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Predicting short-term interruptions of antiretroviral therapy from summary adherence data: Development and test of a probability model

机译:从汇总依从性数据预测抗逆转录病毒治疗的短期中断:概率模型的开发和检验

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摘要

Antiretroviral therapy (ART) for HIV is vulnerable to unplanned treatment interruptions–consecutively missed doses over a series of days–which can result in virologic rebound. Yet clinicians lack a simple, valid method for estimating the risk of interruptions. If the likelihood of ART interruption could be derived from a convenient-to-gather summary measure of medication adherence, it might be a valuable tool for both clinical decision-making and research. We constructed an a priori probability model of ART interruption based on average adherence and tested its predictions using data collected on 185 HIV-infected, treatment-naïve individuals over the first 90 days of ART in a prospective cohort study in Mbarara, Uganda. The outcome of interest was the presence or absence of a treatment gap, defined as >72 hours without a dose. Using the pre-determined value of 0.50 probability as the cut point for predicting an interruption, the classification accuracy of the model was 73% (95% CI = 66%– 79%), the specificity was 87% (95% CI = 79%– 93%), and the sensitivity was 59% (95% CI = 48%– 69%). Overall model performance was satisfactory, with an area under the receiver operator characteristic curve (AUROC) of 0.85 (95% CI = 0.80–0.91) and Brier score of 0.20. The study serves as proof-of-concept that the probability model can accurately differentiate patients on the continuum of risk for short-term ART interruptions using a summary measure of adherence. The model may also aid in the design of targeted interventions.
机译:针对HIV的抗逆转录病毒疗法(ART)容易遭受计划外的治疗中断-连续数天连续错过剂量-可能导致病毒学反弹。然而,临床医生缺乏一种简单,有效的方法来估计中断的风险。如果可以从对药物依从性的方便汇总总结中得出ART中断的可能性,那么它可能是临床决策和研究的宝贵工具。我们在乌干达姆巴拉拉市进行的一项前瞻性队列研究中,基于平均依从性构建了一个抗病毒治疗中断的先验概率模型,并使用在抗病毒治疗的前90天内收集的185名受HIV感染,未接受过治疗的个体的数据测试了其预测。感兴趣的结果是治疗间隙的存在与否,定义为无剂量> 72小时。使用0.50概率的预定值作为预测中断的切入点,该模型的分类准确性为73%(95%CI = 66%–79%),特异性为87%(95%CI = 79) %– 93%),灵敏度为59%(95%CI = 48%–69%)。总体模型性能令人满意,接收器操作员特征曲线(AUROC)下的面积为0.85(95%CI = 0.80-0.91),且Brier得分为0.20。该研究作为概念证明,即概率模型可以使用依从性的汇总指标,在短期ART中断的连续风险中准确区分患者。该模型还可以帮助设计有针对性的干预措施。

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