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ESEA: Discovering the Dysregulated Pathways based on Edge Set Enrichment Analysis.

Authors :
Han, Junwei
Shi, Xinrui
Zhang, Yunpeng
Xu, Yanjun
Jiang, Ying
Zhang, Chunlong
Feng, Li
Yang, Haixiu
Shang, Desi
Sun, Zeguo
Su, Fei
Li, Chunquan
Li, Xia
Source :
Scientific Reports. 8/14/2015, p13044. 1p.
Publication Year :
2015

Abstract

Pathway analyses are playing an increasingly important role in understanding biological mechanism, cellular function and disease states. Current pathway-identification methods generally focus on only the changes of gene expression levels; however, the biological relationships among genes are also the fundamental components of pathways, and the dysregulated relationships may also alter the pathway activities. We propose a powerful computational method, Edge Set Enrichment Analysis (ESEA), for the identification of dysregulated pathways. This provides a novel way of pathway analysis by investigating the changes of biological relationships of pathways in the context of gene expression data. Simulation studies illustrate the power and performance of ESEA under various simulated conditions. Using real datasets from p53 mutation, Type 2 diabetes and lung cancer, we validate effectiveness of ESEA in identifying dysregulated pathways. We further compare our results with five other pathway enrichment analysis methods. With these analyses, we show that ESEA is able to help uncover dysregulated biological pathways underlying complex traits and human diseases via specific use of the dysregulated biological relationships. We develop a freely available R-based tool of ESEA. Currently, ESEA can support pathway analysis of the seven public databases (KEGG; Reactome; Biocarta; NCI; SPIKE; HumanCyc; Panther). [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
20452322
Database :
Academic Search Index
Journal :
Scientific Reports
Publication Type :
Academic Journal
Accession number :
108956462
Full Text :
https://doi.org/10.1038/srep13044