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Analysis of the Function of ADAM17 in Irhom2 Curly-Bare and Tylosis with Esophageal Cancer Mutant Mice

Journal of Cell Science(2023)

Tri-Institutional MD/PhD Program

Cited 3|Views20
Abstract
ABSTRACT Tylosis with oesophageal cancer (TOC) is a rare familial disorder caused by cytoplasmic mutations in inactive rhomboid 2 (iRhom2 or iR2, encoded by Rhbdf2). iR2 and the related iRhom1 (or iR1, encoded by Rhbdf1) are key regulators of the membrane-anchored metalloprotease ADAM17, which is required for activating EGFR ligands and for releasing pro-inflammatory cytokines such as TNFα (or TNF). A cytoplasmic deletion in iR2, including the TOC site, leads to curly coat or bare skin (cub) in mice, whereas a knock-in TOC mutation (toc) causes less severe alopecia and wavy fur. The abnormal skin and hair phenotypes of iR2cub/cub and iR2toc/toc mice depend on amphiregulin (Areg) and Adam17, as loss of one allele of either gene rescues the fur phenotypes. Remarkably, we found that iR1−/− iR2cub/cub mice survived, despite a lack of mature ADAM17, whereas iR2cub/cub Adam17−/− mice died perinatally, suggesting that the iR2cub gain-of-function mutation requires the presence of ADAM17, but not its catalytic activity. The iR2toc mutation did not substantially reduce the levels of mature ADAM17, but instead affected its function in a substrate-selective manner. Our findings provide new insights into the role of the cytoplasmic domain of iR2 in vivo, with implications for the treatment of TOC patients.
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Key words
KE Y WORDS,A disintegrin and metalloprotease 17 (ADAM17),Inactive rhomboid-like protein 2 (iRhom2),iRhom2 Curly bare (Cub),iRhom2 tylosis with oesophageal cancer (TOC),Epidermal growth factor receptor ligands (EGFRL),Amphiregulin (AREG)
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