早期病毒动态预测分析治疗中断后的艾滋病毒治疗后控制情况

Gesham Magombedze, Elena Vendrame, Devi SenGupta, Romas Geleziunas, Susan Little, Davey Smith, Bruce Walker, Jean-Pierre Routy, Frederick M Hecht, Tae-Wook Chun, Michael Sneller, Jonathan Z Li, Steven G Deeks, Michael J Peluso
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摘要

背景 制定艾滋病毒治愈策略的一个关键研究重点是确定与治疗后持续控制相关的病毒动态和生物标志物。如果能预测治疗后持续控制或不控制的可能性,就能最大限度地缩短那些注定无法控制的患者停止抗逆转录病毒疗法(ART)的时间,并延长那些注定能控制的患者停止抗逆转录病毒疗法的时间。方法 使用数学建模和机器学习方法,利用几项研究中参与者中断抗逆转录病毒疗法的病毒动力学数据,对长期病毒学控制的病毒学预测因素进行描述。利用从治疗中断时开始积累的数据,复制临床研究中的实时数据收集,并将结果分为治疗后控制(血浆病毒血症在 3 个时间点中的 2 个时间点≤400 拷贝/毫升,持续时间≥24 周)或非控制,从而确定抗逆转录病毒治疗后结果的预测因素。结果 病毒控制的潜在预测因素是反弹时间、初始反弹率和血浆病毒血症峰值。我们发现,可以在病毒反弹后 3 周内确定哪些人将成为非控制者(预测得分:准确率 80%;灵敏度 82%;特异性 71%)。结论 鉴于在治愈相关试验中广泛使用分析性治疗中断,这些预测指标可能有助于通过早期识别不太可能成为治疗后控制者的人群来提高分析性治疗中断的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Viral Dynamics Predict HIV Post-Treatment Control After Analytic Treatment Interruption
Background A key research priority for developing an HIV cure strategy is to define the viral dynamics and biomarkers associated with sustained post-treatment control. The ability to predict the likelihood of sustained post-treatment control or non-control could minimize the time off antiretroviral therapy (ART) for those destined to not control and anticipate longer periods off ART for those destined to control. Methods Mathematical modeling and machine learning were used to characterize virologic predictors of long-term virologic control using viral kinetics data from several studies in which participants interrupted ART. Predictors of post-ART outcomes were characterized using data accumulated from the time of treatment interruption, replicating real-time data collection in a clinical study, and classifying outcomes as either post-treatment control (plasma viremia ≤400 copies/mL at 2 of 3 time points for ≥24 weeks) or non-control. Results Potential predictors of virologic control were the time to rebound, the rate of initial rebound, and the peak plasma viremia. We found that people destined to be non-controllers could be identified within 3 weeks of rebound (prediction scores: accuracy, 80%; sensitivity, 82%; specificity, 71%). Conclusions Given the widespread use of analytic treatment interruption in cure-related trials, these predictors may be useful to increase the safety of analytic treatment interruption through the early identification of people who are unlikely to become post-treatment controllers.
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