4.5 Article

Automated image analysis of keratin 7 staining can predict disease outcome in primary sclerosing cholangitis

期刊

HEPATOLOGY RESEARCH
卷 53, 期 4, 页码 322-333

出版社

WILEY
DOI: 10.1111/hepr.13867

关键词

artificial intelligence; ductular reaction; liver histology; primary sclerosing cholangitis; surrogate marker

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A study found that measuring the cytokeratin 7 (K7) load in liver samples using an artificial intelligence (AI) model can serve as an efficient surrogate marker to evaluate disease progression in primary sclerosing cholangitis (PSC). The K7-AI model 2.0 was more accurate in predicting the compound endpoint compared to other serum markers and pathological evaluations, and it also provided additional variables that cannot be measured by human pathologists.
Background and AimsPrimary sclerosing cholangitis (PSC) is a chronic cholestatic liver disease that obstructs the bile ducts and causes liver cirrhosis and cholangiocarcinoma. Efficient surrogate markers are required to measure disease progression. The cytokeratin 7 (K7) load in a liver specimen is an independent prognostic indicator that can be measured from digitalized slides using artificial intelligence (AI)-based models. MethodsA K7-AI model 2.0 was built to measure the hepatocellular K7 load area of the parenchyma, portal tracts, and biliary epithelium. K7-stained PSC liver biopsy specimens (n = 295) were analyzed. A compound endpoint (liver transplantation, liver-related death, and cholangiocarcinoma) was applied in Kaplan-Meier survival analysis to measure AUC values and positive likelihood ratios for each histological variable detected by the model. ResultsThe K7-AI model 2.0 was a better prognostic tool than plasma alkaline phosphatase, the fibrosis stage evaluated by Nakanuma classification, or K7 score evaluated by a pathologist based on the AUC values of measured variables. A combination of parameters, such as portal tract volume and area of K7-positive hepatocytes analyzed by the model, produced an AUC of 0.81 for predicting the compound endpoint. Portal tract volume measured by the model correlated with the histological fibrosis stage. ConclusionsThe K7 staining of histological liver specimens in PSC provides significant information on disease outcomes through objective and reproducible data, including variables that cannot be measured by a human pathologist. The K7-AI model 2.0 could serve as a prognostic tool for clinical endpoints and as a surrogate marker in drug trials.

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