Sarah E. Bamford, Wil Gardner, David A Winkler, Benjamin W. Muir, Damminda Alahakoon and Paul J. Pigram*,
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引用次数: 0
摘要
二次离子质谱(SIMS)是表征表面分子和元素组成的强大分析技术。单个质谱可提供有关平均表面组成的信息,而空间图谱则可阐明分子物种在二维和三维空间的分布,且无需事先标记分子目标。SIMS 技术产生的数据集庞大而复杂,通常包含空间和分子特征之间的微妙关系。机器学习算法非常适合探索这种复杂性,因此非常适合 SIMS 数据集的数据分析、解释和可视化。自组织图(SOM)就是这样一种算法,它特别适合对相似样本进行聚类,并降低高光谱数据集的维度。在此,我们将介绍自组织图、其简明的数学描述以及其在 SIMS 和其他相关质谱技术中的最新应用实例。这些实例展示了如何利用 SOM 来解释大量的单个质谱、成像或深度剖析数据集。这篇综述将对寻求探索自组织图数据分析的 SIMS 和其他质谱技术专家有所帮助。
Self-Organizing Maps for Secondary Ion Mass Spectrometry
Secondary ion mass spectrometry (SIMS) is a powerful analytical technique for characterizing the molecular and elemental composition of surfaces. Individual mass spectra can provide information about the mean surface composition, while spatial mapping can elucidate the spatial distributions of molecular species in 2D and 3D with no prior labeling of molecular targets. The data sets produced by SIMS techniques are large and inherently complex, often containing subtle relationships between spatial and molecular features. Machine learning algorithms are well suited to exploring this complexity, making them ideal for data analysis, interpretation, and visualization of SIMS data sets. One such algorithm, the self-organizing map (SOM), is particularly well suited to clustering similar samples and reducing the dimensionality of hyperspectral data sets. Here, we present an introduction to the SOM, a concise mathematical description, and recent examples of its use in SIMS and other related mass spectrometry techniques. These examples demonstrate how SOMs may be used to interpret high volumes of individual mass spectra, imaging, or depth profiling data sets. This review will be useful for specialists in SIMS and other mass spectral techniques seeking to explore self-organizing maps for data analysis.
期刊介绍:
The Journal of the American Society for Mass Spectrometry presents research papers covering all aspects of mass spectrometry, incorporating coverage of fields of scientific inquiry in which mass spectrometry can play a role.
Comprehensive in scope, the journal publishes papers on both fundamentals and applications of mass spectrometry. Fundamental subjects include instrumentation principles, design, and demonstration, structures and chemical properties of gas-phase ions, studies of thermodynamic properties, ion spectroscopy, chemical kinetics, mechanisms of ionization, theories of ion fragmentation, cluster ions, and potential energy surfaces. In addition to full papers, the journal offers Communications, Application Notes, and Accounts and Perspectives