Bronchial gene expression signature associated with rate of subsequent FEV(1) decline in individuals with and at risk of COPD

支气管基因表达特征与慢性阻塞性肺疾病患者及高危人群后续FEV1下降率相关

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Abstract

BACKGROUND: COPD is characterised by progressive lung function decline. Leveraging prior work demonstrating bronchial airway COPD-associated gene expression alterations, we sought to determine if there are alterations associated with differences in the rate of FEV(1) decline. METHODS: We examined gene expression among ever smokers with and without COPD who at baseline had bronchial brushings profiled by Affymetrix microarrays and had longitudinal lung function measurements (n=134; mean follow-up=6.38±2.48 years). Gene expression profiles associated with the rate of FEV(1) decline were identified by linear modelling. RESULTS: Expression differences in 171 genes were associated with rate of FEV(1) decline (false discovery rate <0.05). The FEV(1) decline signature was replicated in an independent dataset of bronchial biopsies from patients with COPD (n=46; p=0.018; mean follow-up=6.76±1.32 years). Genes elevated in individuals with more rapid FEV(1) decline are significantly enriched among the genes altered by modulation of XBP1 in two independent datasets (Gene Set Enrichment Analysis (GSEA) p<0.05) and are enriched in mucin-related genes (GSEA p<0.05). CONCLUSION: We have identified and replicated an airway gene expression signature associated with the rate of FEV(1) decline. Aspects of this signature are related to increased expression of XBP1-regulated genes, a transcription factor involved in the unfolded protein response, and genes related to mucin production. Collectively, these data suggest that molecular processes related to the rate of FEV(1) decline can be detected in airway epithelium, identify a possible indicator of FEV(1) decline and make it possible to detect, in an early phase, ever smokers with and without COPD most at risk of rapid FEV(1) decline.

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