Foreign object segmentation in chest x-rays through anatomy-guided shape insertion

Abstract

In this paper, we tackle the challenge of instance segmentation for foreign objects in chest radiographs, commonly seen in postoperative follow-ups with stents, pacemakers, or ingested objects in children. The diversity of foreign objects complicates dense annotation, as shown in insufficient existing datasets. To address this, we propose the simple generation of synthetic data through (1) insertion of arbitrary shapes (lines, polygons, ellipses) with varying contrasts and opacities, and (2) cut-paste augmentations from a small set of semi-automatically extracted labels. These insertions are guided by anatomy labels to ensure realistic placements, such as stents appearing only in relevant vessels. Our approach enables networks to segment complex structures with minimal manually labeled data. Notably, it achieves performance comparable to fully supervised models while using 93% fewer manual annotations.

Publication
arXiv
Constantin Seibold
Constantin Seibold
Team Lead Computer Vision
Hamza Kalisch
Hamza Kalisch
PhD Student
Lukas Heine
Lukas Heine
PhD Student
Jens Kleesiek
Jens Kleesiek
Professor of Translational Image-guided Oncology