| Literature DB >> 26395457 |
Sina A Gharib1, Daan W Loth2, María Soler Artigas3, Timothy P Birkland4, Jemma B Wilk5, Louise V Wain3, Jennifer A Brody6, Ma'en Obeidat7, Dana B Hancock8, Wenbo Tang9, Rajesh Rawal10, H Marike Boezen11, Medea Imboden12, Jennifer E Huffman13, Lies Lahousse14, Alexessander C Alves15, Ani Manichaikul16, Jennie Hui17, Alanna C Morrison18, Adaikalavan Ramasamy19, Albert Vernon Smith20, Vilmundur Gudnason20, Ida Surakka21, Veronique Vitart13, David M Evans22, David P Strachan23, Ian J Deary24, Albert Hofman25, Sven Gläser26, James F Wilson27, Kari E North28, Jing Hua Zhao29, Susan R Heckbert30, Deborah L Jarvis31, Nicole Probst-Hensch12, Holger Schulz32, R Graham Barr33, Marjo-Riitta Jarvelin34, George T O'Connor35, Mika Kähönen36, Patricia A Cassano37, Pirro G Hysi38, Josée Dupuis39, Caroline Hayward13, Bruce M Psaty40, Ian P Hall41, William C Parks42, Martin D Tobin3, Stephanie J London43.
Abstract
Chronic respiratory disorders are important contributors to the global burden of disease. Genome-wide association studies (GWASs) of lung function measures have identified several trait-associated loci, but explain only a modest portion of the phenotypic variability. We postulated that integrating pathway-based methods with GWASs of pulmonary function and airflow obstruction would identify a broader repertoire of genes and processes influencing these traits. We performed two independent GWASs of lung function and applied gene set enrichment analysis to one of the studies and validated the results using the second GWAS. We identified 131 significantly enriched gene sets associated with lung function and clustered them into larger biological modules involved in diverse processes including development, immunity, cell signaling, proliferation and arachidonic acid. We found that enrichment of gene sets was not driven by GWAS-significant variants or loci, but instead by those with less stringent association P-values. Next, we applied pathway enrichment analysis to a meta-analyzed GWAS of airflow obstruction. We identified several biologic modules that functionally overlapped with those associated with pulmonary function. However, differences were also noted, including enrichment of extracellular matrix (ECM) processes specifically in the airflow obstruction study. Network analysis of the ECM module implicated a candidate gene, matrix metalloproteinase 10 (MMP10), as a putative disease target. We used a knockout mouse model to functionally validate MMP10's role in influencing lung's susceptibility to cigarette smoke-induced emphysema. By integrating pathway analysis with population-based genomics, we unraveled biologic processes underlying pulmonary function traits and identified a candidate gene for obstructive lung disease.Entities:
Mesh:
Year: 2015 PMID: 26395457 PMCID: PMC4643644 DOI: 10.1093/hmg/ddv378
Source DB: PubMed Journal: Hum Mol Genet ISSN: 0964-6906 Impact factor: 6.150