首页> 外文期刊>Journal of Theoretical Biology >Predicting the cofactors of oxidoreductases based on amino acid composition distribution and Chou's amphiphilic pseudo-amino acid composition.
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Predicting the cofactors of oxidoreductases based on amino acid composition distribution and Chou's amphiphilic pseudo-amino acid composition.

机译:根据氨基酸组成分布和周氏两亲性假氨基酸组成预测氧化还原酶的辅因子。

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Predicting the cofactors of oxidoreductases plays an important role in inferring their catalytic mechanism. Feature extraction is a critical part in the prediction systems, requiring raw sequence data to be transformed into appropriate numerical feature vectors while minimizing information loss. In this paper, we present an amino acid composition distribution method for extracting useful features from primary sequence, and the k-nearest neighbor was used as the classifier. The overall prediction accuracy evaluated by the 10-fold cross-validation reached 90.74%. Comparing our method with other eight feature extraction methods, the improvement of the overall prediction accuracy ranged from 3.49% to 15.74%. Our experimental results confirm that the method we proposed is very useful and may be used for other bioinformatical predictions. Interestingly, when features extracted by our method and Chou's amphiphilic pseudo-amino acid composition were combined, the overall accuracy could reach 92.53%.
机译:预测氧化还原酶的辅因子在推断其催化机理中起重要作用。特征提取是预测系统中的关键部分,需要将原始序列数据转换为适当的数字特征向量,同时将信息损失降至最低。在本文中,我们提出了一种从一级序列中提取有用特征的氨基酸组成分布方法,并以k最近邻作为分类器。通过10倍交叉验证评估的总体预测准确性达到90.74%。将我们的方法与其他八种特征提取方法进行比较,总体预测准确性的提高范围为3.49%至15.74%。我们的实验结果证实,我们提出的方法非常有用,可用于其他生物信息学预测。有趣的是,将我们的方法提取的特征与Chou的两亲性假氨基酸组成相结合时,总体准确度可达到92.53%。

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