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Value of Genetic Information for Beef Cattle at the Feedlot Stage

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  • Thompson, Nathanael M.
  • DeVuyst, Eric A.
  • Brorsen, B. Wade
  • Lusk, Jayson L.

Abstract

We estimate the value of using information from genetic marker panels for seven economically-relevant feedlot cattle traits. At the current cost of genetic testing it would not pay to sort cattle by optimal days-on-feed, but it could pay to use the genetic tests for breeding cattle selection.

Suggested Citation

  • Thompson, Nathanael M. & DeVuyst, Eric A. & Brorsen, B. Wade & Lusk, Jayson L., 2014. "Value of Genetic Information for Beef Cattle at the Feedlot Stage," 2014 Annual Meeting, February 1-4, 2014, Dallas, Texas 162431, Southern Agricultural Economics Association.
  • Handle: RePEc:ags:saea14:162431
    DOI: 10.22004/ag.econ.162431
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