| Literature DB >> 11928478 |
Donald J Patterson1, Ken Yasuhara, Walter L Ruzzo.
Abstract
Accurate splice site prediction is a critical component of any computational approach to gene prediction in higher organisms. Existing approaches generally use sequence-based models that capture local dependencies among nucleotides in a small window around the splice site. We present evidence that computationally predicted secondary structure of moderate length pre-mRNA subsequencies contains information that can be exploited to improve acceptor splice site prediction beyond that possible with conventional sequence-based approaches. Both decision tree and support vector machine classifiers, using folding energy and structure metrics characterizing helix formation near the splice site, achieve a 5-10% reduction in error rate with a human data set. Based on our data, we hypothesize that acceptors preferentially exhibit short helices at the splice site.Entities:
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Year: 2002 PMID: 11928478
Source DB: PubMed Journal: Pac Symp Biocomput ISSN: 2335-6928