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首页> 外文期刊>International Journal of Obesity >Estimating and reporting treatment effects in clinical trials for weight management: using estimands to interpret effects of intercurrent events and missing data
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Estimating and reporting treatment effects in clinical trials for weight management: using estimands to interpret effects of intercurrent events and missing data

机译:估计和报告体重管理临床试验中的治疗效果:使用估价来解释常规事件和缺失数据的影响

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In the approval process for new weight management therapies, regulators typically require estimates of effect size. Usually, as with other drug evaluations, the placebo-adjusted treatment effect (i.e., the difference between weight losses with pharmacotherapy and placebo, when given as an adjunct to lifestyle intervention) is provided from data in randomized clinical trials (RCTs). At first glance, this may seem appropriate and straightforward. However, weight loss is not a simple direct drug effect, but is also mediated by other factors such as changes in diet and physical activity. Interpreting observed differences between treatment arms in weight management RCTs can be challenging; intercurrent events that occur after treatment initiation may affect the interpretation of results at the end of treatment. Utilizing estimands helps to address these uncertainties and improve transparency in clinical trial reporting by better matching the treatment-effect estimates to the scientific and/or clinical questions of interest. Estimands aim to provide an indication of trial outcomes that might be expected in the same patients under different conditions. This article reviews how intercurrent events during weight management trials can influence placebo-adjusted treatment effects, depending on how they are accounted for and how missing data are handled. The most appropriate method for statistical analysis is also discussed, including assessment of the last observation carried forward approach, and more recent methods, such as multiple imputation and mixed models for repeated measures. The use of each of these approaches, and that of estimands, is discussed in the context of the SCALE phase 3a and 3b RCTs evaluating the effect of liraglutide 3.0 mg for the treatment of obesity.
机译:在新重量管理疗法的批准过程中,监管机构通常需要效果大小的估计。通常,与其他药物评估一样,随机临床试验(RCT)中的数据提供安慰剂调整后的治疗效果(即,用药物治疗和安慰剂的重量损失与安慰剂之间的差异)提供来自随机临床试验(RCT)的数据。乍一看,这似乎是合适的和直截了当的。然而,体重减轻不是一种简单的直接药物效果,而且也是由其他因素的介导,例如饮食和身体活动的变化。解释重量管理RCT的治疗臂之间的观察差异可能是挑战性的;治疗启动后发生的常规事件可能会影响治疗结束时对结果的解释。利用估计值有助于解决这些不确定性,并通过更好地匹配对感兴趣的科学和/或临床问题的治疗效应估计来提高临床试验报告的透明度。估计旨在提供在不同条件下在同一患者中预期的试验结果的指示。本文审查了体重管理试验期间的常规事件如何影响安慰剂调整后的治疗效果,具体取决于它们的核算方式以及如何处理缺失数据。还讨论了最合适的统计分析方法,包括对最后一个观察的评估所带来的前进方法,以及更新的方法,例如用于重复措施的多重估算和混合模型。在比例相3A和3B RCT的背景下讨论了每个方法和预测的每个方法,评估丽格蛋白质3.0mg治疗肥胖症的效果。

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