External validation of models to predict hepatocellular carcinoma in Hepatitis C Virus cured F3-F4 patients.

IF 5.8 2区 医学 Q1 GASTROENTEROLOGY & HEPATOLOGY
United European Gastroenterology Journal Pub Date : 2024-09-01 Epub Date: 2024-05-08 DOI:10.1002/ueg2.12571
Ângela Carvalho-Gomes, Tsveta Vladi Valcheva Valcheva, Iván Sahuco, Enrique Vidal, Laura Martínez-Arenas, Carmen Vinaixa, Victoria Aguilera, Sónia García García, Marina Berenguer
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引用次数: 0

Abstract

Background & aims: Several hepatocellular carcinoma (HCC) risk-models have been developed to individualise patient surveillance following sustained viral response (SVR) in Hepatitis C Virus patients. Validation of these models in different cohorts is an important step to incorporate a more personalised risk assessment in clinical practice. We aimed at applying these models to stratify the risk in our patients and potentially determine cost-saving associated with individualised HCC risk-stratification screening strategy.

Methods: Patients with baseline F3-4 fibrosis treated with new oral direct-acting antivirals who had reached a SVR were regularly followed as part of the HCC surveillance strategy. Six models were applied: Pons, aMAP, Ioannou, HCC risk, Alonso and Semmler. Validation of the models was performed based on sensitivity and the proportion of patients labelled as "high risk".

Results: After excluding 557 with less than 3 fibrosis, 12 without SVR, 18 with a follow up (FU) <1 year, 17 transplant recipients, 16 lost to FU and 31 with HCC at time of antiviral therapy, our cohort consisted of 349 F3-4 SVR patients. Twenty-three patients (6.6%) developed HCC after a median FU of 5.12 years. The sensitivity of the different models varied between 0.17 (Semmler7noalcohol) and 1 (Alonso A and aMAP). The lowest proportion of high-risk patients corresponded to the Semmler-noalcohol model (5%). Sixty-three and 90% of the Alonso A and aMAP patients, respectively were labelled as high risk. The most reliable HCC risk-model applied to our cohort to predict HCC development is the Alonso model (based on fibrosis stage assessed by liver stiffness measurements or Fibrosis-4 index (FIB-4) at baseline and after 1 year, and albumin levels at 1 year) with a-100% sensitivity in detecting HCC among those at high risk and 63% labelled as high risk. The application of the model would have saved the cost of 1290 ultrasound no longer being performed in the 37% low-risk group.

Conclusion: In our cohort, the Alonso A model allows the most reliable reduction in HCC screening resulting in safely stopping life-long monitoring in about a third of F3-F4 patients achieving SVR with DAAs.

丙型肝炎病毒治愈 F3-F4 患者肝细胞癌预测模型的外部验证。
背景和目的:目前已开发出几种肝细胞癌(HCC)风险模型,用于对丙型肝炎病毒患者持续病毒应答(SVR)后的患者进行个体化监测。在不同队列中验证这些模型是将更个性化的风险评估纳入临床实践的重要一步。我们的目标是应用这些模型对患者进行风险分层,并确定个体化 HCC 风险分层筛查策略可能带来的成本节约:方法:作为 HCC 监测策略的一部分,我们对接受新型口服直接作用抗病毒药物治疗并获得 SVR 的基线 F3-4 纤维化患者进行了定期随访。应用了六种模型:Pons、aMAP、Ioannou、HCC 风险、Alonso 和 Semmler。根据灵敏度和 "高风险 "患者比例对模型进行了验证:在排除了 557 例纤维化程度低于 3 级的患者、12 例无 SVR 的患者、18 例有随访(FU)的患者后,我们得出结论:在我们的队列中,阿隆索-塞姆勒(Alonso-A-Semler)模型是最有效的:在我们的队列中,阿隆索 A 模型可以最可靠地减少 HCC 筛查,从而使约三分之一的 F3-F4 患者在使用 DAAs 后获得 SVR,从而可以安全地停止终身监测。
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来源期刊
United European Gastroenterology Journal
United European Gastroenterology Journal GASTROENTEROLOGY & HEPATOLOGY-
CiteScore
10.50
自引率
13.30%
发文量
147
期刊介绍: United European Gastroenterology Journal (UEG Journal) is the official Journal of the United European Gastroenterology (UEG), a professional non-profit organisation combining all the leading European societies concerned with digestive disease. UEG’s member societies represent over 22,000 specialists working across medicine, surgery, paediatrics, GI oncology and endoscopy, which makes UEG a unique platform for collaboration and the exchange of knowledge.
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