Abstract
Despite substantial recent progress, gene structural prediction remains a challenging problem in bioinformatics. The importance of a detailed understanding of gene splicing can be underlined by noting that ∼10-15% of human genetic diseases are caused by mutations that affect splice junctions. We briefly introduce the problem, mention the existing ap-proaches to gene structural annotation and provide overview of current methods. In particular, this paper explains why homology-based gene structural prediction appears to be more difficult then it might seem. The problem of splice sites (SSs) sensor design is overviewed with rigorous comparison of key designs. Finally, a discussion of methods in ab initio gene structural prediction is accompanied by an extensive comparative performance study. We make certain conclusions regarding the current state of the art and try to speculate about future research directions. Applications used to evaluate performance characteristics for various gene structur al prediction programs are available online at http://www. wyomingbioinformatics.org/∼achurban/.
Keywords: Gene Structural Prediction, Non-Canonical Gene Set, Weight Matrix Method (WMM), Maximal Dependence Decomposition (MDD), translation initiation sites (TISs)
Current Genomics
Title: Contemporary Progress in Gene Structure Prediction
Volume: 7 Issue: 5
Author(s): Alexander Churbanov
Affiliation:
Keywords: Gene Structural Prediction, Non-Canonical Gene Set, Weight Matrix Method (WMM), Maximal Dependence Decomposition (MDD), translation initiation sites (TISs)
Abstract: Despite substantial recent progress, gene structural prediction remains a challenging problem in bioinformatics. The importance of a detailed understanding of gene splicing can be underlined by noting that ∼10-15% of human genetic diseases are caused by mutations that affect splice junctions. We briefly introduce the problem, mention the existing ap-proaches to gene structural annotation and provide overview of current methods. In particular, this paper explains why homology-based gene structural prediction appears to be more difficult then it might seem. The problem of splice sites (SSs) sensor design is overviewed with rigorous comparison of key designs. Finally, a discussion of methods in ab initio gene structural prediction is accompanied by an extensive comparative performance study. We make certain conclusions regarding the current state of the art and try to speculate about future research directions. Applications used to evaluate performance characteristics for various gene structur al prediction programs are available online at http://www. wyomingbioinformatics.org/∼achurban/.
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Cite this article as:
Churbanov Alexander, Contemporary Progress in Gene Structure Prediction, Current Genomics 2006; 7 (5) . https://dx.doi.org/10.2174/138920206778604395
DOI https://dx.doi.org/10.2174/138920206778604395 |
Print ISSN 1389-2029 |
Publisher Name Bentham Science Publisher |
Online ISSN 1875-5488 |
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