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Identification of asthma clusters in two independent Korean adult asthma cohorts
Tae-Bum Kim, An-Soo Jang, Hyouk-Soo Kwon, Jong-Sook Park, Yoon-Seok Chang, Sang-Heon Cho, Byoung Whui Choi, Jung-Won Park, Dong-Ho Nam, Ho-Joo Yoon, Young-Joo Cho, Hee-Bom Moon, You Sook Cho, Choon-Sik Park, for the COREA Study Group
Source:
Eur Respir J 2013; 41: 1308-1314
Journal Issue:
June
Disease area:
Airway diseases
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Tae-Bum Kim, An-Soo Jang, Hyouk-Soo Kwon, Jong-Sook Park, Yoon-Seok Chang, Sang-Heon Cho, Byoung Whui Choi, Jung-Won Park, Dong-Ho Nam, Ho-Joo Yoon, Young-Joo Cho, Hee-Bom Moon, You Sook Cho, Choon-Sik Park, for the COREA Study Group. Identification of asthma clusters in two independent Korean adult asthma cohorts. Eur Respir J 2013; 41: 1308-1314
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