Journal Article10.1002/JBIO.200810024
Disease recognition by infrared and Raman spectroscopy.
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TL;DR: The current review gives an overview of the experimental techniques, data‐classification algorithms and applications to assess soft tissues, hard tissues and body fluids to recognize various diseases.
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Abstract: Infrared (IR) and Raman spectroscopy are emerging biophotonic tools to recognize various diseases. The current review gives an overview of the experimental techniques, data-classification algorithms and applications to assess soft tissues, hard tissues and body fluids. The methodology section presents the principles to combine vibrational spectroscopy with microscopy, lateral information and fiber-optic probes. A crucial step is the classification of spectral data by a variety of algorithms. We discuss unsupervised algorithms such as cluster analysis or principal component analysis and supervised algorithms such as linear discriminant analysis, soft independent modeling of class analogies, artificial neural networks support vector machines, Bayesian classification, partial least-squares regression and ensemble methods. The selected topics include tumors of epithelial tissue, brain tumors, prion diseases, bone diseases, atherosclerosis, kidney stones and gallstones, skin tumors, diabetes and osteoarthritis.
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Citations
Using Raman spectroscopy to characterize biological materials
Holly J. Butler,Lorna Ashton,Benjamin Bird,Gianfelice Cinque,Kelly Curtis,Jennifer Dorney,Karen A. Esmonde-White,Nigel J. Fullwood,Benjamin Gardner,Pierre L. Martin-Hirsch,Pierre L. Martin-Hirsch,Michael J. Walsh,Martin R. McAinsh,Nicholas Stone,Francis Martin +14 more
TL;DR: A robust approach for sample preparation, instrumentation, acquisition parameters and data processing is explored and it is expected that a typical Raman experiment can be performed by a nonspecialist user to generate high-quality data for biological materials analysis.
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Microfluidics and Raman microscopy: current applications and future challenges
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TL;DR: Coherent anti-Stokes Raman (CARS) microscopy and stimulated Raman loss (SRL) microscopeopy are orders of magnitude more efficient than Raman spectroscopy, and are able to acquire high quality chemically-specific images in seconds.
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Characterization of exfoliated cells and tissues from human endocervix and ectocervix by FTIR and ATR/FTIR Spectroscopy
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