PECB: prediction of enzyme catalytic residues based on Naive Bayes classification
by Kunpeng Zhang, Yun Xu, Guoliang Chen
International Journal of Bioinformatics Research and Applications (IJBRA), Vol. 4, No. 3, 2008

Abstract: In the post-genome era, huge numbers of protein structures accumulate, but little is known about their function. It is time consuming and labour intensive to investigate them, e.g., enzyme catalytic properties, through in vivo or in vitro work. So in silico predictions could be a promising strategy to greatly shrink the list of potential targets. This work incorporated both structural and physico-chemical information into a Naive Bayes classification system, and gained much better performance. The ten-fold cross validation results of this method could reach 88.6% of sensitivity and 93.7% of specificity. The improvement of prediction accuracy is detailed in this paper. The PECB is also applied to predict other important sites.

Online publication date: Thu, 17-Jul-2008

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