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A comparison of reweighting estimators of average treatment effects in real world populations

机译:现实世界群体平均治疗效果重载估计的比较

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Regulatory agencies typically evaluate the efficacy and safety of new interventions and grant commercial approval based on randomized controlled trials (RCTs). Other major healthcare stakeholders, such as insurance companies and health technology assessment agencies, while basing initial access and reimbursement decisions on RCT results, are also keenly interested in whether results observed in idealized trial settings will translate into comparable outcomes in real world settings-that is, into so-called "real world" effectiveness. Unfortunately, evidence of real world effectiveness for new interventions is not available at the time of initial approval. To bridge this gap, statistical methods are available to extend the estimated treatment effect observed in a RCT to a target population. The generalization is done by weighting the subjects who participated in a RCT so that the weighted trial population resembles a target population. We evaluate a variety of alternative estimation and weight construction procedures using both simulations and a real world data example using two clinical trials of an investigational intervention for Alzheimer's disease. Our results suggest an optimal approach to estimation depends on the characteristics of source and target populations, including degree of selection bias and treatment effect heterogeneity.
机译:监管机构通常会评估新干预措施的有效性和安全性,并根据随机对照试验(RCT)授予商业批准。其他主要医疗保健利益相关者,如保险公司和卫生技术评估机构,在根据RCT结果做出最初的准入和报销决定的同时,也对理想化试验环境中观察到的结果是否会转化为现实世界环境中的可比结果,即所谓的“现实世界”有效性非常感兴趣。不幸的是,在最初批准时,还没有新干预措施的实际有效性证据。为了缩小这一差距,可以使用统计方法将RCT中观察到的估计治疗效果扩展到目标人群。通过对参与随机对照试验的受试者进行加权,使加权后的试验人群与目标人群相似,从而实现概括。我们使用模拟和现实世界的数据示例,使用阿尔茨海默病研究干预的两项临床试验,评估了各种替代估计和体重构建程序。我们的结果表明,最佳的估计方法取决于源和目标群体的特征,包括选择偏差的程度和治疗效果的异质性。

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