Alzheimers Disease Classification in Functional MRI With 4D Joint Temporal-Spatial Kernels in Novel 4D CNN Model
Journal:
arXiv
Published Date:
Jun 1, 2025
Abstract
Previous works in the literature apply 3D spatial-only models on 4D
functional MRI data leading to possible sub-par feature extraction to be used
for downstream tasks like classification. In this work, we aim to develop a
novel 4D convolution network to extract 4D joint temporal-spatial kernels that
not only learn spatial information but in addition also capture temporal
dynamics. Experimental results show promising performance in capturing
spatial-temporal data in functional MRI compared to 3D models. The 4D CNN model
improves Alzheimers disease diagnosis for rs-fMRI data, enabling earlier
detection and better interventions. Future research could explore task-based
fMRI applications and regression tasks, enhancing understanding of cognitive
performance and disease progression.