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A Novel Quality Control Algorithm for Medical Image Segmentation Based on Fuzzy Uncertainty

Lin, Qiao; Chen, Xin; Chen, Chao; Garibaldi, Jonathan M.

Authors

Qiao Lin



Abstract

Deep learning methods have achieved an excellent performance in medical image segmentation. However, the practical application of deep learning-based segmentation models is limited in clinical settings due to the lack of reliable information about the segmentation quality. In this article, we propose a novel quality control algorithm based on fuzzy uncertainty to quantify the quality of the predicted segmentation results as part of the model inference process. First, test-time augmentation and Monte Carlo drop out are applied simultaneously to capture both the data and model uncertainties of the trained image segmentation model. Then, a fuzzy set is generated to describe the captured uncertainty with the assistance of the linear Euclidean distance transform algorithm. Finally, the fuzziness of the generated fuzzy set is adopted to calculate an image-level segmentation uncertainty and, therefore, to infer the segmentation quality. Extensive experiments using five medical image segmentation applications on the detection of skin lesion, nuclei, lung, breast, and cell are conducted to evaluate the proposed algorithm. The experimental results show that the estimated image-level uncertainties using the proposed method have strong correlations with the segmentation qualities measured by the Dice coefficient, resulting in absolute Pearson correlation coefficients of 0.60–0.92. Our method outperforms other five state of- the-art quality control methods in classifying the segmentation results into good and poor quality groups (area under the receiver operating curve of greater than 0.92, while other methods are below 0.85).

Citation

Lin, Q., Chen, X., Chen, C., & Garibaldi, J. M. (2022). A Novel Quality Control Algorithm for Medical Image Segmentation Based on Fuzzy Uncertainty. IEEE Transactions on Fuzzy Systems, 31(8), 2532-2544. https://doi.org/10.1109/tfuzz.2022.3228332

Journal Article Type Article
Acceptance Date Dec 6, 2022
Online Publication Date Dec 12, 2022
Publication Date 2022
Deposit Date Nov 5, 2024
Journal IEEE Transactions on Fuzzy Systems
Print ISSN 1063-6706
Electronic ISSN 1941-0034
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Peer Reviewed
Volume 31
Issue 8
Pages 2532-2544
DOI https://doi.org/10.1109/tfuzz.2022.3228332
Keywords Data uncertainty, fuzzy sets, model uncertainty, quality control, semantic segmentation
Public URL https://nottingham-repository.worktribe.com/output/14894813
Publisher URL https://ieeexplore.ieee.org/document/9980452