The adoption of deep learning (DL) for medical image segmentation in clinical practice is limited by interpretability issues and sensitivity to out-of-distribution data. Robust models that maintain stable accuracy while offering reliable uncertainty estimates in the presence of data variations should be required. We propose a framework to evaluate the robustness of U-Net-based segmentation on a kidney MRI dataset, simulating common abdominal MRI distortions. Robustness is assessed using a novel metric that evaluates both the network’s accuracy stability and uncertainty reliability. The results show that, while segmentation accuracy remains stable across alterations, uncertainty is more sensitive to these changes. This suggests that capturing also uncertainty offers a more comprehensive assessment of DL models than traditional accuracy-focused frameworks.

(2025). Integrating Uncertainty Into U-Net Robustness Evaluation Under Natural MRI Alterations: Application to Kidney Segmentation . Retrieved from https://hdl.handle.net/10446/305165

Integrating Uncertainty Into U-Net Robustness Evaluation Under Natural MRI Alterations: Application to Kidney Segmentation

Scalco, Elisa;Bombarda, Andrea;Lanzarone, Ettore
2025-01-01

Abstract

The adoption of deep learning (DL) for medical image segmentation in clinical practice is limited by interpretability issues and sensitivity to out-of-distribution data. Robust models that maintain stable accuracy while offering reliable uncertainty estimates in the presence of data variations should be required. We propose a framework to evaluate the robustness of U-Net-based segmentation on a kidney MRI dataset, simulating common abdominal MRI distortions. Robustness is assessed using a novel metric that evaluates both the network’s accuracy stability and uncertainty reliability. The results show that, while segmentation accuracy remains stable across alterations, uncertainty is more sensitive to these changes. This suggests that capturing also uncertainty offers a more comprehensive assessment of DL models than traditional accuracy-focused frameworks.
ettore.lanzarone@unibg.it
2025
Inglese
Artificial Intelligence in Medicine. 23rd International Conference, AIME 2025, Pavia, Italy, June 23–26, 2025, Proceedings, Part II
Bellazzi, Riccardo; Juarez Herrero, José Manuel; Sacchi, Lucia; Zupan, Blaž
9783031958403
15735
121
126
cartaceo
online
Switzerland
Cham
Springer
AIME 2025: 23rd International Conference on Artificial Intelligence in Medicine, Pavia, Italy, 23–26 June 2025
23rd
Pavia, Italy
23–26 June 2025
internazionale
contributo
Settore IBIO-01/A - Bioingegneria
Settore IINF-05/A - Sistemi di elaborazione delle informazioni
Kidney MRI; Robustness; Segmentation; Uncertainty
   AI-based methods to improve stratification of patients affected by Polycystic Kidney Disease using multi-parametric MRI – AI4PKD
   MUR - MINISTERO DELL'UNIVERSITA' E DELLA RICERCA - Segretariato generale Direzione generale della ricerca - Ufficio IV
   2022B23JT5_02
Online ISBN 978-3-031-95841-0. 23rd International Conference, AIME 2025, Pavia, Italy, June 23–26, 2025, Proceedings, Part II https://link.springer.com/chapter/10.1007/978-3-031-95841-0_23 This work was supported by the Italian Ministry of University and Research, grant protocol number 2022B23JT5, PRIN 2022, funded by the European Union - Next generation EU (PNRR M4.C2.1.1). A.B. and E.L. were also supported by PNC - ANTHEM - Grant PNC0000003 - CUP B53C22006700001.
info:eu-repo/semantics/conferenceObject
7
Damiano, Rossella; Scalco, Elisa; Della Vedova, Marco L.; Arrigoni, Alberto; Caroli, Anna; Bombarda, Andrea; Lanzarone, Ettore
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
reserved
Non definito
273
(2025). Integrating Uncertainty Into U-Net Robustness Evaluation Under Natural MRI Alterations: Application to Kidney Segmentation . Retrieved from https://hdl.handle.net/10446/305165
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