Cancer-Net PCa-Seg: Benchmarking Deep Learning Models for Prostate Cancer Segmentation Using Synthetic Correlated Diffusion Imaging
Journal:
arXiv
Published Date:
Jan 15, 2025
Abstract
Prostate cancer (PCa) is the most prevalent cancer among men in the United
States, accounting for nearly 300,000 cases, 29% of all diagnoses and 35,000
total deaths in 2024. Traditional screening methods such as prostate-specific
antigen (PSA) testing and magnetic resonance imaging (MRI) have been pivotal in
diagnosis, but have faced limitations in specificity and generalizability. In
this paper, we explore the potential of enhancing PCa lesion segmentation using
a novel MRI modality called synthetic correlated diffusion imaging (CDI$^s$).
We employ several state-of-the-art deep learning models, including U-Net,
SegResNet, Swin UNETR, Attention U-Net, and LightM-UNet, to segment PCa lesions
from a 200 CDI$^s$ patient cohort. We find that SegResNet achieved superior
segmentation performance with a Dice-Sorensen coefficient (DSC) of $76.68 \pm
0.8$. Notably, the Attention U-Net, while slightly less accurate (DSC $74.82
\pm 2.0$), offered a favorable balance between accuracy and computational
efficiency. Our findings demonstrate the potential of deep learning models in
improving PCa lesion segmentation using CDI$^s$ to enhance PCa management and
clinical support.