Statistical inference of protein structural alignments using information and compression.
| Author | |
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| Abstract | :
Structural molecular biology depends crucially on computational techniques that compare protein three-dimensional structures and generate structural alignments (the assignment of one-to-one correspondences between subsets of amino acids based on atomic coordinates). Despite its importance, the structural alignment problem has not been formulated, much less solved, in a consistent and reliable way. To overcome these difficulties, we present here a statistical framework for the precise inference of structural alignments, built on the Bayesian and information-theoretic principle of Minimum Message Length (MML). The quality of any alignment is measured by its explanatory power-the amount of lossless compression achieved to explain the protein coordinates using that alignment. |
| Year of Publication | :
2017
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| Journal | :
Bioinformatics (Oxford, England)
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| Volume | :
33
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| Issue | :
7
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| Number of Pages | :
1005-1013
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| Date Published | :
2017
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| ISSN Number | :
1367-4803
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| URL | :
https://academic.oup.com/bioinformatics/article-lookup/doi/10.1093/bioinformatics/btw757
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| DOI | :
10.1093/bioinformatics/btw757
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| Short Title | :
Bioinformatics
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