Cardioviral RNA structure logo analysis: entropy, correlations, and prediction

被引:0
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作者
Xiao-Zhou Chen
Huai Cao
Wen Zhang
Ci-Quan Liu
机构
[1] Yunnan University,Modern Biology Research Center
[2] Yunnan Nationalities University,School of Mathematics and Computer Science
[3] Kunming Medical College,Department of Cell Biology and Genetics
[4] Chinese Academy of Sciences,Kunming Institute of Zoology
[5] Peking University,Theotetical Biology Research Center
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RNA structure logo; Entropy; Correlations; Predictive motif;
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摘要
In recent years, there has been an increased number of sequenced RNAs leading to the development of new RNA databases. Thus, predicting RNA structure from multiple alignments is an important issue to understand its function. Since RNA secondary structures are often conserved in evolution, developing methods to identify covariate sites in an alignment can be essential for discovering structural elements. Structure Logo is a technique established on the basis of entropy and mutual information measured to analyze RNA sequences from an alignment. We proposed an efficient Structure Logo approach to analyze conservations and correlations in a set of Cardioviral RNA sequences. The entropy and mutual information content were measured to examine the conservations and correlations, respectively. The conserved secondary structure motifs were predicted on the basis of the conservation and correlation analyses. Our predictive motifs were similar to the ones observed in the viral RNA structure database, and the correlations between bases also corresponded to the secondary structure in the database.
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页码:145 / 159
页数:14
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