1. GScluster: network-weighted gene-set clustering analysis.
- Author
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Yoon S, Kim J, Kim SK, Baik B, Chi SM, Kim SY, and Nam D
- Subjects
- Algorithms, Animals, Diabetes Mellitus, Type 2 genetics, Gene Expression Regulation, Humans, Neoplasms genetics, Gene Expression Profiling methods, Gene Regulatory Networks, Protein Interaction Mapping methods, Software
- Abstract
Background: Gene-set analysis (GSA) has been commonly used to identify significantly altered pathways or functions from omics data. However, GSA often yields a long list of gene-sets, necessitating efficient post-processing for improved interpretation. Existing methods cluster the gene-sets based on the extent of their overlap to summarize the GSA results without considering interactions between gene-sets., Results: Here, we presented a novel network-weighted gene-set clustering that incorporates both the gene-set overlap and protein-protein interaction (PPI) networks. Three examples were demonstrated for microarray gene expression, GWAS summary, and RNA-sequencing data to which different GSA methods were applied. These examples as well as a global analysis show that the proposed method increases PPI densities and functional relevance of the resulting clusters. Additionally, distinct properties of gene-set distance measures were compared. The methods are implemented as an R/Shiny package GScluster that provides gene-set clustering and diverse functions for visualization of gene-sets and PPI networks., Conclusions: Network-weighted gene-set clustering provides functionally more relevant gene-set clusters and related network analysis.
- Published
- 2019
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