. Results: Our analysis indicates information content-based measures outperform graph structure-based
doi:10.1093/bioinformatics/btl042
pmid:16492685
fatcat:jcxzx2ohlzac5irvac3w6f77ay