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MSMAD: a computationally efficient method for the analysis of noisy array CGH data

机译:MSMAD:一种用于计算噪声阵列CGH数据的高效计算方法

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MOTIVATION: Genome analysis has become one of the most important tools for understanding the complex process of cancerogenesis. With increasing resolution of CGH arrays, the demand for computationally efficient algorithms arises, which are effective in the detection of aberrations even in very noisy data. RESULTS: We developed a rather simple, non-parametric technique of high computational efficiency for CGH array analysis that adopts a median absolute deviation concept for breakpoint detection, comprising median smoothing for pre-processing. The resulting algorithm has the potential to outperform any single smoothing approach as well as several recently proposed segmentation techniques. We show its performance through the application of simulated and real datasets in comparison to three other methods for array CGH analysis. IMPLEMENTATION: Our approach is implemented in the R-language and environment for statistical computing (version 2.6.1 for Windows, R-project, 2007). The code is available at: http://www.iba.muni.cz/~budinska/msmad.html. SUPPLEMENTARY INFORMATION: Supplementary data are available at Bioinformatics online.
机译:动机:基因组分析已成为了解癌症发生复杂过程的最重要工具之一。随着CGH阵列分辨率的提高,出现了对计算有效算法的需求,这些算法即使在非常嘈杂的数据中也能有效检测像差。结果:我们为CGH阵列分析开发了一种相当简单的非参数化技术,具有很高的计算效率,该技术采用中值绝对偏差概念进行断点检测,包括用于预处理的中值平滑。最终的算法有可能胜过任何一种平滑方法以及几种最近提出的分割技术。与阵列CGH分析的其他三种方法相比,我们通过模拟和真实数据集的应用来显示其性能。实施:我们的方法在R语言和统计计算环境中实现(Windows 2.6.1,R-project,2007)。该代码可从以下网站获得:http://www.iba.muni.cz/~budinska/msmad.html。补充信息:补充数据可从Bioinformatics在线获得。

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