A Spatially Varying Hierarchical Random Effects Model for Longitudinal Macular Structural Data in Glaucoma Patients

03/16/2023
by   Erica Su, et al.
0

We model longitudinal macular thickness measurements to monitor the course of glaucoma and prevent vision loss due to disease progression. The macular thickness varies over a 6×6 grid of locations on the retina with additional variability arising from the imaging process at each visit. Currently, ophthalmologists estimate slopes using repeated simple linear regression for each subject and location. To estimate slopes more precisely, we develop a novel Bayesian hierarchical model for multiple subjects with spatially varying population-level and subject-level coefficients, borrowing information over subjects and measurement locations. We augment the model with visit effects to account for observed spatially correlated visit-specific errors. We model spatially varying (a) intercepts, (b) slopes, and (c) log residual standard deviations (SD) with multivariate Gaussian process priors with Matérn cross-covariance functions. Each marginal process assumes an exponential kernel with its own SD and spatial correlation matrix. We develop our models for and apply them to data from the Advanced Glaucoma Progression Study. We show that including visit effects in the model reduces error in predicting future thickness measurements and greatly improves model fit.

READ FULL TEXT

page 6

page 15

research
06/06/2023

Bayesian inference for group-level cortical surface image-on-scalar-regression with Gaussian process priors

In regression-based analyses of group-level neuroimage data researchers ...
research
10/12/2020

Modeling dependent survival data through random effects with spatial correlation at the subject level

Dynamical phenomena such as infectious diseases are often investigated b...
research
11/27/2018

A spatially varying change points model for monitoring glaucoma progression using visual field data

Glaucoma disease progression, as measured by visual field (VF) data, is ...
research
02/08/2020

A comparison of Bayesian accelerated failure time models with spatially varying coefficients

The accelerated failure time (AFT) model is a commonly used tool in anal...
research
04/07/2018

Linear Mixed-Effects Models for Non-Gaussian Repeated Measurement Data

We consider the analysis of continuous repeated measurement outcomes tha...
research
12/28/2017

A spatially explicit capture recapture model for partially identified individuals when trap detection rate is less than one

Spatially explicit capture recapture (SECR) models have gained enormous ...
research
09/25/2017

Statistical learning of spatiotemporal patterns from longitudinal manifold-valued networks

We introduce a mixed-effects model to learn spatiotempo-ral patterns on ...

Please sign up or login with your details

Forgot password? Click here to reset