植物细胞壁的拉曼显微光谱分析

Ju Han, Seema Singh, Lan Sun, B. Simmons, M. Auer, B. Parvin
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引用次数: 1

摘要

本文提出了一种利用拉曼光谱对植物细胞壁进行化学分析的计算框架。该系统可以查询已知的光谱特征,并根据光谱数据的内在属性进行聚类。因此,特定化学键的存在和相对浓度可以被量化。本文的主要贡献是根据荧光背景和每个网格点(体素)的多尺度峰值检测来表示拉曼轮廓。这种表示允许基于每个体素的高级显著属性和低级符号表示之间的耦合进行有效的空间分割。高级显著属性指的是整个图像的首选峰值及其属性。低级符号表示基于荧光背景、光谱峰位置及其属性。我们提出了玉米秸秆组织切片的结果,通过拉曼显微镜成像,结果与文献一致。此外,自动聚类表明了具有不同光谱特征的细胞壁的几个不同层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Chemical profiling of the plant cellwall through Raman microspectroscopy
This paper presents a computational framework for chemical profiling of the plant cell wall through the Raman spectroscopy. The system enables query of known spectral signatures and clustering of spectral data based on intrinsic properties. As a result, presence and relative concentration of specific chemical bonds can be quantified. The primary contribution of this paper is in representation of raman profile in terms of fluorescence background and multiscale peak detection at each grid point (voxel). Such a representation allows efficient spatial segmentation based on the coupling between high-level salient properties and low-level symbolic representation at each voxel. The high-level salient properties refer to preferred peaks and their attributes for the entire image. The low-level symbolic representations are based on fluorescence background, spectral peak locations, and their attributes. We present results on a corn stover tissue section that is imaged through Raman microscopy, and the results are consistent with the literature. In addition, automatic clustering indicates several distinct layers of the cell walls with different spectral signatures.
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