Effect of Prior-based Losses on Segmentation Performance: A Benchmark
Rosana El Jurdi, Caroline Petitjean, Veronika Cheplygina, Paul, Honeine, Fahed Abdallah

TL;DR
This paper benchmarks recent prior-based loss functions in medical image segmentation, showing how low-level losses improve performance and high-level losses enhance anatomical plausibility across diverse datasets.
Contribution
It provides a comprehensive comparison of prior-based losses, guiding the selection of appropriate losses for specific medical segmentation tasks.
Findings
Low-level prior-based losses improve segmentation accuracy across datasets.
High-level prior-based losses enhance anatomical plausibility.
Benchmark results inform loss choice based on dataset characteristics.
Abstract
Today, deep convolutional neural networks (CNNs) have demonstrated state-of-the-art performance for medical image segmentation, on various imaging modalities and tasks. Despite early success, segmentation networks may still generate anatomically aberrant segmentations, with holes or inaccuracies near the object boundaries. To enforce anatomical plausibility, recent research studies have focused on incorporating prior knowledge such as object shape or boundary, as constraints in the loss function. Prior integrated could be low-level referring to reformulated representations extracted from the ground-truth segmentations, or high-level representing external medical information such as the organ's shape or size. Over the past few years, prior-based losses exhibited a rising interest in the research field since they allow integration of expert knowledge while still being…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · Advanced X-ray and CT Imaging · Artificial Intelligence in Healthcare and Education
MethodsDice Loss
