Raman spectroscopic histology using machine learning for nonalcoholic fatty liver disease
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Titre | Raman spectroscopic histology using machine learning for nonalcoholic fatty liver disease |
Type de publication | Journal Article |
Year of Publication | 2019 |
Auteurs | Helal KMohammad, Taylor JNicholas, Cahyadi H, Okajima A, Tabata K, Itoh Y, Tanaka H, Fujita K, Harada Y, Komatsuzaki T |
Journal | FEBS LETTERS |
Volume | 593 |
Pagination | 2535-2544 |
Date Published | SEP |
Type of Article | Article |
ISSN | 0014-5793 |
Mots-clés | Machine learning, nonalcoholic fatty liver disease, Raman hyperspectral imaging, rate-distortion theory, superpixel segmentation |
Résumé | Histopathology requires the expertise of specialists to diagnose morphological features of cells and tissues. Raman imaging can provide additional biochemical information to benefit histological disease diagnosis. Using a dietary model of nonalcoholic fatty liver disease in rats, we combine Raman imaging with machine learning and information theory to evaluate cellular-level information in liver tissue samples. After increasing signal-to-noise ratio in the Raman images through superpixel segmentation, we extract biochemically distinct regions within liver tissues, allowing for quantification of characteristic biochemical components such as vitamin A and lipids. Armed with microscopic information about the biochemical composition of the liver tissues, we group tissues having similar composition, providing a descriptor enabling inference of tissue states, contributing valuable information to histological inspection. |
DOI | 10.1002/1873-3468.13520, Early Access Date = {JUL 2019 |