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Infrared Imaging of Skin Lesions

机译:皮肤病变的红外成像

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摘要

Infrared (IR) spectroscopy produces spectra in which detailed information concerning chemical structure is inherent. Numerous studies have demonstrated that the most useful IR methods for analysis of biological tissues are microscopic image-based techniques in which fine-scaled spatial and high-quality spectral information is integrated. Unlike traditional visible microscopic methods, the contrast in IR imaging is gained by differences in spectra and the spatial heterogeneity of biochemical components, not by the addition of stains. In order for IR imaging to be more broadly accepted, non-subjective data processing methods are being developed to extract the most out of the large spectral images that are acquired. This paper demonstrates data processing techniques that have been extremely useful in the analysis of normal and abnormal skin. Analysis of skin specimens is of particular clinical importance due to the difficultly in rendering a differential diagnosis. Unstained frozen skin sections were mapped using an IR microscope. Functional group mapping, clustering routines and linear discriminant analysis were used to process the data. Functional group mapping and clustering routines were useful in the initial interpretation of images and to search for trends in uncharacterized spectral images. LDA was useful for differentiating normal from abnormal tissue once a well-defined training spectral set was established. Representative spectroscopic images are shown that demonstrate the power of IR imaging.
机译:红外(IR)光谱产生光谱,其中固有的有关化学结构的详细信息。大量研究表明,用于分析生物组织的最有用的红外方法是基于微观图像的技术,其中集成了精细的空间和高质量光谱信息。与传统的可见显微方法不同,红外成像的对比度是通过光谱差异和生化成分的空间异质性来获得的,而不是通过添加污渍来获得的。为了使IR成像得到更广泛的接受,正在开发非主观的数据处理方法,以从获取的大光谱图像中提取最多的图像。本文演示了在正常皮肤和异常皮肤分析中极为有用的数据处理技术。由于难以进行鉴别诊断,因此对皮肤样本的分析具有特殊的临床重要性。使用红外显微镜对未染色的冷冻皮肤切片进行定位。使用功能组映射,聚类例程和线性判别分析来处理数据。功能组映射和聚类例程可用于图像的初始解释和搜索未表征的光谱图像中的趋势。一旦建立了明确定义的训练频谱集,LDA可用于区分正常组织和异常组织。显示了代表性的光谱图像,这些图像证明了红外成像的强大功能。

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