用SOM和SOGR算法预测蛋白质二级结构

A. Atar, O. Ersoy, L. Ozyilmaz
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引用次数: 0

摘要

为了预测蛋白质的生物学功能,有必要了解蛋白质的一级和二级结构。神经网络是一种有效的蛋白质二级结构预测方法。本文研究了自组织映射(SOM)算法和自组织全局排序(SOGR)算法在不同的氨基酸序列窗口大小下,从蛋白质一级结构预测蛋白质二级结构。在本研究中,所有数据均来自PDB (protein data bank)。然后,将字母数据转换为数字数据,并用人工神经网络进行处理。使用了17种不同类型的数据和若干滑动窗口长度。总的来说,结果非常令人满意,SOGR具有最高的测试精度和更快的学习速度
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Prediction of protein secondary structure by SOM and SOGR algorithms
It is necessary to know both the primary and secondary structure of proteins in order to predict their biological functions. Neural networks are effective for secondary structure prediction of proteins. In this study, the self-organizing map (SOM) algorithm, and the self-organizing global ranking (SOGR) algorithm were investigated with different window sizes of amino acid sequences to predict the protein secondary structure from the protein primary structure. In this study, all of the data were obtained from PDB (protein data bank). Then, the letter data were converted to numerical data and processed with ANNs. 17 different types of data with a number of sliding window lengths were used. In general, results were very satisfactory, and the SOGR had the highest testing accuracies and faster speed of learning
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