Efficient Bayesian Uncertainty Estimation for nnU-Net

Conference Paper (2022)
Author(s)

Y. Zhao (TU Delft - ImPhys/Medical Imaging)

C. Yang (TU Delft - ImPhys/Medical Imaging)

Artur Schweidtmanna (TU Delft - ChemE/Product and Process Engineering)

Qian Tao (TU Delft - ImPhys/Medical Imaging)

Research Group
ImPhys/Medical Imaging
Copyright
© 2022 Y. Zhao, C. Yang, A.M. Schweidtmann, Q. Tao
DOI related publication
https://doi.org/10.1007/978-3-031-16452-1_51
More Info
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Publication Year
2022
Language
English
Copyright
© 2022 Y. Zhao, C. Yang, A.M. Schweidtmann, Q. Tao
Research Group
ImPhys/Medical Imaging
Bibliographical Note
Green Open Access added to TU Delft Institutional Repository ‘You share, we take care!’ – Taverne project https://www.openaccess.nl/en/you-share-we-take-care Otherwise as indicated in the copyright section: the publisher is the copyright holder of this work and the author uses the Dutch legislation to make this work public. @en
Pages (from-to)
535-544
ISBN (print)
978-3-031-16451-4
ISBN (electronic)
978-3-031-16452-1
Reuse Rights

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Abstract

The self-configuring nnU-Net has achieved leading performance in a large range of medical image segmentation challenges. It is widely considered as the model of choice and a strong baseline for medical image segmentation. However, despite its extraordinary performance, nnU-Net does not supply a measure of uncertainty to indicate its possible failure. This can be problematic for large-scale image segmentation applications, where data are heterogeneous and nnU-Net may fail without notice. In this work, we introduce a novel method to estimate nnU-Net uncertainty for medical image segmentation. We propose a highly effective scheme for posterior sampling of weight space for Bayesian uncertainty estimation. Different from previous baseline methods such as Monte Carlo Dropout and mean-field Bayesian Neural Networks, our proposed method does not require a variational architecture and keeps the original nnU-Net architecture intact, thereby preserving its excellent performance and ease of use. Additionally, we boost the segmentation performance over the original nnU-Net via marginalizing multi-modal posterior models. We applied our method on the public ACDC and M &M datasets of cardiac MRI and demonstrated improved uncertainty estimation over a range of baseline methods. The proposed method further strengthens nnU-Net for medical image segmentation in terms of both segmentation accuracy and quality control.

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