失代偿
瞬态弹性成像
医学
队列
磁共振弹性成像
内科学
肝硬化
肝纤维化
危险系数
胃肠病学
腹水
放射科
弹性成像
置信区间
超声波
肝纤维化
作者
Beom Kyung Kim,Jaclyn Bergstrom,Rohit Loomba,Nobuharu Tamaki,Namiki Izumi,Atsushi Nakajima,Ramazan İdilman,Mesut Gümüşsoy,Diğdem Kuru Öz,Ayşe Erden,Emily Truong,Ju Dong Yang,Mazen Noureddin,Alina M. Allen,Rohit Loomba,Veeral Ajmera
标识
DOI:10.1097/hep.0000000000000470
摘要
Background and Aims: Magnetic resonance elastography (MRE) is an accurate, continuous biomarker of liver fibrosis; however, the optimal combination with clinical factors to predict the risk of incident hepatic decompensation is unknown. Therefore, we aimed to develop and validate an MRE-based prediction model for hepatic decompensation for patients with NAFLD. Approach and Results: This international multicenter cohort study included participants with NAFLD undergoing MRE from 6 hospitals. A total of 1254 participants were randomly assigned as training (n = 627) and validation (n = 627) cohorts. The primary end point was hepatic decompensation, defined as the first occurrence of variceal hemorrhage, ascites, or HE. Covariates associated with hepatic decompensation on Cox-regression were combined with MRE to construct a risk prediction model in the training cohort and then tested in the validation cohort. The median (IQR) age and MRE values were 61 (18) years and 3.5 (2.5) kPa in the training cohort and 60 (20) years and 3.4 (2.5) kPa in the validation cohort, respectively. The MRE-based multivariable model that included age, MRE, albumin, aspartate aminotransferase, and platelets had excellent discrimination for the 3- and 5-year risk of hepatic decompensation (c-statistic 0.912 and 0.891, respectively) in the training cohort. The diagnostic accuracy remained consistent in the validation cohort with a c-statistic of 0.871 and 0.876 for hepatic decompensation at 3 and 5 years, respectively, and was superior to Fibrosis-4 in both cohorts ( p < 0.05). Conclusions: An MRE-based prediction model allows for accurate prediction of hepatic decompensation and assists in the risk stratification of patients with NAFLD.
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