Genotyping and population characteristics of the China Kadoorie Biobank
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Warren W. Kretzschmar | P. Donnelly | R. Collins | Hongbing Shen | R. Peto | Zhengming Chen | Yu Guo | Liming Li | P. Lyons | A. Edris | M. Ansari | Canqing Yu | I. Millwood | R. Walters | J. Lv | Kuang Lin | N. Cai | C. Nie | W. Kretzschmar | D. Schmidt Valle | A. Hacker | D. Avery | Xin Jin | Hannah Fry | Michael R Hill | Xun Xu | Pandora McDonnell | Na Cai | Hongbing Shen | Xin Jin | Chao Nie | R.J. Clarke | C. K. Biobank | Dan Schmidt Valle | China Kadoorie | Biobank Collaborative Group | R. Clarke | H. Fry
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