Abstract:
Despite the availability of various diagnostic techniques
and extensive research efforts aimed at understanding
Alzheimer’s disease (AD), accurately and automatically diagnosing
AD using biomarkers and comprehending the intricate
structural changes in the Alzheimer’s brain using state-of-theart
technologies remains a significant challenge. In particular,
the asymmetrical white matter abnormalities in the Alzheimer’s
brain’s structural connectivity have been poorly studied. To
address this critical issue, this paper presents a novel approach
that detects AD by feeding the structural hemispherical brain networks
to a Convolutional Neural Network (CNN) based classification
model and then pinpointing the discriminative asymmetrical
in white matter connectivity changes through the interpretations
of classification choices. This study found significant outcomes
regarding asymmetrical intra-hemispheric connections in AD.
These outcomes include distinct connectivity changes in the left
and right hemispheres, significant changes primarily in the left
hemisphere, discriminative changes involving more subcortical
regions in both hemispheres, and increased temporal-subcortical
and frontal-subcortical connectivity changes in the left hemisphere.
This research has the potential to enhance diagnostic
accuracy, improve understanding of the disease, and shed light
on its asymmetric nature.
Citation:
S. Srivishagan, L. Kumaralingam, N. Ratnarajah, K. Thanikasalam and A. J. Pinidiyaarachchi, "Exploring Asymmetrical White Matter Abnormalities in Alzheimer’s using Deep Learning," 2023 Moratuwa Engineering Research Conference (MERCon), Moratuwa, Sri Lanka, 2023, pp. 113-118, doi: 10.1109/MERCon60487.2023.10355503.