"Comparison of Response Surface Methodology and Artificial Neural Network in Predicting the Microwave-Assisted Extraction Procedure to Determine Zinc in Fish Muscles"
written by Mansour Ghaffari Moghaddam, Mostafa Khajeh,
published by Food and Nutrition Sciences, Vol.2 No.8, 2011
has been cited by the following article(s):
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1963