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Background: Time-series models for count outcomes are routinely used to estimate short-term health effects of environmental exposures. The dispersion parameter is universally assumed to be constant over the study period.
Objective: The aim is to examine whether dispersion depends on time-varying covariates in a case study of emergency department visits in Atlanta during 1999-2009 and to evaluate approaches for addressing time-varying dispersion.
Methods: Using the double generalized linear model framework, we jointly modeled the Poisson log-linear mean and dispersion to estimate associations between emergency department visits for respiratory diseases and daily ozone concentrations. We conducted a simulation study to evaluate the impact of time-varying overdispersion on health effect estimation when constant overdispersion is assumed and developed an analytic code for implementing double generalized linear model using R.
Results: We found dispersion to depend on calendar date and meteorology. Assuming constant dispersion, the relative risk (RR) per interquartile range increase in 3-day moving ozone exposure was 1.037 (95% confidence interval: 1.024, 1.050). In the multivariable dispersion model, the RR was reduced to 1.029 (95% confidence interval: 1.020, 1.039), but with a large (26%) reduction in log RR standard error. The positive associations for ozone were robust against different dispersion model specifications. Simulation study results also demonstrated that when time-varying dispersion is present, it can lead to a larger standard error assuming constant dispersion.
Conclusion: When the outcome exhibits large dispersion in a time-series analysis, allowing for covariate-dependent time-varying dispersion can improve inference, particularly by increasing estimation precision.
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http://dx.doi.org/10.1097/EDE.0000000000001856 | DOI Listing |
Phys Rev Lett
August 2025
ShanghaiTech University, School of Physical Science and Technology, Shanghai 201210, China.
Time-varying media break temporal translation symmetry, enabling advanced wave manipulation. However, this phenomenon remains largely unexplored in magnonic systems due to the challenge of achieving rapid and significant changes in magnon dispersion. Here, we construct a time-varying strong coupling between two magnon modes and observe chirped Rabi-like oscillations near the pulse edges.
View Article and Find Full Text PDFOpt Express
February 2025
Measuring spectrum with high resolution and broadband synchronously, which is vital to various applications, remains challenging. Here, we introduce a cascading dispersive reconstructive spectrometer (CDRS) that integrates an acousto-optic tunable filter (AOTF) and a multimode fiber (MMF) in tandem. The time-varying AOTF divides the broad spectrum with moderate dispersion, and the disordered MMF presents a fine dispersion by wavelength-dependent speckles.
View Article and Find Full Text PDFDrone-based quantum key distribution (QKD) offers a flexible, cost-effective, and reconfigurable approach to extending the reach of spatial and temporal quantum communication. The rotation-invariant properties of orbital angular momentum (OAM) effectively mitigate issues related to reference frame alignment from the drone platform. Utilizing OAM encoding to achieve high-dimensional quantum key distribution (HD-QKD) exhibits significant advantages in terms of communication capacity and robustness.
View Article and Find Full Text PDFJ Math Biol
August 2025
CNRS, IECL, Inria, Université de Lorraine, Nancy, France.
This paper is a follow-up to a previous work where we considered populations with time-varying growth rates living in patches and irreducible migration matrix between the patches. Each population, when isolated, would become extinct. Dispersal-induced growth (DIG) occurs when the populations are able to persist and grow exponentially when dispersal among the populations is present.
View Article and Find Full Text PDFComput Stat
March 2025
Department of Statistics, Faculty of Mathematics & Statistics, Isfahan, Iran.
Extensions of quantile regression modeling for time series analysis are extensively employed in medical and health studies. This study introduces a specific class of transformed quantile-dispersion regression models for non-stationary time series. These models possess the flexibility to incorporate the time-varying structure into the model specification, enabling precise predictions for future decisions.
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