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Exploring potential discriminatory information embedded in PSSM to enhance protein structural class prediction accuracy

机译:探索PSSM中嵌入的潜在歧视信息,以提高蛋白质结构类别的预测准确性

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摘要

Determining the structural class of a given protein can provide important information about its functionality and its general tertiary structure. In the last two decades, the protein structural class prediction problem has attracted tremendous attention and its prediction accuracy has been significantly improved. Features extracted from the Position Specific Scoring Matrix (PSSM) have played an important role to achieve this enhancement. However, this information has not been adequately explored since the protein structural class prediction accuracy relying on PSSM for feature extraction still remains limited. In this study, to explore this potential, we propose segmentation-based feature extraction technique based on the concepts of amino acids' distribution and auto covariance. By applying a Support Vector Machine (SVM) to our extracted features, we enhance protein structural class prediction accuracy up to 16% over similar studies found in the literature. We achieve over 90% and 80% prediction accuracies for 25PDB and 1189 benchmarks respectively by solely relying on the PSSM for feature extraction.
机译:确定给定蛋白质的结构类别可以提供有关其功能和一般三级结构的重要信息。在过去的二十年中,蛋白质结构类别的预测问题引起了极大的关注,其预测准确性得到了显着提高。从位置特定评分矩阵(PSSM)中提取的特征在实现此增强功能方面发挥了重要作用。但是,由于依赖PSSM进行特征提取的蛋白质结构类别预测准确性仍然受到限制,因此尚未充分探索此信息。在这项研究中,为了探索这种潜力,我们基于氨基酸分布和自协方差的概念提出了基于分割的特征提取技术。通过对提取的特征应用支持向量机(SVM),与文献中的类似研究相比,我们将蛋白质结构分类的预测准确性提高了16%。仅依靠PSSM进行特征提取,就可以分别为25PDB和1189基准达到90%和80%以上的预测精度。

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