Robust Segmentation Models using an Uncertainty Slice Sampling Based Annotation Workflow
Grzegorz Chlebus, Andrea Schenk, Horst K. Hahn, Bram van, Ginneken, Hans Meine

TL;DR
This paper introduces an uncertainty slice sampling strategy for active learning in 3D medical image segmentation, significantly reducing annotation effort while maintaining high model performance and robustness.
Contribution
The authors propose a novel uncertainty slice sampling method for efficient annotation in 3D medical segmentation, outperforming other strategies in data efficiency and robustness.
Findings
USS required only 4% of slices for training
USS achieved a mean Dice index of 0.964
USS demonstrated superior robustness and comparable accuracy
Abstract
Semantic segmentation neural networks require pixel-level annotations in large quantities to achieve a good performance. In the medical domain, such annotations are expensive, because they are time-consuming and require expert knowledge. Active learning optimizes the annotation effort by devising strategies to select cases for labeling that are most informative to the model. In this work, we propose an uncertainty slice sampling (USS) strategy for semantic segmentation of 3D medical volumes that selects 2D image slices for annotation and compare it with various other strategies. We demonstrate the efficiency of USS on a CT liver segmentation task using multi-site data. After five iterations, the training data resulting from USS consisted of 2410 slices (4% of all slices in the data pool) compared to 8121 (13%), 8641 (14%), and 3730 (6%) for uncertainty volume (UVS), random volume (RVS),…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Advanced Neural Network Applications · COVID-19 diagnosis using AI
MethodsTest
