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Prediction of RNA Secondary Structure Based on Particle Swarm Optimization 被引量:1

Prediction of RNA Secondary Structure Based on Particle Swarm Optimization
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摘要 A novel method for the prediction of RNA secondary structure was proposed based on the particle swarm optimization(PSO). PSO is known to be effective in solving many different types of optimization problems and known for being able to approximate the global optimal results in the solution space. We designed an efficient objective function according to the minimum free energy, the number of selected stems and the average length of selected stems. We calculated how many legal stems there were in the sequence, and selected some of them to obtain an optimal result using PSO in the right of the objective function. A method based on the improved particle swarm optimization(IPSO) was proposed to predict RNA secondary structure, which consisted of three stages. The first stage was applied to encoding the source sequences, and to exploring all the legal stems. Then, a set of encoded stems were created in order to prepare input data for the second stage. In the second stage, IPSO was responsible for structure selection. At last, the optimal result was obtained from the secondary structures selected via IPSO. Nine sequences from the comparative RNA website were selected for the evaluation of the proposed method. Compared with other six methods, the proposed method decreased the complexity and enhanced the sensitivity and specificity on the basis of the experiment results. A novel method for the prediction of RNA secondary structure was proposed based on the particle swarm optimization(PSO). PSO is known to be effective in solving many different types of optimization problems and known for being able to approximate the global optimal results in the solution space. We designed an efficient objective function according to the minimum free energy, the number of selected stems and the average length of selected stems. We calculated how many legal stems there were in the sequence, and selected some of them to obtain an optimal result using PSO in the right of the objective function. A method based on the improved particle swarm optimization(IPSO) was proposed to predict RNA secondary structure, which consisted of three stages. The first stage was applied to encoding the source sequences, and to exploring all the legal stems. Then, a set of encoded stems were created in order to prepare input data for the second stage. In the second stage, IPSO was responsible for structure selection. At last, the optimal result was obtained from the secondary structures selected via IPSO. Nine sequences from the comparative RNA website were selected for the evaluation of the proposed method. Compared with other six methods, the proposed method decreased the complexity and enhanced the sensitivity and specificity on the basis of the experiment results.
出处 《Chemical Research in Chinese Universities》 SCIE CAS CSCD 2011年第1期108-112,共5页 高等学校化学研究(英文版)
基金 Supported by the National Natural Science Foundation of China(No60971089)
关键词 RNA RNA secondary structure Minimum flee energy Particle swarm optimization RNA RNA secondary structure Minimum flee energy Particle swarm optimization
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  • 1Jun H.L.,Hua D.S.,Fei Y.W.,J.Chinese Journal of Nature,2003,25(6),314.
  • 2Gao Z.L.,Sheng J.,Hao S.M.,Liu D.,Liu X.Y.,Ji H.B.,Li J.,Zhang X.P.,Chem.Res.Chinese Universities,2008,24(1),75.
  • 3Ennysr D.,J.Nucleic Acids Res.,1994,22,2079.
  • 4Sakakbara Y.,Browm M.,Hughery R.,Lecture Notes in Computer Science,1994,807,289.
  • 5Stéfan E.,Fariza T.,BMC Bioinformatics,2007,8,464.
  • 6Zuker M.,Stiegler P.,Nucleic Acids Res.,1981,9,133.
  • 7Rivas E.,Eddy S.R.A.,J.Mol.Bio.,1999,285,2053.
  • 8Witwer C.,Hofacker I.L.,Stadler P.E.,IEEE Trans.,2004,1(2),66.
  • 9Gorodkin J.,Sticklin S.L.,Stormo G.D.,Nucleic Acids Res.,2001,29,2135.
  • 10Wu J.L.,Jia J.W.,Bioinformatics.,1998,14,700.

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  • 1SanbrookJ,FritschEF,ManiatisT.分子克隆实验指南[M].3版.北京:科学出版社,2005.
  • 2王桂玲,刘戈飞,黄东阳.从动物组织提取高质量总RNA方法的改进[J].生物技术通报,2003,14(6):512-514.
  • 3Hayashida K, Sano M, Ohsawa I, et al. Inhalation of hydrogen gas reduces infarct size in the rat mode! of myocardial ischemia reper- fusion injury[ J]. BiochemBiophys Res Commum, 2008,373 ( 1 ) : 30-35.
  • 4Butt R H, Pfeifer T A, Delaney A, et al.Enabling coupled quantita- tive genomies and proteomies analyses from rat spinal cord samples [ J] .Mol Cell Proteomics ,2007,6(9) : 1574-1588.
  • 5Robert E. Farrell. RNA Methodologies : A Laboratory Guide for Iso-lation and Characterization [ M ].3版.北京:化学工业出版社,2007.
  • 6吴艳华,李杰,高岚,魏巍,刘任.生物组织总RNA的高效提取[J].兰州大学学报(自然科学版),2008,44(2):144-146. 被引量:11
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