基于FCGS表示提取特征的支持向量机Helitrons识别

Rabeb Touati, Imen Massaoudi, A. Oueslati, Z. Lachiri
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引用次数: 3

摘要

在生物学中,信号处理方法对DNA空间结构的控制有着重要的作用。从以往的研究推断,真核生物基因组中有相当一部分是由转座因子(te)组成的。te在基因组进化中起着重要的推动作用。ETs的一个重要亚类——helitron已经在多种真核生物基因组中被发现。这些元素具有捕获基因的非凡能力,它们通过滚动循环机制转座。在这种情况下,helitron定位是细胞生物学的主要挑战之一,以更好地了解基因组中不同的遗传特征和传播模式。本文介绍了频率混沌博弈信号(FCGS)方法,该方法提供了一种将DNA基因组序列作为DNA信号(1-D表示)表示的新方法。然后,利用支持向量机(SVM)分类技术对helitron DNA进行分类。这个选择是在研究了支持向量机技术的性能后,通过改变核技巧的参数得出的。为了达到这个目的,我们考虑了不同的内核。对于非线性支持向量机方法,我们选择1对1策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SVM Helitrons recognition based on features extracted from the FCGS representation
It is well recognized that the signal processing methods contributes in biology to the control of the DNA spatial structure. From the previous studies, it is inferred that the significant portion of the eukaryotic genomes is composed of transposable elements (TEs). The TEs play an important role as a driving force of genome evolution. An important sub class of ETs class II, Helitrons, have been revealed in diverse eukaryotic genomes. These elements have a remarkable ability to capture genes and they transpose by a rolling circle mechanism. In this context, helitron location is one of the main challenges of cell biology to better understand the different hereditary characteristics transmission modes in genomes. In this paper, we introduce the Frequency Chaos Game Signal (FCGS) method which provides a new way to present the DNA genomic sequence as a DNA signal (1-D presentation). Then, we use the Support Vector Machine (SVM) classification technique to classify helitron DNA. This choice came after studying the performance of SVM technique by varying the parameters of the kernel tricks. For this aim, different kernels have been taken into account. As for the nonlinear SVM approach, we choose the one-against-one strategy.
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