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📄 Abstract
Abstract: Estimated brain age from magnetic resonance image (MRI) and its deviation
from chronological age can provide early insights into potential
neurodegenerative diseases, supporting early detection and implementation of
prevention strategies. Diffusion MRI (dMRI) presents an opportunity to build an
earlier biomarker for neurodegenerative disease prediction because it captures
subtle microstructural changes that precede more perceptible macrostructural
changes. However, the coexistence of macro- and micro-structural information in
dMRI raises the question of whether current dMRI-based brain age estimation
models are leveraging the intended microstructural information or if they
inadvertently rely on the macrostructural information. To develop a
microstructure-specific brain age, we propose a method for brain age
identification from dMRI that mitigates the model's use of macrostructural
information by non-rigidly registering all images to a standard template.
Imaging data from 13,398 participants across 12 datasets were used for the
training and evaluation. We compare our brain age models, trained with and
without macrostructural information mitigated, with an architecturally similar
T1-weighted (T1w) MRI-based brain age model and two recent, popular, openly
available T1w MRI-based brain age models that primarily use macrostructural
information. We observe difference between our dMRI-based brain age and T1w
MRI-based brain age across stages of neurodegeneration, with dMRI-based brain
age being older than T1w MRI-based brain age in participants transitioning from
cognitively normal (CN) to mild cognitive impairment (MCI), but younger in
participants already diagnosed with Alzheimer's disease (AD). Furthermore,
dMRI-based brain age may offer advantages over T1w MRI-based brain age in
predicting the transition from CN to MCI up to five years before diagnosis.