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Robust Processing of Microarray Data by Independent Component Analysis

机译:通过独立成分分析可靠地处理微阵列数据

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摘要

Microarray Data Processing is becoming a field of important activity for Signal Processing and Pattern Recognition areas, as the extraction and mining of meaningful data from large groupings of microarray patterns is of vital importance in Medicine, Genomics, Proteomics, Pharmacology, etc. In this paper emphasis is placed on studying and cataloging the nature of possible sources of corruption of microarray data and in establishing a pre-processing methodology for discriminating sources of corruption from microarray data (de-noising). We also discuss ways of precisely reconstructing original contributions (theoretically hybridized data) using ICA methods. Some classical examples are shown, and a discussion follows the presentation of results.
机译:微阵列数据处理正在成为信号处理和模式识别领域的重要活动,因为从大阵列微阵列模式中提取和挖掘有意义的数据在医学,基因组学,蛋白质组学,药理学等领域都至关重要。重点放在研究和分类可能的微阵列数据损坏源的性质上,以及建立一种从微阵列数据中区分损坏源(去噪)的预处理方法。我们还将讨论使用ICA方法精确重建原始贡献(理论上为杂交数据)的方法。显示了一些经典示例,并在结果介绍之后进行了讨论。

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