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COPD subtypes identified by network-based clustering of blood gene expression.


ABSTRACT: One of the most common smoking-related diseases, chronic obstructive pulmonary disease (COPD), results from a dysregulated, multi-tissue inflammatory response to cigarette smoke. We hypothesized that systemic inflammatory signals in genome-wide blood gene expression can identify clinically important COPD-related disease subtypes, and we leveraged pre-existing gene interaction networks to guide unsupervised clustering of blood microarray expression data. Using network-informed non-negative matrix factorization, we analyzed genome-wide blood gene expression from 229 former smokers in the ECLIPSE Study, and we identified novel, clinically relevant molecular subtypes of COPD. These network-informed clusters were more stable and more strongly associated with measures of lung structure and function than clusters derived from a network-naïve approach, and they were associated with subtype-specific enrichment for inflammatory and protein catabolic pathways. These clusters were successfully reproduced in an independent sample of 135 smokers from the COPDGene Study.

SUBMITTER: Chang Y 

PROVIDER: S-EPMC4761317 | biostudies-literature | 2016 Mar

REPOSITORIES: biostudies-literature

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COPD subtypes identified by network-based clustering of blood gene expression.

Chang Yale Y   Glass Kimberly K   Liu Yang-Yu YY   Silverman Edwin K EK   Crapo James D JD   Tal-Singer Ruth R   Bowler Russ R   Dy Jennifer J   Cho Michael M   Castaldi Peter P  

Genomics 20160108 2-3


One of the most common smoking-related diseases, chronic obstructive pulmonary disease (COPD), results from a dysregulated, multi-tissue inflammatory response to cigarette smoke. We hypothesized that systemic inflammatory signals in genome-wide blood gene expression can identify clinically important COPD-related disease subtypes, and we leveraged pre-existing gene interaction networks to guide unsupervised clustering of blood microarray expression data. Using network-informed non-negative matrix  ...[more]

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