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Non-invasive algorithm of enhanced liver fibrosis and liver stiffness measurement with transient elastography for advanced liver fibrosis in chronic hepatitis B

机译:慢性乙型肝炎晚期肝纤维化的无创性增强肝纤维化算法和瞬时弹性成像测量肝硬度

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Background The accuracy of Enhanced Liver Fibrosis (ELF; ADVIA Centaur, Siemens Healthcare Diagnostics, Tarrytown, NY, USA) in assessing liver fibrosis in chronic hepatitis B (CHB) is to be determined. Aim To derive and validate a combined ELF-liver stiffness measurement (LSM) algorithm to predict advanced fibrosis in CHB patients. Methods Using the data of a previously reported cohort of 238 CHB patients, an ALT-based LSM algorithm for liver fibrosis was used as a training cohort to evaluate the performance of ELF against liver histology. The best combined ELF-LSM algorithm was then validated in new cohort of 85 CHB patients not previously reported. Results In the training cohort, LSM has better performance of diagnosing advanced (≥F3) fibrosis (area under the receiver operating characteristics curve [AUROC] 0.83, 95% confidence interval [CI 0.76-0.91] than ELF (AUROC 0.69, 95% CI 0.63-0.75). The optimal cut-off values of ELF were 8.4 to exclude advanced fibrosis, and 10.8 to confirm advanced fibrosis. In the training cohort, an ELF ≤ 8.4 had a sensitivity of 95% to exclude advanced fibrosis; an ELF > 10.8 had a specificity of 92% to confirm advanced fibrosis. In the combined algorithm, low ELF or low LSM could be used to exclude advanced fibrosis as both of them had high sensitivity (≥90%). To confirm advanced fibrosis, agreement between high ELF and high LSM could improve the negative predictive value specificity (from 65% and 74% to 80%). Conclusions An Enhanced Liver Fibrosis - liver stiffness measurement algorithm could improve the accuracy of prediction of either ELF or LSM alone. Liver biopsy could be correctly avoided in approximately 60% of patients.
机译:背景技术待确定增强型肝纤维化(ELF; ADVIA Centaur,西门子医疗诊断公司,美国纽约州塔里敦)在评估慢性乙型肝炎(CHB)中肝纤维化的准确性。目的推导并验证组合的ELF-肝硬度测量(LSM)算法,以预测CHB患者的晚期纤维化。方法利用先前报道的238名CHB患者队列的数据,将基于ALT的LSM肝纤维化算法用作训练队列,以评估ELF对肝脏组织学的表现。然后,在先前未报道的85名CHB患者的新队列中验证了最佳组合的ELF-LSM算法。结果在训练队列中,LSM在诊断晚期(≥F3)纤维化方面具有更好的表现(在接受者工作特征曲线下的区域[AUROC] 0.83,95%的置信区间[CI 0.76-0.91]),比ELF(AUROC 0.69,95%CI 0.63-0.75)。ELF的最佳临界值是8.4,排除晚期纤维化,10.8确认晚期纤维化;在训练队列中,ELF≤8.4的敏感性为95%,排除晚期纤维化; ELF> 10.8可以确认晚期纤维化的特异性为92%,在组合算法中,低ELF或低LSM可以排除晚期纤维化,因为它们都具有较高的敏感性(≥90%)。结论ELF和高LSM可以提高阴性预测值的特异性(从65%和74%增至80%)结论结论增强肝纤维化-肝硬度测量算法可以提高单独预测ELF或LSM的准确性,肝活检可以正确避免约有60%的患者。

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