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Mathematical Biosciences and Engineering (MBE)
 

A posterior probability approach for gene regulatory network inference in genetic perturbation data
Pages: 1241 - 1251, Issue 6, December 2016

doi:10.3934/mbe.2016041      Abstract        References        Full text (540.8K)                  Related Articles

William Chad Young - University of Washington, Department of Statistics, Box 354322, Seattle, WA 98195-4322, United States (email)
Adrian E. Raftery - University of Washington, Department of Statistics, Box 354322, Seattle, WA 98195-4322, United States (email)
Ka Yee Yeung - University of Washington, Institute of Technology, Box 358426, 1900 Commerce Street, Tacoma, WA 98402-3100, United States (email)

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