- Author:
Wei XUE
1
;
Xiongfei WANG
1
;
Nan ZHAO
1
;
Rongli YANG
1
;
Xiaoyu HONG
1
Author Information
- Publication Type:Journal Article
- Keywords: Adaboost; K-nearest neighbor; basic local alignment search tool (Blast); protein sequence characteristics; subcellular locations
- From: Chinese Journal of Biotechnology 2017;33(4):683-691
- CountryChina
- Language:Chinese
- Abstract: Adaboost algorithm with improved K-nearest neighbor classifiers is proposed to predict protein subcellular locations. Improved K-nearest neighbor classifier uses three sequence feature vectors including amino acid composition, dipeptide and pseudo amino acid composition of protein sequence. K-nearest neighbor uses Blast in classification stage. The overall success rates by the jackknife test on two data sets of CH317 and Gram1253 are 92.4% and 93.1%. Adaboost algorithm with the novel K-nearest neighbor improved by Blast is an effective method for predicting subcellular locations of proteins.