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The use of microarray analysis of gene signalling to determine heterogeneity of COPD exacerbation phenotypes
K. Bolger (Dublin, Ireland)
Source:
ERS Lung Science Conference 2016
Number:
23
Disease area:
Airway diseases
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K. Bolger (Dublin, Ireland). The use of microarray analysis of gene signalling to determine heterogeneity of COPD exacerbation phenotypes. ERS Lung Science Conference 2016
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