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
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William Chad Young  University of Washington, Department of Statistics, Box 354322, Seattle, WA 981954322, United States (email)
Adrian E. Raftery  University of Washington, Department of Statistics, Box 354322, Seattle, WA 981954322, United States (email)
Ka Yee Yeung  University of Washington, Institute of Technology, Box 358426, 1900 Commerce Street, Tacoma, WA 984023100, United States (email)
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