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Multilevel analyses of on-demand medication data, with an application to the treatment of Female Sexual Interest/Arousal Disorder

机译:按需药物数据的多层次分析,及其在治疗女性性兴趣/性交障碍中的应用

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摘要

Data from clinical trials investigating on-demand medication often consist of an intentionally varying number of measurements per patient. These measurements are often observations of discrete events of when the medication was taken, including for example data on symptom severity. In addition to the varying number of observations between patients, the data have another important feature: they are characterized by a hierarchical structure in which the events are nested within patients. Traditionally, the observed events of patients are aggregated into means and subsequently analyzed using, for example, a repeated measures ANOVA. This procedure has drawbacks. One drawback is that these patient means have different standard errors, first, because the variance of the underlying events differs between patients and second, because the number of events per patient differs. In this paper, we argue that such data should be analyzed by applying a multilevel analysis using the individual observed events as separate nested observations. Such a multilevel approach handles this drawback and it also enables the examination of varying drug effects across patients by estimating random effects. We show how multilevel analyses can be applied to on-demand medication data from a clinical trial investigating the efficacy of a drug for women with low sexual desire. We also explore linear and quadratic time effects that can only be performed when the individual events are considered as separate observations and we discuss several important statistical topics relevant for multilevel modeling. Taken together, the use of a multilevel approach considering events as nested observations in these types of data is advocated as it is more valid and provides more information than other (traditional) methods.
机译:来自临床研究的按需药物研究数据通常包括每位患者有意改变的测量数量。这些测量值通常是服用药物时离散事件的观察结果,例如症状严重程度数据。除了患者之间观察次数的变化之外,数据还具有另一个重要特征:它们的特征是层次结构,其中事件嵌套在患者体内。传统上,将患者的观察事件汇总为平均值,然后使用例如重复测量方差分析进行分析。该过程具有缺点。一个缺点是这些患者均值具有不同的标准误,首先是因为潜在事件的差异在患者之间不同,其次是因为每个患者的事件数量不同。在本文中,我们认为应该通过将单个观察到的事件作为单独的嵌套观察值进行多级分析来分析此类数据。这种多层次的方法解决了这个缺点,并且还可以通过估计随机作用来检查不同患者的药物作用。我们展示了如何将多层次分析应用于来自临床试验的按需用药数据,该试验研究了一种药物对性欲低下的女性的疗效。我们还探讨了仅在将单个事件视为独立观察值时才能执行的线性和二次时间效应,并且我们讨论了与多级建模相关的几个重要统计主题。综上所述,提倡使用多级方法将事件视为这些类型的数据中的嵌套观测值,因为它比其他(传统)方法更有效且提供更多信息。

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