Segmentation-Consistent Probabilistic Lesion Counting

Abstract

Lesion counts are important indicators of disease severity, patient prognosis, and treatment efficacy, yet counting as a task in medical imaging is often overlooked in favor of segmentation. This work introduces a novel continuously differentiable function that maps lesion segmentation predictions to lesion count probability distributions in a consistent manner. The proposed end-to-end approach—which consists of voxel clustering, lesion-level voxel probability aggregation, and Poisson-binomial counting—is non-parametric and thus offers a robust and consistent way to augment lesion segmentation models with post hoc counting capabilities. Experiments on Gadolinium-enhancing lesion counting demonstrate that our method outputs accurate and well-calibrated count distributions that capture meaningful uncertainty information. They also reveal that our model is suitable for multi-task learning of lesion segmentation, is efficient in low data regimes, and is robust to adversarial attacks.

Cite

Text

Schroeter et al. "Segmentation-Consistent Probabilistic Lesion Counting." Medical Imaging with Deep Learning, 2023.

Markdown

[Schroeter et al. "Segmentation-Consistent Probabilistic Lesion Counting." Medical Imaging with Deep Learning, 2023.](https://mlanthology.org/midl/2023/schroeter2023midl-segmentationconsistent/)

BibTeX

@inproceedings{schroeter2023midl-segmentationconsistent,
  title     = {{Segmentation-Consistent Probabilistic Lesion Counting}},
  author    = {Schroeter, Julien and Myers-Colet, Chelsea and Arnold, Douglas L and Arbel, Tal},
  booktitle = {Medical Imaging with Deep Learning},
  year      = {2023},
  pages     = {1034-1056},
  volume    = {172},
  url       = {https://mlanthology.org/midl/2023/schroeter2023midl-segmentationconsistent/}
}