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Protein Fold Recognition Using Segmentation-Based Feature Extraction Model

机译:使用基于分段的特征提取模型的蛋白质折叠识别

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Protein Fold recognition (PFR) is considered as an important step towards protein structure prediction. It also provides significant information about general functionality of a given protein. Despite all the efforts have been made, PFR still remains unsolved. It is shown that appropriately extracted features from the physicochemical-based attributes of the amino acids plays crucial role to address this problem. In this study, we explore 55 different physicochemical-based attributes using two novel feature extraction methods namely segmented distribution and segmented density. Then, by proposing an ensemble of different classifiers based on the AdaBoost.Ml and Support Vector Machine (SVM) classifiers which are diversely trained on different combinations of features extracted from these attributes, we outperform similar studies found in the literature for over 2% for the PFR task.
机译:蛋白质折叠识别(PFR)被认为是促进蛋白质结构预测的重要步骤。它还提供有关给定蛋白质的一般功能的重要信息。尽管已经完成了所有努力,但PFR仍然仍未解决。结果表明,来自氨基酸的物理化学的属性的适当提取的特征起到解决这个问题的至关重要作用。在这项研究中,我们使用两种新颖特征提取方法探索55种不同的基于物理化学的属性,即分段分布和分段密度。然后,通过提出基于ADABOOST.ML和支持向量机(SVM)分类器的不同分类器的集合,这些分类器是在从这些属性中提取的不同特征的不同组合上传播的分类器,我们优于文献中发现的类似研究超过2% PFR任务。

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