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Feature extraction and quantification for mass spectrometry in biomedical applications using the mean spectrum

机译:使用平均光谱在生物医学应用中质谱的特征提取和定量

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Motivation: Mass spectrometry yields complex functional data for which the features of scientific interest are peaks. A common two-step approach to analyzing these data involves first extracting and quantifying the peaks, then analyzing the resulting matrix of peak quantifications. Feature extraction and quantification involves a number of interrelated steps. It is important to perform these steps well, since subsequent analyses condition on these determinations. Also, it is difficult to compare the performance of competing methods for analyzing mass spectrometry data since the true expression levels of the proteins in the population are generally not known.Results: In this paper, we introduce a new method for feature extraction in mass spectrometry data that uses translation-invariant wavelet transforms and performs peak detection using the mean spectrum. We examine the method's performance through examples and simulation, and demonstrate the advantages of using the mean spectrum to detect peaks. We also describe a new physics-based computer model of mass spectrometry and demonstrate how one may design simulation studies based on this tool to systematically compare competing methods.
机译:动机:质谱法产生复杂的功能数据,其具有科学价值的特征是峰。分析这些数据的常见两步方法包括首先提取和量化峰,然后分析峰量化的结果矩阵。特征提取和量化涉及许多相互关联的步骤。正确执行这些步骤非常重要,因为后续分析取决于这些确定。此外,由于通常不了解群体中蛋白质的真实表达水平,因此很难比较竞争方法用于分析质谱数据的性能。结果:在本文中,我们介绍了一种新的质谱特​​征提取方法使用平移不变小波变换并使用平均频谱执行峰值检测的数据。我们通过示例和仿真检查了该方法的性能,并演示了使用平均光谱检测峰的优势。我们还描述了一种新的基于质谱的基于物理学的计算机模型,并演示了如何可以基于此工具设计模拟研究以系统地比较竞争方法。

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