Efficient Brain Tumor Segmentation Using a Dual-Decoder 3D U-Net with Attention Gates (DDUNet)
Journal:
arXiv
Published Date:
Apr 14, 2025
Abstract
Cancer remains one of the leading causes of mortality worldwide, and among
its many forms, brain tumors are particularly notorious due to their aggressive
nature and the critical challenges involved in early diagnosis. Recent advances
in artificial intelligence have shown great promise in assisting medical
professionals with precise tumor segmentation, a key step in timely diagnosis
and treatment planning. However, many state-of-the-art segmentation methods
require extensive computational resources and prolonged training times,
limiting their practical application in resource-constrained settings. In this
work, we present a novel dual-decoder U-Net architecture enhanced with
attention-gated skip connections, designed specifically for brain tumor
segmentation from MRI scans. Our approach balances efficiency and accuracy by
achieving competitive segmentation performance while significantly reducing
training demands. Evaluated on the BraTS 2020 dataset, the proposed model
achieved Dice scores of 85.06% for Whole Tumor (WT), 80.61% for Tumor Core
(TC), and 71.26% for Enhancing Tumor (ET) in only 50 epochs, surpassing several
commonly used U-Net variants. Our model demonstrates that high-quality brain
tumor segmentation is attainable even under limited computational resources,
thereby offering a viable solution for researchers and clinicians operating
with modest hardware. This resource-efficient model has the potential to
improve early detection and diagnosis of brain tumors, ultimately contributing
to better patient outcomes