Secondary structure computer prediction of the poliovirus 5' non-coding region is improved by a genetic algorithm

Comparison of the secondary structure of the 5' non-coding region of poliovirus 3 RNA derived from the genetic algorithm with the model of Skinner et al. (J. Mol. Biol., 207, 379–392, 1989) demonstrates many of the confirmed structural elements. The genetic algorithm (Shapiro and Navetta, J. Su...

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Published inBioinformatics Vol. 13; no. 1; pp. 1 - 12
Main Authors Currey, Kathleen M., Shapiro, Bruce A.
Format Journal Article
LanguageEnglish
Published Washington, DC Oxford University Press 01.02.1997
Oxford
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ISSN1367-4803
0266-7061
1460-2059
1460-2059
DOI10.1093/bioinformatics/13.1.1

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Summary:Comparison of the secondary structure of the 5' non-coding region of poliovirus 3 RNA derived from the genetic algorithm with the model of Skinner et al. (J. Mol. Biol., 207, 379–392, 1989) demonstrates many of the confirmed structural elements. The genetic algorithm (Shapiro and Navetta, J. Supercomput., 8, 195–201, 1994) generates a population of all possible stems, then mixes, combines, and recombines these stems in multiple iterations on a massively parallel computer, ultimately selecting a most fit structure based on its energy. The secondary structure of the region containing the determinants of neurovirulence was better predicted using the genetic algorithm, whereas the dynamic programing algorithm (Zuker, Science, 244, 48–52, 1989) required phylogenetic comparative sequence analysis to arrive at the correct conclusion. In addition, artificial mutations were introduced throughout this region of the genome and although rearrangements in structure may occur, many structures persisted, suggesting that the given structures thus selected may have evolved to withstand isolated mutations. The genetic algorithm-derived structure for the 5' non-coding region compares favorably with the biological data and functions previously described, and contains all of the ‘persistent’ structures, suggesting also that the persistence factor may be an aid to validating structures.
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ISSN:1367-4803
0266-7061
1460-2059
1460-2059
DOI:10.1093/bioinformatics/13.1.1