Longitudinal surface-based spatial Bayesian GLM reveals complex trajectories of motor neurodegeneration in ALS

10/04/2021
by   Amanda F. Mejia, et al.
0

Longitudinal fMRI datasets hold great promise for the study of neurodegenerative diseases, but realizing their potential depends on extracting accurate fMRI-based brain measures in individuals over time. This is especially true for rare, heterogeneous and/or rapidly progressing diseases, which often involve small samples whose functional features may vary dramatically across subjects and over time, making traditional group-difference analyses of limited utility. One such disease is ALS, which results in extreme motor function loss and eventual death. Here, we analyze a rich longitudinal dataset containing 190 motor task fMRI scans from 16 ALS patients and 22 age-matched HCs. We propose a novel longitudinal extension to our cortical surface-based spatial Bayesian GLM, which has high power and precision to detect activations in individuals. Using a series of longitudinal mixed-effects models to subsequently study the relationship between activation and disease progression, we observe an inverted U-shaped trajectory: at relatively mild disability we observe enlarging activations, while at higher disability we observe severely diminished activation, reflecting progression toward complete motor function loss. We observe distinct trajectories depending on clinical progression rate, with faster progressors exhibiting more extreme hyper-activation and subsequent hypo-activation. These differential trajectories suggest that initial hyper-activation is likely attributable to loss of inhibitory neurons. By contrast, earlier studies employing more limited sampling designs and using traditional group-difference analysis approaches were only able to observe the initial hyper-activation, which was assumed to be due to a compensatory process. This study provides a first example of how surface-based spatial Bayesian modeling furthers scientific understanding of neurodegenerative disease.

READ FULL TEXT

page 12

page 35

page 37

research
06/12/2021

Spatial Bayesian GLM on the cortical surface produces reliable task activations in individuals and groups

The general linear model (GLM) is a popular and convenient tool for esti...
research
09/18/2023

Sex-based Disparities in Brain Aging: A Focus on Parkinson's Disease

PD is linked to faster brain aging. Sex is recognized as an important fa...
research
07/19/2012

Models of Disease Spectra

Case vs control comparisons have been the classical approach to the stud...
research
02/10/2022

Describing complex disease progression using joint latent class models for multivariate longitudinal markers and clinical endpoints

Neurodegenerative diseases are characterized by numerous markers of prog...
research
01/11/2019

DIVE: A spatiotemporal progression model of brain pathology in neurodegenerative disorders

Here we present DIVE: Data-driven Inference of Vertexwise Evolution. DIV...
research
01/11/2023

Clustering disease trajectories in contrastive feature space for biomarker discovery in age-related macular degeneration

Age-related macular degeneration (AMD) is the leading cause of blindness...
research
03/10/2021

A fusion learning method to subgroup analysis for longitudinal trajectories

Uncovering the heterogeneity in the disease progression of Alzheimer's i...

Please sign up or login with your details

Forgot password? Click here to reset