Partial annotations for the segmentation of large structures with low annotation cost
Bella Specktor Fadida, Daphna Link Sourani, Liat Ben Sira Elka Miller,, Dafna Ben Bashat, Leo Joskowicz

TL;DR
This paper introduces a partial annotation method for large structure segmentation in medical imaging, reducing annotation effort while maintaining or improving accuracy, especially in low-data scenarios.
Contribution
The paper proposes a novel partial annotation approach with a two-step optimization process that enhances segmentation performance using minimal annotation effort.
Findings
Partial annotations slightly outperform full annotations in Dice score.
Significant reduction in variability of segmentation metrics.
Improved out-of-distribution segmentation performance.
Abstract
Deep learning methods have been shown to be effective for the automatic segmentation of structures and pathologies in medical imaging. However, they require large annotated datasets, whose manual segmentation is a tedious and time-consuming task, especially for large structures. We present a new method of partial annotations that uses a small set of consecutive annotated slices from each scan with an annotation effort that is equal to that of only few annotated cases. The training with partial annotations is performed by using only annotated blocks, incorporating information about slices outside the structure of interest and modifying a batch loss function to consider only the annotated slices. To facilitate training in a low data regime, we use a two-step optimization process. We tested the method with the popular soft Dice loss for the fetal body segmentation task in two MRI…
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Taxonomy
MethodsSpatial-Channel Token Distillation · Dice Loss
