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Inverse Intensity Weighting in Generalized Linear Models as an Option for Analyzing Longitudinal Data with Triggered Observations

机译:广义线性模型中的强度反比加权作为触发数据分析纵向数据的一种选择

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摘要

Longitudinal epidemiologic studies with irregularly observed categorical outcomes present considerable analytical challenges. Generalized linear models (GLMs) tolerate without bias only values missing completely at random and assume that all observations contribute equally. A triggered sampling study design and an analysis using inverse intensity weights in a GLM offer promise of effectively addressing both shortcomings. A triggered sampling design generates irregularly spaced outcomes because, in addition to regularly scheduled follow-up interviews, it specifies that data be collected after a “trigger” (a decline in health status during follow-up) occurs. It is intended to mitigate bias introduced by study participant loss to follow-up. For each observation, an inverse intensity weight is calculated from an Anderson-Gill recurrent-event regression model whose events of interest are observed interviews; the weights help to equalize observation contributions. Investigators in the Longitudinal Examination of Attitudes and Preferences (LEAP) Study (1999–2002), a Connecticut study of seriously ill older adults at the end of life, used a triggered sampling design. In this paper, the authors analyze data from the LEAP Study to illustrate the methods and benefits of inverse intensity weighting in GLMs. An additional benefit of the analytical approach presented is that it allows for assessment of the utility of triggered sampling in longitudinal studies.
机译:纵向的流行病学研究,观察到分类结果不规则,提出了相当大的分析挑战。广义线性模型(GLM)可以无偏差地容忍随机完全缺失的值,并假定所有观察值均相等。触发采样研究设计和在GLM中使用反强度权重进行的分析有望有效解决这两个缺点。触发的采样设计会产生不规则间隔的结果,因为除了定期安排的后续采访之外,它还指定在“触发”(随访期间健康状况下降)发生后收集数据。目的是减轻因研究参与者流失而导致的偏见。对于每个观察,从安德森-吉尔(Anderson-Gill)复发事件回归模型计算反强度权重,该模型的关注事件是访谈访谈。权重有助于使观测贡献相等。态度和偏好纵向检查(LEAP)研究(1999-2002年)是康涅狄格州针对生命晚期重病老年人的一项研究,研究人员使用触发式抽样设计。在本文中,作者分析了来自LEAP研究的数据,以说明GLM中强度反比加权的方法和优势。所提出的分析方法的另一个好处是,它可以评估纵向研究中触发式采样的效用。

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