ameras - Analyze Multiple Exposure Realizations in Association Studies
Analyze association studies with multiple realizations of
a noisy or uncertain exposure. These can be obtained from e.g.
a two-dimensional Monte Carlo dosimetry system (Simon et al
2015 <doi:10.1667/RR13729.1>) to characterize exposure
uncertainty. The implemented methods are regression calibration
(Carroll et al. 2006 <doi:10.1201/9781420010138>), extended
regression calibration (Little et al. 2023
<doi:10.1038/s41598-023-42283-y>), Monte Carlo maximum
likelihood (Stayner et al. 2007 <doi:10.1667/RR0677.1>),
frequentist model averaging (Kwon et al. 2023
<doi:10.1371/journal.pone.0290498>), and Bayesian model
averaging (Kwon et al. 2016 <doi:10.1002/sim.6635>). Supported
model families are Gaussian, binomial, multinomial, Poisson,
proportional hazards, and conditional logistic.