Data representation influences protein secondary structure prediction using artificial neural networks

O. Lamont, H. Liang, M. Bellgard
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引用次数: 3

Abstract

Artificial Neural Networks (ANN) have been used very successfully for a number of classification problems in the molecular biology field. Protein secondary structure prediction is one of the oldest and best defined of these classification problems. Yet despite the considerable amount of work conducted in this field there still remain a number of fundamental computational issues that have not been thoroughly investigated, if considered at all. One important issue is identifying an appropriate data representation for input into the ANN. In this paper, we have investigated a range of new encoding schemes and evaluated their performance using recently introduced evaluation criterion. We have done this by preserving the redundant information of DNA codons that is lost when they are translated into amino acids. Interestingly, with our new data representation, the /spl beta/-strand prediction performance was consistently higher (14% improvement) over the accuracy of the ANNs trained when the conventional representation was used.
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数据表示影响人工神经网络对蛋白质二级结构的预测
人工神经网络(ANN)已经成功地应用于分子生物学领域的许多分类问题。蛋白质二级结构预测是这些分类问题中最古老和定义最好的一个。然而,尽管在这个领域进行了大量的工作,仍然有一些基本的计算问题没有得到彻底的调查,如果考虑的话。一个重要的问题是确定输入到人工神经网络的适当数据表示形式。在本文中,我们研究了一系列新的编码方案,并使用最近引入的评估准则对它们的性能进行了评估。我们通过保留DNA密码子的冗余信息来做到这一点,这些信息在它们被翻译成氨基酸时丢失了。有趣的是,使用我们的新数据表示,与使用传统表示时训练的人工神经网络相比,/spl β /-链预测性能始终更高(提高14%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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