| Literature DB >> 31254349 |
Khalifa Mohammad Helal1,2, James Nicholas Taylor3, Harsono Cahyadi4, Akira Okajima5, Koji Tabata3, Yoshito Itoh5, Hideo Tanaka4, Katsumasa Fujita6,7,8, Yoshinori Harada4, Tamiki Komatsuzaki1,3,9,10.
Abstract
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.Entities:
Keywords: Raman hyperspectral imaging; machine learning; nonalcoholic fatty liver disease; rate-distortion theory; superpixel segmentation
Year: 2019 PMID: 31254349 DOI: 10.1002/1873-3468.13520
Source DB: PubMed Journal: FEBS Lett ISSN: 0014-5793 Impact factor: 4.124