A Semi-Parametric Model Simultaneously Handling Unmeasured Confounding, Informative Cluster Size, and Truncation by Death with a Data Application in Medicare Claims
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Date
2023-03-06
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Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0)
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Abstract
Nearly 300,000 older adults experience a hip fracture every year, the majority of which occur following
a fall. Unfortunately, recovery after fall-related trauma such as hip fracture is poor, where older adults diagnosed
with Alzheimer’s Disease and Related Dementia (ADRD) spend a particularly long time in hospitals or rehabilitation
facilities during the post-operative recuperation period. Because older adults value functional recovery and spending
time at home versus facilities as key outcomes after hospitalization, identifying factors that influence days spent at
home after hospitalization is imperative. While several individual-level factors have been identified, the characteristics
of the treating hospital have recently been identified as contributors. However, few methodological rigorous approaches
are available to help overcome potential sources of bias such as hospital-level unmeasured confounders, informative
hospital size, and loss to follow-up due to death. This article develops a useful tool equipped with unsupervised
learning to simultaneously handle statistical complexities that are often encountered in health services research,
especially when using large administrative claims databases. The proposed estimator has a closed form, thus only
requiring light computation load in a large-scale study. We further develop its asymptotic properties that can be
used to make statistical inference in practice. Extensive simulation studies demonstrate superiority of the proposed
estimator compared to existing estimators.