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   Predicting caspase substrate cleavage sites based on a hybrid SVM-PSSM method  
   
نویسنده li d. ,jiang z. ,yu w. ,du l.
منبع protein and peptide letters - 2010 - دوره : 17 - شماره : 12 - صفحه:1566 -1571
چکیده    Caspases play an important role in many critical non-apoptosis processes by cleaving relevant substrates at cleavage sites. identification of caspase substrate cleavage sites is the key to understand these processes. this paper proposes a hybrid method using support vector machine (svm) in conjunction with position specific scoring matrices (pssm) for caspase substrate cleavage sites prediction. three encoding schemes including orthonormal binary encoding,blosum62 matrix profile and pssm profile of neighborhood surrounding the substrate cleavage sites were regarded as the input of svm. the 10-fold cross validation results demonstrate that the svm-pssm method performs well with an overall accuracy of 97.619% on a larger dataset. © 2010 bentham science publishers ltd.
کلیدواژه Caspase; PSSM profiles; Substrate cleavage sites prediction; SVM
آدرس department of computer science and technology,east china normal university, China, department of computer science and technology,east china normal university, China, department of computer science and technology,east china normal university, China, china petroleum engineering southwest company, China
 
     
   
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