2017
DOI: 10.1007/s00216-017-0614-1
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Elastic and inelastic light scattering spectroscopy and its possible use for label-free brain tumor typing

Abstract: This paper presents an approach for label-free brain tumor tissue typing. For this application, our dual modality microspectroscopy system combines inelastic Raman scattering spectroscopy and Mie elastic light scattering spectroscopy. The system enables marker-free biomedical diagnostics and records both the chemical and morphologic changes of tissues on a cellular and subcellular level. The system setup is described and the suitability for measuring morphologic features is investigated. Graphical Abstract Bim… Show more

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Cited by 13 publications
(16 citation statements)
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“…Formalin fixation yields even better diagnostic results than native samples for the generation of spectroscopic multimodal datasets. Using this multimodal approach, UV and FTIR spectroscopy acquire the chemical information of the cross sections, whereas the ELS is linked to tissue morphology [33].…”
Section: Discussionmentioning
confidence: 99%
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“…Formalin fixation yields even better diagnostic results than native samples for the generation of spectroscopic multimodal datasets. Using this multimodal approach, UV and FTIR spectroscopy acquire the chemical information of the cross sections, whereas the ELS is linked to tissue morphology [33].…”
Section: Discussionmentioning
confidence: 99%
“…erefore, an increasing number of spectroscopic single techniques, especially Raman-and infrared (IR) spectroscopy, emerge, aiming at the classification of brain tumours [29][30][31][32]. Further studies consider elastic light scattering spectroscopy (ELS), which is particularly sensitive to morphological differences in tissues [33,34]. It enables one of the earliest detections of carcinogenesis [35][36][37].…”
Section: Introductionmentioning
confidence: 99%
“…In the neurosurgical literature, the most common feature engineering algorithm is principal component analysis (PCA). 56,59,74,76,128,[131][132][133][134][135][136][137][138][139] PCA iteratively finds the orthogonal vectors (or principal components, PC) that maximize the variance in the dataset and then stores the projection of the data point upon each PC [ Fig. 5(b)].…”
Section: Supervised Machine Learningmentioning
confidence: 99%
“…The number of retained PCs ranges between 2 and 40 depending on either predefined criteria such as amount of explained variance 55,56,74,[134][135][136]138,139 or post hoc criteria, e.g., selecting PCs that could better differentiate the different tissue types. 76,[131][132][133] The popularity of PCA in RS can be attributed to its unsupervised nature: as it is agnostic to labels, it is considered unbiased. 140 Moreover, most authors report that over 99% of the variance of their dataset is expressed in the first 2 to 40 PCs 55,56,73,[134][135][136]138,139 and the orthogonality of the extracted features can improve the efficiency of classical multivariate linear models.…”
Section: Supervised Machine Learningmentioning
confidence: 99%
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