Meta‐analysis of genome‐wide association from genomic prediction models
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S. D. Shackelford | Y. L. Bernal Rubio | J. Steibel | R. Bates | C. Ernst | G. Rohrer | D. Nonneman | S. Shackelford | T. Wheeler | R. Cantet | A. King | R. Cantet | J. L. Gualdrón Duarte | R. O. Bates | C. W. Ernst | D. Nonneman | G. A. Rohrer | A. King | T. L. Wheeler | R. J. C. Cantet | J. P. Steibel | J. L. G. Duarte | Y. L. B. Rubio | Andy King
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