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Improving analysis practice of continuous adverse event outcomes in randomised controlled trials - a distributional approach

机译:改进随机对照试验中连续不良事件结果的分析实践 - 一种分布方法

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Randomised controlled trials (RCTs) provide valuable information for developing harm profiles but current analysis practices to detect between-group differences are suboptimal. Drug trials routinely screen continuous clinical and biological data to monitor participant harm. These outcomes are regularly dichotomised into abnormal/normal values for analysis. Despite the simplicity gained for clinical interpretation, it is well established that dichotomising outcomes results in a considerable reduction in information and thus statistical power. We propose an automated procedure for the routine implementation of the distributional method for the dichotomisation of continuous outcomes proposed by Peacock and Sauzet, which retains the precision of the comparison of means. We explored the use of a distributional approach to compare differences in proportions based on the comparison of means which retains the power of the latter. We applied this approach to the screening of clinical and biological data as a means to detect ‘signals’ for potential adverse drug reactions (ADRs). Signals can then be followed-up in further confirmatory studies. Three distributional methods suitable for different types of distributions are described. We propose the use of an automated approach using the observed data to select the most appropriate distribution as an analysis strategy in a RCT setting for multiple continuous outcomes. We illustrate this approach using data from three RCTs assessing the efficacy of mepolizumab in asthma or COPD. Published reference ranges were used to define the proportions of participants with abnormal values for a subset of 10 blood tests. The between-group distributional and empirical differences in proportions were estimated for each blood test and compared. Within trials, the distributions varied across the 10 outcomes demonstrating value in a practical approach to selecting the distributional method in the context of multiple adverse event outcomes. Across trials, there were three outcomes where the method chosen by the automated procedure varied for the same outcome. The distributional approach identified three signals (eosinophils, haematocrit, and haemoglobin) compared to only one when using the Fisher’s exact test (eosinophils) and two identified by use of the 95% confidence interval for the difference in proportions (eosinophils and potassium). When dichotomisation of continuous adverse event outcomes aids clinical interpretation, we advocate use of a distributional approach to retain statistical power. Methods are now easy to implement. Retaining information is especially valuable in the context of the analysis of adverse events in RCTs. The routine implementation of this automated approach requires further evaluation.
机译:随机对照试验(RCT)为开发伤害概况提供有价值的信息,但目前的分析实践可检测组间差异的差异。药物试验经常筛选连续的临床和生物数据,以监测参与者的伤害。这些结果经常分解成异常/正常值进行分析。尽管临床解释所获得的简单性,但很好地确定了二分辨率结果导致信息的相当大降低,从而导致统计权力。我们提出了一种自动化程序,了解孔雀和西区提出的连续结果的分配方法的常规实施方法,该方法保留了手段比较的精度。我们探讨了使用分配方法,以基于保持后者电力的手段的比较比较比较的差异。我们将这种方法应用于筛选临床和生物数据作为检测潜在不利药物反应(ADRS)的手段。然后可以在进一步的确认研究中进行信号。描述了适用于不同类型分布的三种分布方法。我们建议使用自动化方法使用观察到的数据选择最合适的分布作为多个连续结果的RCT设置中的分析策略。我们使用来自三个RCT的数据评估患有患有哮喘或COPD的蛋白质的疗效的数据来说明这种方法。已发布的参考范围用于定义10个血液测试子集的异常值的参与者的比例。每次血液测试估计比例的组间分布和实证差异。在试验中,分布在10个结果上变化,以实际的方法在于在多个不良事件结果的上下文中选择分配方法的实际方法。在试验中,有三种结果,其中自动化程序选择的方法变化了相同的结果。与使用Fisher的确切试验(嗜酸性粒细胞)和通过使用95%置信区间的差异(嗜酸性粒细胞和钾)差异而鉴定出鉴定的两种信号(嗜酸性粒细胞,血细胞比谱和血红蛋白)鉴定了三个信号(嗜酸性粒细胞当持续不良事件结果的二分法辅助临床解释时,我们倡导使用分配方法来保留统计权力。现在易于实施方法。在RCT的不良事件分析的情况下,保留信息特别有价值。这种自动化方法的常规实现需要进一步评估。

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