Epigenome-wide association studies identify DNA methylation associated with kidney function
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Audrey Y. Chu | M. Fornage | L. Liang | D. Levy | J. Pankow | E. Boerwinkle | A. Köttgen | Qiong Yang | Shih-Jen Hwang | J. Coresh | C. Fox | R. Joehanes | Chengxiang Qiu | A. Chu | M. Grams | Y. Ko | A. Tin | K. Suszták | Chunyu Liu | C. Yao | P. Schlosser | Caroline Gluck | Caroline A. Gluck | J. Coresh | Pascal Schlosser | D. Levy
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