"Fetal distress prediction using discriminant analysis, decision tree, and artificial neural network"
written by Mei-Ling Huang, Yung-Yan Hsu,
published by Journal of Biomedical Science and Engineering, Vol.5 No.9, 2012
has been cited by the following article(s):
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