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Rodent models of cholestatic liver disease: A practical guide for translational research

期刊

LIVER INTERNATIONAL
卷 41, 期 4, 页码 656-682

出版社

WILEY
DOI: 10.1111/liv.14800

关键词

drug‐ induced cholestasis; in vivo modelling; intrahepatic cholestasis of pregnancy; primary biliary cholangitis; primary sclerosing cholangitis

资金

  1. Research Foundation Flanders, Belgium
  2. Scientific Fund Willy Gepts, Belgium
  3. Center for Alternatives to Animal Testing at Johns Hopkins University, USA

向作者/读者索取更多资源

Cholestatic liver disease is characterized by impaired bile flow and accumulation of toxic bile acids in the liver or systemic circulation. It can be classified into different types based on clinical phenotype, and researchers have made significant efforts to elucidate its underlying mechanisms using appropriate animal models.
Cholestatic liver disease denotes any situation associated with impaired bile flow concomitant with a noxious bile acid accumulation in the liver and/or systemic circulation. Cholestatic liver disease can be subdivided into different types according to its clinical phenotype, such as biliary atresia, drug-induced cholestasis, gallstone liver disease, intrahepatic cholestasis of pregnancy, primary biliary cholangitis and primary sclerosing cholangitis. Considerable effort has been devoted to elucidating underlying mechanisms of cholestatic liver injuries and explore novel therapeutic and diagnostic strategies using animal models. Animal models employed according to their appropriate applicability domain herein play a crucial role. This review provides an overview of currently available in vivo animal models, fit-for-purpose in modelling different types of cholestatic liver diseases. Moreover, a practical guide and workflow is provided which can be used for translational research purposes, including all advantages and disadvantages of currently available in vivo animal models.

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