Comparisons of DNA Sequence Representation Methods for Deep Learning Modelling

Shu En Chia, Nung Kion Lee
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Abstract

Learning the enhancer sequence grammar from protein-DNA interaction via a computational approach is a challenging task because the features associated with the recognition codes are ill-defined. While sequence features are not the only way to define the sequence characteristics, they are the most effective. Deep learning neural networks have become the key technique for modeling those features for the classification task. Nevertheless, effective learning of deep learning requires enhancer sequence features to be represented and encoded into suitable matrix form. The aims of this paper is to evaluate six sequence feature representation/encoding methods for convolutional neural networks modelling. Using a histone marks dataset as input data, our results indicate k-mer feature achieved the best performance, followed by word-based features, which performed favorably better than one-hot encoding. The random-walk feature, nevertheless, performed the worst. Moreover, our finding provides strong evidence to use kmer/word features instead of the popular one-hot encoding for histone sequence in CNN modeling.
深度学习建模中DNA序列表示方法的比较
通过计算方法从蛋白质- dna相互作用中学习增强子序列语法是一项具有挑战性的任务,因为与识别代码相关的特征定义不清。序列特征虽然不是定义序列特征的唯一方法,但却是最有效的方法。深度学习神经网络已经成为为分类任务建模这些特征的关键技术。然而,深度学习的有效学习需要将增强子序列特征表示并编码成合适的矩阵形式。本文的目的是评估卷积神经网络建模的六种序列特征表示/编码方法。使用组蛋白标记数据集作为输入数据,我们的结果表明k-mer特征获得了最好的性能,其次是基于单词的特征,其表现优于one-hot编码。然而,随机漫步功能表现最差。此外,我们的发现为CNN建模中使用kmer/word特征代替流行的one-hot编码组蛋白序列提供了强有力的证据。
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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