Huang Long, Feng Luhuai, Lu Yang, Hu Bobin, Liang Hongqian, Ren Aoli, Wang Hang, He Wenming, Deng Caifang, Su Minghua, Jiang Jianning
Department of Infectious Diseases, The First Affiliated Hospital of Guangxi Medical University, Nanning, Guangxi, China.
Key Laboratory of Early Prevention and Treatment for Regional High Frequency Tumor, (Guangxi Medical University), Ministry of Education, Nanning, Guangxi, China.
Front Med (Lausanne). 2025 Feb 21;12:1529201. doi: 10.3389/fmed.2025.1529201. eCollection 2025.
Chronic viral hepatitis B (CHB) is a prevalent liver disease with primary hepatic carcinoma (HCC) as a severe complication. Clinical prediction models have gained attention for predicting HBV-related HCC (HBV-HCC). This study aimed to evaluate the predictive value of existing models for HBV-HCC through meta-analysis.
Meta-analysis.
Embase, PubMed, the Chinese Biomedical Literature Service System, and the Cochrane database were used for searches between 1970 and 2022.
A meta-analysis was conducted to assess original studies on HBV-HCC prediction models. The REACH-B, GAGHCC, and CUHCC models were externally validated in a Guangxi cohort. The C-index and calibration curve evaluated 5 years predictive performance, with subgroup analysis by region and risk bias.
After screening, 27 research articles were included, covering the GAGHCC, REACH-B, PAGE-B, CU-HCC, CAMD, and mPAGE-B models. The meta-analysis indicated that these models had moderate discrimination in predicting HCC risk in HBV-infected patients, with C-index values from 0.75 to 0.82. The mPAGE-B (0.79, 95% CI: 0.79-0.80), GAG-HCC (0.80, 95% CI: 0.78-0.82), and CAMD (0.80, 95% CI: 0.78-0.81) models demonstrated better discrimination than others ( < 0.05), but most studies did not report model calibration. Subgroup analysis suggested that ethnicity and research bias might contribute to differences in model discrimination. Sensitivity analysis indicated stable meta-analysis results. The REACH-B, GAGHCC, CUHCC, PAGE-B, and mPAGE-B models had average predictive performance in Guangxi, with medium to low 3 and 5 years HCC risk prediction discrimination.
Existing models have predictive value for HBV-infected patients but show geographical limitations and reduced effectiveness in Guangxi.
慢性乙型病毒性肝炎(CHB)是一种常见的肝脏疾病,原发性肝癌(HCC)是其严重并发症。临床预测模型在预测HBV相关肝癌(HBV-HCC)方面受到关注。本研究旨在通过荟萃分析评估现有模型对HBV-HCC的预测价值。
荟萃分析。
使用Embase、PubMed、中国生物医学文献服务系统和Cochrane数据库检索1970年至2022年期间的文献。
进行荟萃分析以评估关于HBV-HCC预测模型的原始研究。REACH-B、GAGHCC和CUHCC模型在广西队列中进行了外部验证。C指数和校准曲线评估了5年预测性能,并按地区和风险偏倚进行亚组分析。
筛选后纳入27篇研究文章,涵盖GAGHCC、REACH-B、PAGE-B、CU-HCC、CAMD和mPAGE-B模型。荟萃分析表明,这些模型在预测HBV感染患者的HCC风险方面具有中等辨别力,C指数值在0.75至0.82之间。mPAGE-B(0.79,95%CI:0.79-0.80)、GAG-HCC(0.80,95%CI:0.78-0.82)和CAMD(0.80,95%CI:0.78-0.81)模型表现出比其他模型更好的辨别力(<0.05),但大多数研究未报告模型校准情况。亚组分析表明,种族和研究偏倚可能导致模型辨别力的差异。敏感性分析表明荟萃分析结果稳定。REACH-B、GAGHCC、CUHCC、PAGE-B和mPAGE-B模型在广西的预测性能一般,3年和5年HCC风险预测辨别力为中低水平。
现有模型对HBV感染患者具有预测价值,但存在地域局限性,在广西的有效性降低。