Bayesian approach in estimating risk determinants of infectious diseases
PUBLICATION YEAR: 2009
TITLE AUTHOR(S): T.Mzolo
KEYWORDS: INFECTION CONTROL, INFECTIOUS DISEASES
DEPARTMENT: Public Health, Societies and Belonging (HSC)
Print: HSRC Library: shelf number 5979
HANDLE: 20.500.11910/4693
URI: http://hdl.handle.net/20.500.11910/4693
If you would like to obtain a copy of this Research Output, please contact Hanlie Baudin at researchoutputs@hsrc.ac.za.
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