Efficient Brain Imaging Analysis for Alzheimer's and Dementia Detection Using Convolution-Derivative Operations
Journal:
arXiv
Published Date:
Nov 20, 2024
Abstract
Alzheimer's disease (AD) is characterized by progressive neurodegeneration
and results in detrimental structural changes in human brains. Detecting these
changes is crucial for early diagnosis and timely intervention of disease
progression. Jacobian maps, derived from spatial normalization in voxel-based
morphometry (VBM), have been instrumental in interpreting volume alterations
associated with AD. However, the computational cost of generating Jacobian maps
limits its clinical adoption. In this study, we explore alternative methods and
propose Sobel kernel angle difference (SKAD) as a computationally efficient
alternative. SKAD is a derivative operation that offers an optimized approach
to quantifying volumetric alterations through localized analysis of the
gradients. By efficiently extracting gradient amplitude changes at critical
spatial regions, this derivative operation captures regional volume variations
Evaluation of SKAD over various medical datasets demonstrates that it is 6.3x
faster than Jacobian maps while still maintaining comparable accuracy. This
makes it an efficient and competitive approach in neuroimaging research and
clinical practice.