Supervised Uncertainty Quantification for Segmentation with Multiple Annotations

Authors
Publication date 2019
Host editors
  • D. Shen
  • T. Liu
  • T.M. Peters
  • L.H. Staib
  • C. Essert
  • S. Zhou
  • P.-T. Yap
  • A. Khan
Book title Medical Image Computing and Computer Assisted Intervention – MICCAI 2019
Book subtitle 22nd International Conference, Shenzhen, China, October 13–17, 2019 : proceedings
ISBN
  • 9783030322441
ISBN (electronic)
  • 9783030322458
Series Lecture Notes in Computer Science
Event 22nd International Conference on Medical Image Computing and Computer Assisted Intervention
Volume | Issue number 2
Pages (from-to) 137-145
Publisher Cham: Springer
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
The accurate estimation of predictive uncertainty carries importance in medical scenarios such as lung node segmentation. Unfortunately, most existing works on predictive uncertainty do not return calibrated uncertainty estimates, which could be used in practice. In this work we exploit multi-grader annotation variability as a source of ‘groundtruth’ aleatoric uncertainty, which can be treated as a target in a supervised learning problem. We combine this groundtruth uncertainty with a Probabilistic U-Net and test on the LIDC-IDRI lung nodule CT dataset and MICCAI2012 prostate MRI dataset. We find that we are able to improve predictive uncertainty estimates. We also find that we can improve sample accuracy and sample diversity. In real-world applications, our method could inform doctors about the confidence of the segmentation results.
Document type Conference contribution
Language English
Published at https://doi.org/10.1007/978-3-030-32245-8_16
Other links https://github.com/stefanknegt/Probabilistic-Unet-Pytorch
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