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Normalization in MALDI-TOF imaging datasets of proteins: practical considerations

机译:蛋白质MALDI-TOF成像数据集中的归一化:实际考虑

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Normalization is critically important for the proper interpretation of matrix-assisted laser desorption/ionization (MALDI) imaging datasets. The effects of the commonly used normalization techniques based on total ion count (TIC) or vector norm normalization are significant, and they are frequently beneficial. In certain cases, however, these normalization algorithms may produce misleading results and possibly lead to wrong conclusions, e.g. regarding to potential biomarker distributions. This is typical for tissues in which signals of prominent abundance are present in confined areas, such as insulin in the pancreas or β-amyloid peptides in the brain. In this work, we investigated whether normalization can be improved if dominant signals are excluded from the calculation. Because manual interaction with the data (e.g., defining the abundant signals) is not desired for routine analysis, we investigated two alternatives: normalization on the spectra noise level or on the median of signal intensities in the spectrum. Normalization on the median and the noise level was found to be significantly more robust against artifact generation compared to normalization on the TIC. Therefore, we propose to include these normalization methods in the standard “toolbox” of MALDI imaging for reliable results under conditions of automation.
机译:归一化对于正确解释基质辅助激光解吸/电离(MALDI)成像数据集至关重要。基于总离子数(TIC)或矢量范数归一化的常用归一化技术的效果是显着的,并且它们通常是有益的。但是,在某些情况下,这些归一化算法可能会产生误导性的结果,并可能导致错误的结论,例如:关于潜在的生物标志物分布。对于在有限区域中存在大量信号的组织(例如胰腺中的胰岛素或脑中的β-淀粉样肽),这是典型的组织。在这项工作中,我们研究了如果将主导信号从计算中排除,是否可以改善标准化。由于常规分析不需要手动与数据进行交互(例如定义丰富的信号),因此我们研究了两种选择:对频谱噪声水平或频谱中信号强度的中值进行归一化。与TIC上的归一化相比,发现中位数和噪声水平上的归一化对伪影产生的鲁棒性更高。因此,我们建议将这些归一化方法包括在MALDI成像的标准“工具箱”中,以实现自动化条件下的可靠结果。

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