» Articles » PMID: 29746543

Automated Assessment of Steatosis in Murine Fatty Liver

Overview
Journal PLoS One
Date 2018 May 11
PMID 29746543
Citations 12
Authors
Affiliations
Soon will be listed here.
Abstract

Although mice are commonly used to study different aspects of fatty liver disease, currently there are no validated fully automated methods to assess steatosis in mice. Accurate detection of macro- and microsteatosis in murine models of fatty liver disease is important in studying disease pathogenesis and detecting potential hepatotoxic signature during drug development. Further, precise quantification of macrosteatosis is essential for quantifying effects of therapies. Here, we develop and validate the performance of automated classifiers built using image processing and machine learning methods for detection of macro- and microsteatosis in murine fatty liver disease and study the correlation of automated quantification of macrosteatosis with expert pathologist's semi-quantitative grades. The analysis is performed on digital images of 27 Hematoxylin & Eosin stained murine liver biopsy samples. An expert liver pathologist scored the amount of macrosteatosis and also annotated macro- and microsteatosis lesions on the biopsy images using a web-application. Using these annotations, supervised machine learning and image processing techniques, we created classifiers to detect macro- and microsteatosis. For macrosteatosis prediction, the model's precision, sensitivity and area under the receiver operator characteristic (AUROC) were 94.2%, 95%, 99.1% respectively. When correlated with pathologist's semi-quantitative grade of steatosis, the model fits with a coefficient of determination value of 0.905. For microsteatosis prediction, the model has precision, sensitivity and AUROC of 79.2%, 77%, 78.1% respectively. Validation by the expert pathologist of classifier's predictions made on unseen images of biopsy samples showed 100% and 63% accuracy for macro- and microsteatosis, respectively. This novel work demonstrates that fully automated assessment of steatosis is feasible in murine liver biopsies images. Our classifier has excellent sensitivity and accuracy for detection of macrosteatosis in murine fatty liver disease.

Citing Articles

Curcumin-Rich Diet Mitigates Non-Alcoholic Fatty Liver Disease (NAFLD) by Attenuating Fat Accumulation and Improving Insulin Sensitivity in Aged Female Mice under Nutritional Stress.

Lamichhane G, Lee D, Franks R, Olawale F, Jin J, Egan J Biology (Basel). 2024; 13(7).

PMID: 39056667 PMC: 11274271. DOI: 10.3390/biology13070472.


Differential cell type-specific function of the aryl hydrocarbon receptor and its repressor in diet-induced obesity and fibrosis.

Graelmann F, Gondorf F, Majlesain Y, Niemann B, Klepac K, Gosejacob D Mol Metab. 2024; 85:101963.

PMID: 38821174 PMC: 11214421. DOI: 10.1016/j.molmet.2024.101963.


Artificial intelligence-assisted digital pathology for non-alcoholic steatohepatitis: current status and future directions.

Ratziu V, Hompesch M, Petitjean M, Serdjebi C, Iyer J, Parwani A J Hepatol. 2023; 80(2):335-351.

PMID: 37879461 PMC: 11822446. DOI: 10.1016/j.jhep.2023.10.015.


Collagen co-localized with macrovesicular steatosis better differentiates fibrosis progression in non-alcoholic fatty liver disease mouse models.

Wang X, Jin R, Li X, Yang Q, Teng X, Liu F Front Med (Lausanne). 2023; 10:1172058.

PMID: 37332758 PMC: 10272541. DOI: 10.3389/fmed.2023.1172058.


Simultaneous imaging of ultrasonic relative backscatter and attenuation coefficients for quantitative liver steatosis assessment.

Timana J, Chahuara H, Basavarajappa L, Basarab A, Hoyt K, Lavarello R Sci Rep. 2023; 13(1):8898.

PMID: 37264043 PMC: 10235029. DOI: 10.1038/s41598-023-33964-9.


References
1.
Deng M, Dahmen U, Sun J, Huang H, Sehestedt C, Homeyer A . Limited correlation between conventional pathologist and automatic computer-assisted quantification of hepatic steatosis due to difference between event-based and surface-based analysis. IEEE J Biomed Health Inform. 2013; 18(4):1473-7. DOI: 10.1109/JBHI.2013.2282999. View

2.
Nativ N, Chen A, Yarmush G, Henry S, Lefkowitch J, Klein K . Automated image analysis method for detecting and quantifying macrovesicular steatosis in hematoxylin and eosin-stained histology images of human livers. Liver Transpl. 2013; 20(2):228-36. PMC: 3923430. DOI: 10.1002/lt.23782. View

3.
Kleiner D, Chalasani N, Lee W, Fontana R, Bonkovsky H, Watkins P . Hepatic histological findings in suspected drug-induced liver injury: systematic evaluation and clinical associations. Hepatology. 2013; 59(2):661-70. PMC: 3946736. DOI: 10.1002/hep.26709. View

4.
ISHAK K, Baptista A, Bianchi L, Callea F, De Groote J, Gudat F . Histological grading and staging of chronic hepatitis. J Hepatol. 1995; 22(6):696-9. DOI: 10.1016/0168-8278(95)80226-6. View

5.
Vanderbeck S, Bockhorst J, Komorowski R, Kleiner D, Gawrieh S . Automatic classification of white regions in liver biopsies by supervised machine learning. Hum Pathol. 2014; 45(4):785-92. PMC: 8374469. DOI: 10.1016/j.humpath.2013.11.011. View