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Extended data analysis strategies for high resolution imaging MS: New methods to deal with extremely large image hyperspectral datasets

机译:高分辨率成像MS的扩展数据分析策略:处理超大图像高光谱数据集的新方法

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The large size of the hyperspectral datasets that are produced with modem mass spectrometric imaging techniques makes it difficult to analyze the results. Unsupervised statistical techniques are needed to extract relevant information from these datasets and reduce the data into a surveyable overview. Multivariate statistics are commonly used for this purpose. Computational power and computer memory limit the resolution at which the datasets can be analyzed with these techniques. We introduce the use of a data format capable of efficiently storing sparse datasets for multivariate analysis. This format is more memory-efficient and therefore it increases the possible resolution together with a decrease of computation time. Three multivariate techniques are compared for both sparse-type data and non-sparse data acquired in two different imaging ToF-SIMS experiments and one LDI-ToF imaging experiment. There is no significant qualitative difference in the use of different data formats for the same multivariate algorithms. All evaluated multivariate techniques could be applied on both SIMS and the LDI imaging datasets. Principal component analysis is shown to be the fastest choice; however a small increase of computation time using a VARIMAX optimization increases the decomposition quality significantly. PARAFAC analysis is shown to be very effective in separating different chemical components but the calculations take a significant amount of time, limiting its use as a routine technique. An effective visualization of the results of the multivariate analysis is as important for the analyst as the computational issues. For this reason, a new technique for visualization is presented, combining both spectral loadings and spatial scores into one three-dimensional view on the complete datacube. (C) 2006 Elsevier B.V. All rights reserved.
机译:用现代质谱成像技术产生的高光谱数据集的规模很大,难以分析结果。需要无监督的统计技术来从这些数据集中提取相关信息,并将数据缩减为可调查的概览。多元统计通常用于此目的。计算能力和计算机内存限制了使用这些技术可以分析数据集的分辨率。我们介绍了一种能够有效存储稀疏数据集以进行多变量分析的数据格式。这种格式的存储效率更高,因此可以提高可能的分辨率并减少计算时间。比较了在两种不同的成像ToF-SIMS实验和一个LDI-ToF成像实验中获得的稀疏类型数据和非稀疏数据的三种多元技术。对于相同的多元算法,使用不同的数据格式没有明显的质量差异。所有评估的多元技术都可以应用于SIMS和LDI成像数据集。主成分分析被证明是最快的选择。但是,使用VARIMAX优化的计算时间略有增加,会大大提高分解质量。已证明PARAFAC分析在分离不同化学成分方面非常有效,但计算需要大量时间,限制了其作为常规技术的使用。对于分析人员而言,有效地可视化多元分析结果与计算问题一样重要。因此,提出了一种可视化的新技术,将频谱负荷和空间得分结合到完整数据立方体的一个三维视图中。 (C)2006 Elsevier B.V.保留所有权利。

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