Evaluation of UNeXt for Automatic Bone Surface Segmentation on Ultrasound Imaging in Image-Guided Pediatric Surgery

  • Jasper M.van der Zee
  • , Aimon M. Rahman
  • , Kevin Klein Gunnewiek
  • , Marijn A.J. Hiep
  • , Matthijs Fitski
  • , Ilker Hacihaliloglu
  • , Ahmed Z. Alsinan
  • , Vishal M. Patel
  • , Annemieke S. Littooij
  • , Alida F.W.van der Steeg*
  • *Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

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Abstract

Automatic bone surface segmentation represents an advanced alternative for conventional patient registration methods in surgical navigation technologies. In pediatrics, such technologies require tailored approaches to ensure optimal performance—specifically in patients under the age of ten, whose immature bones have less distinct bone characteristics. In this study, we developed a segmentation model tailored for pediatric patients. We captured 4309 ultrasound images from the bones in the extremities, pelvis and thorax of 16 pediatric patients. The dataset was manually annotated by a technical physician and sample-wise validated by a pediatric radiologist. A UNeXt deep learning model was trained for automatic segmentation. The segmentation performance was evaluated using the mean centerline Dice score and the mean surface distance. A mean centerline Dice score of 0.85 (SD: 0.13) and a mean surface distance of 0.78 mm (SD: 1.15 mm) were achieved. No important differences in performance were observed for patients younger than the age of ten compared to older patients. Our results demonstrate that the segmentation model detects the bone surface with sufficient accuracy, enabling precise and effective patient registration. The model performs sufficiently across different pediatric age groups, making it a viable tool for integration into ultrasound-based patient registration in image-guided pediatric surgery.

Original languageEnglish
Article number1008
Number of pages12
JournalBioengineering
Volume12
Issue number10
DOIs
Publication statusPublished - Oct 2025

Keywords

  • image-guided surgery
  • patient registration
  • pediatric oncology surgery
  • tracked ultrasound

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