Nonlinear mixed-effects models for HIV viral load trajectories before and after antiretroviral therapy interruption, incorporating left censoring.

Statistical communications in infectious diseases Pub Date : 2022-04-04 eCollection Date: 2022-01-01 DOI:10.1515/scid-2021-0001
Sihaoyu Gao, Lang Wu, Tingting Yu, Roger Kouyos, Huldrych F Günthard, Rui Wang
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引用次数: 1

Abstract

Objectives: Characterizing features of the viral rebound trajectories and identifying host, virological, and immunological factors that are predictive of the viral rebound trajectories are central to HIV cure research. We investigate if key features of HIV viral decay and CD4 trajectories during antiretroviral therapy (ART) are associated with characteristics of HIV viral rebound following ART interruption.

Methods: Nonlinear mixed effect (NLME) models are used to model viral load trajectories before and following ART interruption, incorporating left censoring due to lower detection limits of viral load assays. A stochastic approximation EM (SAEM) algorithm is used for parameter estimation and inference. To circumvent the computational intensity associated with maximizing the joint likelihood, we propose an easy-to-implement three-step method.

Results: We evaluate the performance of the proposed method through simulation studies and apply it to data from the Zurich Primary HIV Infection Study. We find that some key features of viral load during ART (e.g., viral decay rate) are significantly associated with important characteristics of viral rebound following ART interruption (e.g., viral set point).

Conclusions: The proposed three-step method works well. We have shown that key features of viral decay during ART may be associated with important features of viral rebound following ART interruption.

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抗逆转录病毒治疗中断前后HIV病毒载量轨迹的非线性混合效应模型,包括左删减。
目的:表征病毒反弹轨迹的特征,识别预测病毒反弹轨迹的宿主、病毒学和免疫学因素是HIV治愈研究的核心。我们研究了抗逆转录病毒治疗(ART)期间HIV病毒衰减和CD4轨迹的关键特征是否与ART中断后HIV病毒反弹的特征相关。方法:非线性混合效应(NLME)模型用于模拟抗逆转录病毒治疗中断前后的病毒载量轨迹,由于病毒载量测定的检出限较低,因此采用左审查法。采用随机逼近EM (SAEM)算法进行参数估计和推理。为了避免与最大化联合似然相关的计算强度,我们提出了一种易于实现的三步方法。结果:我们通过模拟研究评估了所提出方法的性能,并将其应用于苏黎世原发性HIV感染研究的数据。我们发现抗逆转录病毒治疗期间病毒载量的一些关键特征(如病毒衰减率)与抗逆转录病毒治疗中断后病毒反弹的重要特征(如病毒设定点)显著相关。结论:三步法效果良好。我们已经证明,抗逆转录病毒治疗期间病毒衰变的关键特征可能与抗逆转录病毒治疗中断后病毒反弹的重要特征有关。
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Study design approaches for future active-controlled HIV prevention trials. The role of randomization inference in unraveling individual treatment effects in early phase vaccine trials. Nonlinear mixed-effects models for HIV viral load trajectories before and after antiretroviral therapy interruption, incorporating left censoring. Estimation and interpretation of vaccine efficacy in COVID-19 randomized clinical trials Sample size calculation for active-arm trial with counterfactual incidence based on recency assay.
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