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Segmentation of Confocal Raman Microspectroscopic Imaging Data Using Edge-Preserving Denoising and Clustering

机译:使用保留边缘的去噪和聚类方法对共聚焦拉曼光谱成像数据进行分割

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Over the past decade, confocal Raman micro-spectroscopic (CRM) imaging has matured into a useful analytical tool to obtain spatially resolved chemical information on the molecular composition of biological samples and has found its way into histopathology, cytology, and microbiology. A CRM imaging data set is a hyperspectral image in which Raman intensities are represented as a function of three coordinates: a spectral coordinate λ encoding the wavelength and two spatial coordinates x and y. Understanding CRM imaging data is challenging because of its complexity, size, and moderate signal-to-noise ratio. Spatial segmentation of CRM imaging data is a way to reveal regions of interest and is traditionally performed using nonsupervised clustering which relies on spectral domain-only information with the main drawback being the high sensitivity to noise. We present a new pipeline for spatial segmentation of CRM imaging data which combines preprocessing in the spectral and spatial domains with k-means clustering. Its core is the preprocessing routine in the spatial domain, edge-preserving denoising (EPD), which exploits the spatial relationships between Raman intensities acquired at neighboring pixels. Additionally, we propose to use both spatial correlation to identify Raman spectral features colocalized with defined spatial regions and confidence maps to assess the quality of spatial segmentation. For CRM data acquired from midsagittal Syrian hamster (Mesocricetus auratus) brain cryosections, we show how our pipeline benefits from the complex spatial-spectral relationships inherent in the CRM imaging data. EPD significantly improves the quality of spatial segmentation that allows us to extract the underlying structural and compositional information contained in the Raman microspectra.
机译:在过去的十年中,共焦拉曼显微光谱(CRM)成像技术已经发展成为一种有用的分析工具,可获取有关生物样本分子组成的空间分辨化学信息,并已发现其进入组织病理学,细胞学和微生物学的道路。 CRM成像数据集是一个高光谱图像,其中拉曼强度表示为三个坐标的函数:编码波长的光谱坐标λ和两个空间坐标x和y。由于其复杂性,大小和适中的信噪比,了解CRM成像数据具有挑战性。 CRM成像数据的空间分割是一种显示感兴趣区域的方法,并且传统上是使用非监督聚类执行的,该聚类依赖于仅频谱域的信息,主要缺点是对噪声的敏感性高。我们提出了一种用于CRM成像数据空间分割的新管道,该管道将光谱和空间域中的预处理与k均值聚类相结合。它的核心是空间域中的预处理例程,即边缘保留降噪(EPD),它利用在相邻像素处获取的拉曼强度之间的空间关系。此外,我们建议使用空间相关性来识别与定义的空间区域共定位的拉曼光谱特征,并使用置信度图来评估空间分割的质量。对于从中矢状叙利亚仓鼠(Mesocricetus auratus)脑冷冻切片获得的CRM数据,我们展示了我们的管道如何从CRM成像数据中固有的复杂空间光谱关系中受益。 EPD显着提高了空间分割的质量,使我们能够提取拉曼显微光谱中包含的潜在结构和成分信息。

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