Journal article
Splice site identification using probabilistic parameters and SVM classification
AKMA Baten, BCH Chang, SK Halgamuge, Jason Li
BMC Bioinformatics | BioMed Central | Published : 2006
Open access
Abstract
BACKGROUND: Recent advances and automation in DNA sequencing technology has created a vast amount of DNA sequence data. This increasing growth of sequence data demands better and efficient analysis methods. Identifying genes in this newly accumulated data is an important issue in bioinformatics, and it requires the prediction of the complete gene structure. Accurate identification of splice sites in DNA sequences plays one of the central roles of gene structural prediction in eukaryotes. Effective detection of splice sites requires the knowledge of characteristics, dependencies, and relationship of nucleotides in the splice site surrounding region. A higher-order Markov model is generally re..
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