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Raman and FTIR microspectroscopy for detection of brain metastasis

机译:拉曼和FTIR微穴位检查脑转移的检测

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Vibrational spectroscopic imaging methods are novel tools to visualise chemical component in tissue without staining. Fourier transform infrared (FTIR) imaging is more frequently applied than Raman imaging so far. FTIR images recorded with a FPA detector have been demonstrated to identify the primary tumours of brain metastases. However, the strong absorption of water makes it difficult to transfer the results to non-dried tissues. Raman spectroscopy with near infrared excitation can be used instead and allows collecting the chemical fingerprint of native specimens. Therefore, Raman spectroscopy is a promising tool for tumour diagnosis in neurosurgery. Scope of the study is to compare FTIR and Raman images to visualize the tumour border and identify spectral features for classification. Brain metastases were obtained from patients undergoing surgery at the university hospital. Brain tissue sections were shock frozen, cryosectioned, dried and the same areas were imaged with both spectroscopic method. To visualise the chemical components, multivariate statistical algorithms were applied for data analysis. Furthermore classification models were trained using supervised algorithms to predict the primary tumor of brain metastases. Principal component regression (PCR) was used for prediction based on FTIR images. Support vector machines (SVM) were used for prediction based on Raman images. The principles are shown for two specimens. In the future, the study will be extended to larger data sets
机译:振动光谱成像方法是新型​​工具,用于在不染色的情况下可视化组织中的化学成分。傅里叶变换红外(FTIR)成像比到目前为止比拉曼成像更频繁地应用。已经证明了用FPA检测器记录的FTIR图像以鉴定脑转移的主要肿瘤。然而,水的强烈吸收使得难以将结果转移到未干燥的组织中。可以使用具有近红外激励的拉曼光谱,并允许收集本地标本的化学指纹。因此,拉曼光谱是神经外科肿瘤诊断的有希望的工具。该研究的范围是比较FTIR和拉曼图像以可视化肿瘤边界并识别分类的光谱特征。从大学医院接受手术的患者获得脑转移。脑组织切片次冷冻,冷冻干燥,干燥,并以光谱法对相同的区域进行成像。为了可视化化学成分,将多变量统计算法应用于数据分析。此外,使用监督算法训练分类模型以预测脑转移的主要肿瘤。主要成分回归(PCR)用于基于FTIR图像的预测。支持向量机(SVM)用于基于拉曼图像的预测。原则显示为两个标本。将来,该研究将扩展到更大的数据集

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