SKIPNet: Spatial Attention Skip Connections for Enhanced Brain Tumor Classification
Journal:
arXiv
Published Date:
Dec 10, 2024
Abstract
Early detection of brain tumors through magnetic resonance imaging (MRI) is
essential for timely treatment, yet access to diagnostic facilities remains
limited in remote areas. Gliomas, the most common primary brain tumors, arise
from the carcinogenesis of glial cells in the brain and spinal cord, with
glioblastoma patients having a median survival time of less than 14 months. MRI
serves as a non-invasive and effective method for tumor detection, but manual
segmentation of brain MRI scans has traditionally been a labor-intensive task
for neuroradiologists. Recent advancements in computer-aided design (CAD),
machine learning (ML), and deep learning (DL) offer promising solutions for
automating this process. This study proposes an automated deep learning model
for brain tumor detection and classification using MRI data. The model,
incorporating spatial attention, achieved 96.90% accuracy, enhancing the
aggregation of contextual information for better pattern recognition.
Experimental results demonstrate that the proposed approach outperforms
baseline models, highlighting its robustness and potential for advancing
automated MRI-based brain tumor analysis.