ecSP) of a protein has a significant performance for the tert'/> Predicting secondary structure of a protein using MIRA algorithm based on tetrapeptide structural words
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Predicting secondary structure of a protein using MIRA algorithm based on tetrapeptide structural words

机译:基于四肽结构词的MIRA算法预测蛋白质的二级结构

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The secondary structure prediction (SecSP) of a protein has a significant performance for the tertiary structure model in Bioinformatics. The formation of the regions of coil (c)-sheets in the secondary structure (SecSt) of a protein, comprises of long-term of associations among residues. Specifically, the prediction of a random coil chemical shift is generally used to find the secondary structure elements in a folded state and disclose the elements in an unfolded state of a protein. The identification of these regions may lead to the vital biological analysis. Although numerous algorithms are available and worked with very large datasets for SecSP, the precision level is not in the upper limit. Thus, in this paper, a Margin Infused Relaxed Algorithm (MIRA) is employed to anticipate the SecSP of a protein by increasing the diversity of structural words by improving the accuracy limit. Also, the binomial distribution is employed to optimize tetrapeptide structural words. Benchmark datasets such as CullPDB and CB513 are used in this work to analyze the projected approach. By employing the 10-fold cross validation method, the overall precision of the projected approach is 90.76% in projecting the SecSP of a protein and the prediction accuracy of a random coil is 88.45%. The proposed MIRA algorithm was compared with well-known 9 existing approaches. The final accuracy results illustrated that the projected algorithm provides improved results than the other popular existing algorithms.
机译:二级结构预测(S \ n ec \ nSP)对于生物信息学中的三级结构模型具有显着的性能。二级结构中线圈(c)-片的区域的形成(S \ n ec\nS\n t \ n)由残基之间的长期关联组成。具体地,随机线圈化学位移的预测通常用于发现处于折叠状态的二级结构元素并公开处于蛋白质的未折叠状态的元素。这些区域的识别可能导致重要的生物学分析。尽管有许多可用的算法,并且可以用于S \ n ec\nSP,精度级别不在上限内。因此,在本文中,采用了余量注入松弛算法(MIRA)来预测S \ n ec \ nSP。同样,采用二项式分布来优化四肽结构词。基准数据集(例如CullPDB和CB513)用于这项工作中以分析计划的方法。通过采用10倍交叉验证方法,在投影蛋白质的SecSP时,投影方法的总体精度为90.76%,随机线圈的预测精度为88.45%。将提出的MIRA算法与9种已知的现有方法进行了比较。最终精度结果表明,与其他流行的现有算法相比,该投影算法提供了改进的结果。

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