Université Paris Cité, Institut National de la Santé et de la Recherche Médicale, Infection, Antimicrobials, Modelling, Evolution, Paris, France.
Pharmaceutical Sciences, Roche Pharmaceutical Research and Early Development, Roche Innovation Center, Basel, Switzerland.
Clin Pharmacol Ther. 2023 Feb;113(2):390-400. doi: 10.1002/cpt.2798. Epub 2023 Jan 11.
Antiviral treatments against hepatitis B virus (HBV) suppress viral replication but do not eradicate the virus, and need therefore to be taken lifelong to avoid relapse. Mathematical models can be useful to support the development of curative anti-HBV agents; however, they mostly focus on short-term HBV DNA data and neglect the complex host-pathogen interaction. This work aimed to characterize the effect of treatment with lamivudine and/or pegylated interferon (Peg-IFN) in 1,300 patients (hepatitis B envelope antigen (HBeAg)-positive and HBeAg-negative) treated for 1 year. A mathematical model was developed incorporating two populations of infected cells, namely , with a high transcriptional activity, that progressively evolve into , at a rate , representing cells with integrated HBV DNA that have a lower transcriptional activity. Parameters of the model were estimated in patients treated with lamivudine or Peg-IFN alone (N = 894), and the model was then validated in patients treated with lamivudine plus Peg-IFN (N = 436) to predict the virological response after a year of combination treatment. Lamivudine had a larger effect in blocking viral production than Peg-IFN (99.4-99.9% vs. 91.8-95.1%); however, Peg-IFN had a significant immunomodulatory effect, leading to an enhancement of the loss rates of (×1.7 in HBeAg-positive patients), (> ×7 irrespective of HBeAg status), and (×4.6 and ×2.0 in HBeAg-positive and HBeAg-negative patients, respectively). Using this model, we were able to describe the synergy of the different effects occurring during treatment with combination and predicted an effect of 99.99% on blocking viral production. This framework can therefore support the optimization of combination therapy with new anti-HBV agents.
抗病毒治疗乙型肝炎病毒 (HBV) 可以抑制病毒复制,但不能根除病毒,因此需要终身服用以避免复发。数学模型可用于支持治疗乙型肝炎病毒的药物的开发;然而,它们主要关注短期 HBV DNA 数据,忽略了复杂的宿主-病原体相互作用。本研究旨在描述拉米夫定和/或聚乙二醇干扰素 (Peg-IFN) 在 1300 名(HBeAg 阳性和 HBeAg 阴性)患者中治疗 1 年的效果。该模型纳入了两个受感染细胞群体,即 ,具有高转录活性,它们以 的速率逐渐进化为 ,代表具有整合 HBV DNA 的细胞,转录活性较低。模型参数是在单独接受拉米夫定或 Peg-IFN 治疗的患者(N = 894)中进行估计的,然后在接受拉米夫定联合 Peg-IFN 治疗的患者(N = 436)中进行验证,以预测联合治疗 1 年后的病毒学应答。拉米夫定在抑制病毒产生方面的作用大于 Peg-IFN(99.4-99.9% vs. 91.8-95.1%);然而,Peg-IFN 具有显著的免疫调节作用,导致 的丧失率显著增加(HBeAg 阳性患者增加 1.7 倍), 的丧失率显著增加(无论 HBeAg 状态如何,增加超过 7 倍), 的丧失率显著增加(HBeAg 阳性和 HBeAg 阴性患者分别增加 4.6 倍和 2.0 倍)。使用该模型,我们能够描述联合治疗期间不同作用的协同作用,并预测对病毒产生的阻断作用达到 99.99%。因此,该框架可以支持优化新型抗乙型肝炎病毒药物的联合治疗。