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基于长期抗病毒治疗期间血清 qHBsAg 纵向轨迹的 HBsAg 丢失高精度模型。

High accuracy model for HBsAg loss based on longitudinal trajectories of serum qHBsAg throughout long-term antiviral therapy.

机构信息

Guangdong Provincial Key Laboratory of Viral Hepatitis Research, Guangdong Provincial Clinical Research Center for Viral Hepatitis, Key Laboratory of Infectious Diseases Research in South China, Ministry of Education, Department of Infectious Diseases, Southern Medical University Nanfang Hospital, Guangzhou, China

Guangdong Provincial Key Laboratory of Viral Hepatitis Research, Guangdong Provincial Clinical Research Center for Viral Hepatitis, Key Laboratory of Infectious Diseases Research in South China, Ministry of Education, Department of Infectious Diseases, Southern Medical University Nanfang Hospital, Guangzhou, China.

出版信息

Gut. 2024 Sep 9;73(10):1725-1736. doi: 10.1136/gutjnl-2024-332182.

Abstract

OBJECTIVE

Hepatitis B surface antigen (HBsAg) loss is the optimal outcome for patients with chronic hepatitis B (CHB) but this rarely occurs with currently approved therapies. We aimed to develop and validate a prognostic model for HBsAg loss on treatment using longitudinal data from a large, prospectively followed, nationwide cohort.

DESIGN

CHB patients receiving nucleos(t)ide analogues as antiviral treatment were enrolled from 50 centres in China. Quantitative HBsAg (qHBsAg) testing was prospectively performed biannually per protocol. Longitudinal discriminant analysis algorithm was used to estimate the incidence of HBsAg loss, by integrating clinical data of each patient collected during follow-up.

RESULTS

In total, 6792 CHB patients who had initiated antiviral treatment 41.3 (IQR 7.6-107.6) months before enrolment and had median qHBsAg 2.9 (IQR 2.3-3.3) logIU/mL at entry were analysed. With a median follow-up of 65.6 (IQR 51.5-84.7) months, the 5-year cumulative incidence of HBsAg loss was 2.4%. A prediction model integrating all qHBsAg values of each patient during follow-up, designated GOLDEN model, was developed and validated. The AUCs of GOLDEN model were 0.981 (95% CI 0.974 to 0.987) and 0.979 (95% CI 0.974 to 0.983) in the training and external validation sets, respectively, and were significantly better than those of a single qHBsAg measurement. GOLDEN model identified 8.5%-10.4% of patients with a high probability of HBsAg loss (5-year cumulative incidence: 17.0%-29.1%) and was able to exclude 89.6%-91.5% of patients whose incidence of HBsAg loss is 0. Moreover, the GOLDEN model consistently showed excellent performance among various subgroups.

CONCLUSION

The novel GOLDEN model, based on longitudinal qHBsAg data, accurately predicts HBsAg clearance, provides reliable estimates of functional hepatitis B virus (HBV) cure and may have the potential to stratify different subsets of patients for novel anti-HBV therapies.

摘要

目的

乙肝表面抗原(HBsAg)的清除是慢性乙型肝炎(CHB)患者的最佳治疗结局,但目前批准的治疗方法很少能达到这一目标。本研究旨在通过对一项大型、前瞻性、全国性队列的纵向数据进行分析,建立并验证一种治疗过程中 HBsAg 清除的预测模型。

设计

本研究共纳入了来自中国 50 家中心的接受核苷(酸)类似物抗病毒治疗的 CHB 患者。根据方案,每 6 个月对患者进行 2 次 HBsAg 定量(qHBsAg)检测。采用纵向判别分析算法,整合每位患者在随访期间收集的临床数据,估计 HBsAg 清除的发生率。

结果

本研究共分析了 6792 例在研究入组前 41.3(IQR:7.6-107.6)个月开始抗病毒治疗且基线 qHBsAg 中位数为 2.9(IQR:2.3-3.3)logIU/mL 的 CHB 患者。中位随访 65.6(IQR:51.5-84.7)个月后,5 年累积 HBsAg 清除率为 2.4%。建立并验证了一种整合患者随访期间所有 qHBsAg 值的预测模型,命名为 GOLDEN 模型。该模型在训练集和外部验证集中的 AUC 分别为 0.981(95%CI:0.974-0.987)和 0.979(95%CI:0.974-0.983),显著优于单次 qHBsAg 测量。GOLDEN 模型可识别出 8.5%-10.4%的高概率 HBsAg 清除患者(5 年累积发生率:17.0%-29.1%),并可排除 89.6%-91.5%的 HBsAg 清除率为 0 的患者。此外,该模型在各种亚组中均表现出优异的性能。

结论

基于纵向 qHBsAg 数据的新型 GOLDEN 模型能够准确预测 HBsAg 清除,为功能性乙型肝炎病毒(HBV)治愈提供可靠估计,并可能有助于对新型抗 HBV 治疗进行分层。

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