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A robust interrupted time series model for analyzing complex health care intervention data

机译:一种稳健的中断时间序列模型,用于分析复杂的保健干预数据

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摘要

Current health policy calls for greater use of evidence‐based care delivery services to improve patient quality and safety outcomes. Care delivery is complex, with interacting and interdependent components that challenge traditional statistical analytic techniques, in particular, when modeling a time series of outcomes data that might be “interrupted” by a change in a particular method of health care delivery. Interrupted time series (ITS) is a robust quasi‐experimental design with the ability to infer the effectiveness of an intervention that accounts for data dependency. Current standardized methods for analyzing ITS data do not model changes in variation and correlation following the intervention. This is a key limitation since it is plausible for data variability and dependency to change because of the intervention. Moreover, present methodology either assumes a prespecified interruption time point with an instantaneous effect or removes data for which the effect of intervention is not fully realized. In this paper, we describe and develop a novel robust interrupted time series (robust‐ITS) model that overcomes these omissions and limitations. The robust‐ITS model formally performs inference on (1) identifying the change point; (2) differences in preintervention and postintervention correlation; (3) differences in the outcome variance preintervention and postintervention; and (4) differences in the mean preintervention and postintervention. We illustrate the proposed method by analyzing patient satisfaction data from a hospital that implemented and evaluated a new nursing care delivery model as the intervention of interest. The robust‐ITS model is implemented in an R Shiny toolbox, which is freely available to the community.
机译:当前的健康政策要求更多地利用循证护理送货服务,以提高患者质量和安全结果。护理交付是复杂的,具有挑战传统统计分析技术的交互和相互依存的组件,特别是在模拟可能是“中断”的时间序列,这些数据可能是通过改变保健递送的特定方法的变化。中断时间序列(其)是一种强大的准实验设计,具有推断出用于数据依赖性的干预效果的能力。用于分析其数据的当前标准化方法不会在干预后模拟变化和相关性的变化。这是一个关键限制,因为由于干预,数据变异性和依赖性的依赖性是合理的。此外,存在的方法是假设具有瞬时效果的预先确定的中断时间点,或者去除干预效果不完全实现的数据。在本文中,我们描述并开发了一种克服了这些遗漏和限制的新型强大的中断时间序列(鲁棒 - ITS)模型。它的模型正式对识别变化点的(1)进行推断; (2)预领取和初期关联的差异; (3)结果方差差异差异和初期; (4)平均预极处理和临床突出的差异。我们通过分析来自所实施的医院的患者满意度数据作为利益干预,通过分析来自所实施的医院的患者满意度数据来说明所提出的方法。它的型号是在一个闪亮的工具箱中实现的,它可以自由地提供给社区。

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