Brachytherapy involves bringing a radioactive source near tumor tissue using implanted needles. Image-guided brachytherapy planning requires amongst others, the reconstruction of the needles. Manually annotating these needles on patient images can be a challenging and time-consuming task for medical professionals. For automatic needle reconstruction, a two-stage pipeline is commonly adopted, comprising a segmentation stage followed by a post-processing stage. While deep learning models are effective for segmentation, their results often contain errors. No currently existing post-processing technique is robust to all possible segmentation errors. We therefore propose adaptations to existing post-processing techniques mainly aimed at dealing with segmentation errors and thereby improving the reconstruction accuracy. Experiments on a prostate cancer dataset, based on MRI scans annotated by medical professionals, demonstrate that our proposed adaptations can help to effectively manage segmentation errors, with the best adapted post-processing technique achieving median needle-tip and needle-bottom point localization errors of 1.07 (IQR ±1.04) mm and 0.43 (IQR ±0.46) mm, respectively, and median shaft error of 0.75 (IQR ±0.69) mm with 0 false positive and 0 false negative needles on a test set of 261 needles.
@article{arxiv.2507.18895,
title = {Dealing with Segmentation Errors in Needle Reconstruction for MRI-Guided Brachytherapy},
author = {Vangelis Kostoulas and Arthur Guijt and Ellen M. Kerkhof and Bradley R. Pieters and Peter A. N. Bosman and Tanja Alderliesten},
journal= {arXiv preprint arXiv:2507.18895},
year = {2025}
}
Comments
Published in: Proc. SPIE Medical Imaging 2025, Vol. 13408, 1340826