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Raman microspectroscopy as a biomarking tool for in vitro diagnosis of cancer: A feasibility study

机译:拉曼显微光谱作为体外诊断癌症的生物标记工具:一项可行性研究

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Aim: To elucidate whether Raman spectroscopy aided by extensive spectral database and neural network analysis can be a fast and confident biomarking tool for the diagnosis of various types of cancer. Methods: Study included 27 patients with 11 different malignant tumors. Using Raman microscopy (RM) a total of 540 Raman spectra were recorded from histology specimens of both tumors and surrounding healthy tissues. Spectra were analyzed using the principal component analysis (PCA) and results, along with histopathology data, were used to train the neural network (NN) learning algorithm. Independent sets of spectra were used to test the accuracy of PCA/NN tissue classification. Results: The confident tumor identification for the purpose of medical diagnosis has to be performed by taking into account the whole spectral shape, and not only particular spectral bands. The use of PCA/NN analysis showed overall sensitivity of 96% with 4% false negative tumor classification. The specificity of distinguishing tumor types was 80%. These results are comparable to previously published data where tumors of only one tissue type were examined and can be regarded satisfactorily for a relatively small database of Raman spectra used here. Conclusion: In vitro RM combined with PCA/NN is an almost fully automated method for histopathology at the level of macromolecules. Supported by an extensive tumor spectra database, it could become a customary histological analysis tool for fast and reliable diagnosis of different types of cancer in clinical settings.
机译:目的:阐明在广泛的光谱数据库和神经网络分析的辅助下进行拉曼光谱检查是否可以成为诊断各种类型癌症的快速而可靠的生物标记工具。方法:研究包括27例11种不同恶性肿瘤的患者。使用拉曼显微镜(RM),从肿瘤和周围健康组织的组织学标本中总共记录了540个拉曼光谱。使用主成分分析(PCA)对光谱进行了分析,结果与组织病理学数据一起用于训练神经网络(NN)学习算法。使用独立的光谱集来测试PCA / NN组织分类的准确性。结果:必须通过考虑整个光谱形状,而不仅是特定的光谱带,来进行用于医学诊断的可靠肿瘤鉴定。 PCA / NN分析的使用显示总体敏感性为96%,假阴性肿瘤分类为4%。区分肿瘤类型的特异性为80%。这些结果与以前发表过的数据相当,后者仅检查了一种组织类型的肿瘤,对于这里使用的相对较小的拉曼光谱数据库,可以令人满意地认为。结论:体外RM结合PCA / NN在大分子水平上是几乎完全自动化的组织病理学方法。在广泛的肿瘤光谱数据库的支持下,它可以成为常规的组织学分析工具,用于在临床环境中快速可靠地诊断不同类型的癌症。

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