| Literature DB >> 33769147 |
Yuval Ramot1,2, Ameya Deshpande3, Virginia Morello4, Paolo Michieli4,5, Tehila Shlomov1,6, Abraham Nyska7.
Abstract
In preclinical studies that involve animal models for hepatic fibrosis, accurate quantification of the fibrosis is of utmost importance. The use of digital image analysis based on deep learning artificial intelligence (AI) algorithms can facilitate accurate evaluation of liver fibrosis in these models. In the present study, we compared the quantitative evaluation of collagen proportionate area in the carbon tetrachloride model of liver fibrosis in the mouse by a newly developed AI algorithm to the semiquantitative assessment of liver fibrosis performed by a board-certified toxicologic pathologist. We found an excellent correlation between the 2 methods of assessment, most evident in the higher magnification (×40) as compared to the lower magnification (×10). These findings strengthen the confidence of using digital tools in the toxicologic pathology field as an adjunct to an expert toxicologic pathologist.Entities:
Keywords: artificial intelligence; digital pathology; liver fibrosis; machine learning; mouse model; pathology
Year: 2021 PMID: 33769147 DOI: 10.1177/01926233211003866
Source DB: PubMed Journal: Toxicol Pathol ISSN: 0192-6233 Impact factor: 1.902