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首页> 外文期刊>EURASIP journal on bioinformatics and systems biology >Map-invariant spectral analysis for the identification of DNA periodicities
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Map-invariant spectral analysis for the identification of DNA periodicities

机译:映射不变光谱分析,用于鉴定DNA周期性

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摘要

Many signal processing based methods for finding hidden periodicities in DNA sequences have primarily focused on assigning numerical values to the symbolic DNA sequence and then applying spectral analysis tools such as the short-time discrete Fourier transform (ST-DFT) to locate these repeats. The key results pertaining to this approach are however obtained using a very specific symbolic to numerical map, namely the so-called Voss representation. An important research problem is to therefore quantify the sensitivity of these results to the choice of the symbolic to numerical map. In this article, a novel algebraic approach to the periodicity detection problem is presented and provides a natural framework for studying the role of the symbolic to numerical map in finding these repeats. More specifically, we derive a new matrix-based expression of the DNA spectrum that comprises most of the widely used mappings in the literature as special cases, shows that the DNA spectrum is in fact invariable under all these mappings, and generates a necessary and sufficient condition for the invariance of the DNA spectrum to the symbolic to numerical map. Furthermore, the new algebraic framework decomposes the periodicity detection problem into several fundamental building blocks that are totally independent of each other. Sophisticated digital filters and/or alternate fast data transforms such as the discrete cosine and sine transforms can therefore be always incorporated in the periodicity detection scheme regardless of the choice of the symbolic to numerical map. Although the newly proposed framework is matrix based, identification of these periodicities can be achieved at a low computational cost.
机译:用于查找DNA序列中隐藏的周期性的许多基于信号处理的方法主要集中于为符号DNA序列分配数值,然后应用诸如短时离散傅立叶变换(ST-DFT)之类的频谱分析工具来定位这些重复序列。但是,使用非常具体的符号到数字映射(即所谓的Voss表示)可以获得与该方法有关的关键结果。因此,一个重要的研究问题是量化这些结果对符号映射到数字映射选择的敏感性。在本文中,提出了一种新颖的代数方法来解决周期性检测问题,并为研究符号映射到数字图在发现这些重复中的作用提供了自然的框架。更具体地说,我们推导了一种新的基于DNA谱的基于矩阵的表达,该表达包含特殊情况下文献中大多数广泛使用的映射,表明DNA谱在所有这些映射下实际上都是不变的,并产生了必要且充分的DNA光谱与符号到数字图谱不变的条件。此外,新的代数框架将周期性检测问题分解为几个彼此完全独立的基本构建块。因此,复杂的数字滤波器和/或交替的快速数据变换(例如离散余弦和正弦变换)可以始终合并到周期性检测方案中,而无需选择符号映射到数字映射。尽管新提出的框架是基于矩阵的,但是可以以较低的计算成本实现这些周期的识别。

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