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Self-Organizing Map and Relational Perspective Mapping for the Accurate Visualization of High-Dimensional Hyperspectral Data

机译:自组织地图和关系透视映射,用于高维光谱数据的准确可视化

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摘要

We present an optimization of the toroidal self-organizing map (SOM) algorithm for the accurate visualization of hyperspectral data. This represents a significant advancement on our previous work, in which we demonstrated the use of toroidal SOMs for the visualization of time-of-flight secondary ion mass spectrometry (ToF-SIMS) imaging data. We have previously shown that the toroidal SOM can be used, unsupervised, to produce a multicolor similarity map of the analysis area, in which pixels with similar mass spectra are assigned a similar color. Here, we use an additional algorithm, relational perspective mapping (RPM), to produce more accurate visualizations of hyperspectral data. The SOM output is used as an input for the RPM algorithm, which is a nonlinear dimensionality reduction technique designed to produce a two-dimensional map of high-dimensional data. Using the topological information provided by the SOM, RPM provides complementary distance information. The result is a color scheme that more accurately reflects the local spectral distances between pixels in the data. We exemplify SOM-RPM using ToF-SIMS imaging data from a mouse tumor tissue section. The similarity maps produced are compared with those produced by two leading hyperspectral visualization techniques in the field of mass spectrometry imaging: t-distributed stochastic neighborhood embedding (t-SNE) and uniform manifold approximation and projection (UMAP). We evaluate the performance of each technique both qualitatively and quantitatively, investigating the correlations between distances in the models and distances in the data. SOM-RPM is demonstrably highly competitive with t-SNE and UMAP, according to our evaluations. Furthermore, the use of a neural network offers distinct advantages in data characterization, which we discuss. We also show how spectra extracted from regions of interest identified by SOM-RPM can be further analyzed using linear discriminant analysis for the validation and characterization of the surface chemistry.
机译:我们介绍了环形自组织地图(SOM)算法的精确可视化的优化。这代表了我们以前的工作的重要进步,其中我们证明了环形SOMS用于可视化飞行时间二次离子质谱(TOF-SIMS)成像数据的可视化。我们之前已经示出了可以使用,无监督以产生分析区域的多色相似图的环形SOM,其中具有类似质谱的像素被分配类似的颜色。在这里,我们使用额外的算法,关系透视映射(RPM),以产生更准确的超光谱数据的可视化。 SOM输出被用作RPM算法的输入,其是设计用于产生高维数据的二维图的非线性维度降低技术。使用SOM提供的拓扑信息,RPM提供了互补距离信息。结果是一种颜色方案,其更精确地反映数据之间的像素之间的局部光谱距离。我们用来自小鼠肿瘤组织部分的TOF-SIMS成像数据来举例说明SOM-RPM。将产生的相似性图与由质谱成像领域中的两个主要高光谱可视化技术产生的相似图:T分布式随机邻域嵌入(T-SNE)和均匀的歧管近似和投影(UMAP)。我们评估了定性和定量的每种技术的性能,调查模型中的距离与数据距离之间的相关性。根据我们的评估,SOM-RPM对T-SNE和UMAP具有显着竞争力。此外,使用神经网络在我们讨论的数据表征中提供了不同的优势。我们还展示了如何利用线性判别分析进一步分析如何从SOM-RPM鉴定的目的区域中提取的光谱,以进行表面化学的验证和表征。

著录项

  • 来源
    《Analytical chemistry》 |2020年第15期|共10页
  • 作者单位

    La Trobe Univ Ctr Mat &

    Suiface Sci Melbourne Vic 3086 Australia;

    La Trobe Univ Ctr Mat &

    Suiface Sci Melbourne Vic 3086 Australia;

    La Trobe Univ La Trobe Inst Mol Sci Melbourne Vic 3086 Australia;

    CSIRO Mfg Clayton Vic 3168 Australia;

    Univ Milano Bicocca Dept Earth &

    Environm Sci Milano Chemometr &

    QSAR Res Grp I-20126 Milan Italy;

    La Trobe Univ La Trobe Inst Mol Sci Melbourne Vic 3086 Australia;

    La Trobe Univ Ctr Mat &

    Suiface Sci Melbourne Vic 3086 Australia;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
  • 关键词

  • 入库时间 2022-08-20 16:39:05

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