Prediction of metalloproteinase family based on the concept of Chou’s pseudo amino acid composition using a machine learning approach

Majid Mohammad Beigi1, Mohaddeseh Behjati2, Hassan Mohabatkar3,4
1Dept. of Biomedical Engineering; Faculty of Engineering; Univ. of Isfahan; Isfahan Iran
2Isfahan University of Medical Sciences,#R##N#Isfahan, Iran.
3University of Isfahan
4College of Sciences, Shiraz University

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