Bonifacio Alois, Beleites Claudia, Sergo Valter
Centre of Excellence for Nanostructured Materials and Department of Engineering and Architecture, University of Trieste, Via Valerio 6a, 34127, Trieste, TS, Italy,
Anal Bioanal Chem. 2015 Feb;407(4):1089-95. doi: 10.1007/s00216-014-8321-7. Epub 2014 Nov 16.
Hierarchical cluster analysis (HCA) is extensively used for the analysis of hyperspectral data. In this work, hyperspectral data sets obtained from Raman maps were analyzed using an alternative mode of cluster analysis, clustering "images" instead of spectra, under the assumption that images showing similar spatial distributions are related to the same chemical species. Such an approach was tested with two Raman maps: one simple "test map" of micro-crystals of four different compounds for a proof of principle and a map of a biological tissue (i.e., cartilage) as an example of chemically complex sample. In both cases, the "image-clustering" approach gave similar results as the traditional HCA, but at lower computational effort. The alternative approach proved to be particularly helpful in cases, as for the cartilage tissue, where concentration gradients of chemical composition are present. Moreover, with this approach, yielded information about correlation between bands in the average spectrum makes band assignment and spectral interpretation easier.
层次聚类分析(HCA)被广泛用于高光谱数据的分析。在这项工作中,在假设显示相似空间分布的图像与相同化学物质相关的前提下,使用一种替代的聚类分析模式,即对“图像”而非光谱进行聚类,对从拉曼图谱获得的高光谱数据集进行了分析。这种方法在两张拉曼图谱上进行了测试:一张是四种不同化合物微晶的简单“测试图谱”,用于原理验证;另一张是生物组织(即软骨)的图谱,作为化学组成复杂样本的示例。在这两种情况下,“图像聚类”方法得到的结果与传统的HCA相似,但计算量较小。事实证明,这种替代方法在存在化学成分浓度梯度的情况下(如软骨组织)特别有用。此外,通过这种方法,在平均光谱中得到的关于谱带之间相关性的信息使谱带归属和光谱解释更加容易。