Andreev Victor P, Rejtar Tomas, Chen Hsuan-Shen, Moskovets Eugene V, Ivanov Alexander R, Karger Barry L
Barnett Institute and Department of Chemistry, Northeastern University, Boston, Massachusetts 02115, USA.
Anal Chem. 2003 Nov 15;75(22):6314-26. doi: 10.1021/ac0301806.
A new denoising and peak picking algorithm (MEND, matched filtration with experimental noise determination) for analysis of LC-MS data is described. The algorithm minimizes both random and chemical noise in order to determine MS peaks corresponding to sample components. Noise characteristics in the data set are experimentally determined and used for efficient denoising. MEND is shown to enable low-intensity peaks to be detected, thus providing additional useful information for sample analysis. The process of denoising, performed in the chromatographic time domain, does not distort peak shapes in the m/z domain, allowing accurate determination of MS peak centroids, including low-intensity peaks. MEND has been applied to denoising of LC-MALDI-TOF-MS and LC-ESI-TOF-MS data for tryptic digests of protein mixtures. MEND is shown to suppress chemical and random noise and baseline fluctuations, as well as filter out false peaks originating from the matrix (MALDI) or mobile phase (ESI). In addition, MEND is shown to be effective for protein expression analysis by allowing selection of a large number of differentially expressed ICAT pairs, due to increased signal-to-noise ratio and mass accuracy.
本文描述了一种用于液相色谱 - 质谱(LC-MS)数据分析的新型去噪和峰提取算法(MEND,即结合实验噪声测定的匹配过滤法)。该算法可将随机噪声和化学噪声降至最低,以确定与样品成分相对应的质谱峰。通过实验确定数据集中的噪声特征,并将其用于高效去噪。结果表明,MEND能够检测到低强度峰,从而为样品分析提供额外的有用信息。在色谱时域中进行的去噪过程不会扭曲质荷比(m/z)域中的峰形,从而能够准确测定质谱峰的质心,包括低强度峰。MEND已应用于蛋白质混合物胰蛋白酶消化产物的LC-MALDI-TOF-MS和LC-ESI-TOF-MS数据的去噪。结果表明,MEND可抑制化学噪声、随机噪声和基线波动,同时滤除源自基质(MALDI)或流动相(ESI)的假峰。此外,由于信噪比和质量精度的提高,MEND在允许选择大量差异表达的ICAT对方面,对蛋白质表达分析有效。