医学
内科学
丙型肝炎
丙型肝炎病毒
入射(几何)
人口
背景(考古学)
传输(电信)
肝硬化
作为预防的治疗
病毒载量
免疫学
病毒
环境卫生
古生物学
物理
电气工程
抗逆转录病毒疗法
光学
生物
工程类
作者
Anthony Cousien,Viet Chi Tran,Sylvie Deuffic-Burban,Marie Jauffret-Roustide,Jean-Stéphane Dhersin,Yazdan Yazdanpanah
出处
期刊:Hepatology
[Wiley]
日期:2016-04-01
卷期号:63 (4): 1090-1101
被引量:78
摘要
Hepatitis C virus (HCV) seroprevalence remains high in people who inject drug (PWID) populations, often above 60%. Highly effective direct-acting antiviral (DAA) regimens (90% efficacy) are becoming available for HCV treatment. This therapeutic revolution raises the possibility of eliminating HCV from this population. However, for this, an effective cascade of care is required. In the context of the available DAA therapies, we used a dynamic individual-based model including a model of the PWID social network to simulate the impact of improved testing, linkage to care, and adherence to treatment, and of modified treatment recommendation on the transmission and on the morbidity of HCV in PWID in France. Under the current incidence and cascade of care, with treatment initiated at fibrosis stage ≥F2, HCV prevalence decreased from 42.8% to 24.9% (95% confidence interval: 24.8-24.9) after 10 years. Changing treatment initiation criteria to treat from F0 was the only intervention leading to a substantial additional decrease in prevalence, which fell to 11.6% (95% CI: 11.6-11.7) at 10 years. Combining this change with improved testing, linkage to care, and adherence to treatment decreased HCV prevalence to 7.0% (95% CI: 7.0-7.1) at 10 years and avoided 15% (95% CI: 14-17) and 29% (95% CI: 28-30) of cirrhosis complications over 10 and 40 years, respectively.Major decreases in prevalent HCV infections occur only when treatment is initiated at early stages of fibrosis, suggesting that systematic treatment in PWID, where incidence remains high, would be beneficial. However, elimination within the 10 next years will be difficult to achieve using treatment alone, even with a highly improved cascade of care.
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