Saved in:
Bibliographic Details
Main Authors: Gort, Pieter C., Ewals, Lotte J. S., Tops-Welten, Marion W., Claessens, Cris H. B., Nederend, Joost, van der Sommen, Fons
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.27697
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910180156899328
author Gort, Pieter C.
Ewals, Lotte J. S.
Tops-Welten, Marion W.
Claessens, Cris H. B.
Nederend, Joost
van der Sommen, Fons
author_facet Gort, Pieter C.
Ewals, Lotte J. S.
Tops-Welten, Marion W.
Claessens, Cris H. B.
Nederend, Joost
van der Sommen, Fons
contents Peritoneal metastases are currently assessed using diagnostic laparoscopy to determine Sugarbaker's Peritoneal Cancer Index (sPCI), which works by dividing the abdomen into 13 regions and scoring each region based on tumor size. A recent consensus study defined 3D regions to facilitate a radiological PCI (rPCI), providing standardized anatomical regions for imaging-based assessment. Despite its clinical value, sPCI is invasive and lacks a standardized imaging counterpart. In this study, we propose a deep learning-based approach to automatically segment the rPCI regions on CT. We evaluate nnU-Net and Swin UNETR on 62 CT scans with rPCI regions manually annotated by three clinical researchers and validated by two expert radiologists. Performance was assessed using five-fold cross-validation with the Dice Similarity Coefficient (Dice), 95th percentile Hausdorff distance and Average Surface Distance. nnU-Net achieved an overall Dice of 0.82, approaching interobserver agreement (0.88) and outperforming Swin UNETR (0.76), with remaining challenges primarily in right flank and small-bowel regions. These results demonstrate feasibility of automated rPCI segmentation, laying the foundation for non-invasive, imaging-based assessment.
format Preprint
id arxiv_https___arxiv_org_abs_2604_27697
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Deep Learning-Based Segmentation of Peritoneal Cancer Index Regions from CT Imaging
Gort, Pieter C.
Ewals, Lotte J. S.
Tops-Welten, Marion W.
Claessens, Cris H. B.
Nederend, Joost
van der Sommen, Fons
Computer Vision and Pattern Recognition
Artificial Intelligence
Peritoneal metastases are currently assessed using diagnostic laparoscopy to determine Sugarbaker's Peritoneal Cancer Index (sPCI), which works by dividing the abdomen into 13 regions and scoring each region based on tumor size. A recent consensus study defined 3D regions to facilitate a radiological PCI (rPCI), providing standardized anatomical regions for imaging-based assessment. Despite its clinical value, sPCI is invasive and lacks a standardized imaging counterpart. In this study, we propose a deep learning-based approach to automatically segment the rPCI regions on CT. We evaluate nnU-Net and Swin UNETR on 62 CT scans with rPCI regions manually annotated by three clinical researchers and validated by two expert radiologists. Performance was assessed using five-fold cross-validation with the Dice Similarity Coefficient (Dice), 95th percentile Hausdorff distance and Average Surface Distance. nnU-Net achieved an overall Dice of 0.82, approaching interobserver agreement (0.88) and outperforming Swin UNETR (0.76), with remaining challenges primarily in right flank and small-bowel regions. These results demonstrate feasibility of automated rPCI segmentation, laying the foundation for non-invasive, imaging-based assessment.
title Deep Learning-Based Segmentation of Peritoneal Cancer Index Regions from CT Imaging
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2604.27697