自身免疫性肝炎
重叠综合征
胆管
医学
病理
纤维化
原发性硬化性胆管炎
肝炎
胃肠病学
自身抗体
内科学
抗体
免疫学
疾病
作者
Yuanxin Liang,Binny Khandakar,Yansheng Hao,Yiqin Xiong,Lingjia Liu,Xuchen Zhang
标识
DOI:10.1016/j.anndiagpath.2023.152178
摘要
The diagnosis of autoimmune hepatitis (AIH), primary biliary cholangitis (PBC), and AIH-PBC overlap syndrome (OS) relies on their histologic features and clinical findings. In this study, we aimed to identify specific morphologic features of these diseases and evaluate their clinical correlation. We included initial biopsies from untreated patients with AIH (n = 14), PBC (n = 10), and OS (n = 7). Histologic features of the portal tract, portal-lobular interface, and hepatic lobule, fibrosis, as well as clinical data including serology, autoantibodies, treatment, and prognosis were reviewed and analyzed. Our results showed that several histologic features differed significantly between AIH and PBC (p < 0.05). Among these features, OS cases were more likely to present with bile duct-centered processes (presence of bile duct damage while absence of inflammation gradient from bile duct to interface, plasma cell cluster and pericentral inflammation) unlike those seen in AIH (p < 0.05), and interface-centered processes (unequivocal interface hepatitis, ductular reaction, and periportal fibrosis) which were not seen in PBC (p < 0.05). We observed a significant correlation between transaminase levels and lobular inflammation, including numbers of lymphocyte, plasma cell and eosinophil. Our study also found that anti-smooth muscle antibody positivity was associated with interface hepatitis (p < 0.01), while antimitochondrial antibody positivity was associated with duct damage (including ductopenia) and granulomas (p < 0.05). Our results highlight distinctive morphological features between AIH and PBC. The possibility of overlap syndrome should be considered when encountering AIH with bile duct-centered processes or PBC with interface-centered processes in morphology and correlation with autoantibodies.
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