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Electronic monitoring device event modelling on an individual-subject basis using adaptive Poisson regression.

机译:使用自适应Poisson回归在单个对象的基础上进行电子监视设备事件建模。

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An adaptive approach to Poisson regression modelling is presented for analysing event data from electronic devices monitoring medication-taking. The emphasis is on applying this approach to data for individual subjects although it also applies to data for multiple subjects. This approach provides for visualization of adherence patterns as well as for objective comparison of actual device use with prescribed medication-taking. Example analyses are presented using data on openings of electronic pill bottle caps monitoring adherence of subjects with HIV undergoing highly active antiretroviral therapies. The modelling approach consists of partitioning the observation period, computing grouped event counts/rates for intervals in this partition, and modelling these event counts/rates in terms of elapsed time after entry into the study using Poisson regression. These models are based on adaptively selected sets of power transforms of elapsed time determined by rule-based heuristic search through arbitrary sets of parametric models, thereby effectively generating a smooth non-parametric regression fit to the data. Models are compared using k-fold likelihood cross-validation.
机译:提出了一种适用于Poisson回归建模的自适应方法,用于分析来自监控用药情况的电子设备的事件数据。重点是将这种方法应用于单个主题的数据,尽管它也适用于多个主题的数据。这种方法提供了依从模式的可视化,以及客观比较实际使用处方药的设备使用情况。使用电子药瓶瓶盖的开口数据来进行示例分析,该数据监测正在接受高活性抗逆转录病毒疗法的HIV受试者的依从性。建模方法包括划分观察期,计算该分区中间隔的分组事件计数/速率,以及使用Poisson回归根据进入研究后的经过时间对这些事件计数/速率进行建模。这些模型基于通过任意组参数模型通过基于规则的启发式搜索确定的经过时间的幂选择功率变换集,从而有效地生成了对数据的平滑非参数回归拟合。使用k倍似然交叉验证比较模型。

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