Document detail
ID

oai:arXiv.org:2409.11456

Topic
Computer Science - Computer Vision... Computer Science - Artificial Inte... Computer Science - Machine Learnin...
Author
Twam, Awj Celaya, Adrian E. Jacobsen, Megan C. Glenn, Rachel Wei, Peng Sun, Jia Klopp, Ann Venkatesan, Aradhana M. Fuentes, David
Category

Computer Science

Year

2024

listing date

2/19/2025

Keywords
treatment routine contouring science segmentation tumor pocketnet computer
Metrics

Abstract

Cervical cancer remains the fourth most common malignancy amongst women worldwide.1 Concurrent chemoradiotherapy (CRT) serves as the mainstay definitive treatment regimen for locally advanced cervical cancers and includes external beam radiation followed by brachytherapy.2 Integral to radiotherapy treatment planning is the routine contouring of both the target tumor at the level of the cervix, associated gynecologic anatomy and the adjacent organs at risk (OARs).

However, manual contouring of these structures is both time and labor intensive and associated with known interobserver variability that can impact treatment outcomes.

While multiple tools have been developed to automatically segment OARs and the high-risk clinical tumor volume (HR-CTV) using computed tomography (CT) images,3,4,5,6 the development of deep learning-based tumor segmentation tools using routine T2-weighted (T2w) magnetic resonance imaging (MRI) addresses an unmet clinical need to improve the routine contouring of both anatomical structures and cervical cancers, thereby increasing quality and consistency of radiotherapy planning.

This work applied a novel deep-learning model (PocketNet) to segment the cervix, vagina, uterus, and tumor(s) on T2w MRI.

The performance of the PocketNet architecture was evaluated, when trained on data via five-fold cross validation.

PocketNet achieved a mean Dice-Sorensen similarity coefficient (DSC) exceeding 70% for tumor segmentation and 80% for organ segmentation.

Validation on a publicly available dataset from The Cancer Imaging Archive (TCIA) demonstrated the models robustness, achieving DSC scores of 67.3% for tumor segmentation and 80.8% for organ segmentation.

These results suggest that PocketNet is robust to variations in contrast protocols, providing reliable segmentation of the regions of interest.

Twam, Awj,Celaya, Adrian E.,Jacobsen, Megan C.,Glenn, Rachel,Wei, Peng,Sun, Jia,Klopp, Ann,Venkatesan, Aradhana M.,Fuentes, David, 2024, Two Stage Segmentation of Cervical Tumors using PocketNet

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