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Characterization of microarray data using wavelet power spectrum

机译:利用小波功率谱表征微阵列数据

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摘要

Microarray technique facilitates the generation of large amount of data useful for solving many biological problems. Analyzing this vast amount of data needs more effort due to its huge dimension. Usually, statistical methods like clustering are used to extract the common features among existing informal groups in a microarray data. But, these methods generally need dimensionality reduction and denoising the data for effective utilization and hence better exploratory techniques are required for visualization and analysis. The aim of this paper is to study the capability of transform oriented signal processing techniques especially wavelet transform and wavelet power spectrum to study characteristics of microarray data. The suitability of wavelet based technique has been demonstrated on such datasets and the behaviors of various samples as well as genes were studied. It was also found that the proposed technique is more efficient and requires no extensive preprocessing.
机译:微阵列技术有助于产生大量数据,这些数据可用于解决许多生物学问题。由于庞大的数据量,分析大量数据需要更多的精力。通常,使用诸如聚类之类的统计方法来提取微阵列数据中现有非正式小组之间的共同特征。但是,这些方法通常需要降维和对数据进行去噪以有效利用,因此需要更好的探索技术进行可视化和分析。本文的目的是研究面向变换的信号处理技术(特别是小波变换和小波功率谱)研究微阵列数据特征的能力。在这种数据集上已经证明了基于小波技术的适用性,并研究了各种样本以及基因的行为。还发现所提出的技术更有效并且不需要大量的预处理。

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