Title :
Translation initiation sites prediction with mixture Gaussian models in human cDNA sequences
Author :
Li, Guoliang ; Leong, Tze-Yun ; Zhang, Louxin
Author_Institution :
Med. Comput. Lab., Nat. Univ. of Singapore, Singapore
Abstract :
Translation initiation sites (TISs) are important signals in cDNA sequences. Many research efforts have tried to predict TISs in cDNA sequences. In this paper, we propose to use mixture Gaussian models for TIS prediction. Using both local features and some features generated from global measures, the proposed method predicts TISs with a sensitivity of 98 percent and a specificity of 93.6 percent. Our method outperforms many other existing methods in sensitivity while keeping specificity high. We attribute the improvement in sensitivity to the nature of the global features and the mixture Gaussian models.
Keywords :
DNA; Gaussian processes; biology computing; feature extraction; pattern classification; bioinformatics; feature extraction; human cDNA sequences; mixture Gaussian models; translation initiation sites prediction; Biological system modeling; Biology computing; DNA; Feature extraction; Humans; Predictive models; Proteins; RNA; Sequences; Statistical analysis; Index Terms- Bioinformatics; classification; feature extraction; mixture Gaussian model; translation initiation sites.;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2005.133