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Loss Weightings for Improving Imbalanced Brain Structure Segmentation Using Fully Convolutional Networks

Brain structure segmentation on magnetic resonance (MR) images is important for various clinical applications. It has been automatically performed by using fully convolutional networks. However, it suffers from the class imbalance problem. To address this problem, we investigated how loss weighting...

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Autores principales: Sugino, Takaaki, Kawase, Toshihiro, Onogi, Shinya, Kin, Taichi, Saito, Nobuhito, Nakajima, Yoshikazu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8393549/
https://www.ncbi.nlm.nih.gov/pubmed/34442075
http://dx.doi.org/10.3390/healthcare9080938
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author Sugino, Takaaki
Kawase, Toshihiro
Onogi, Shinya
Kin, Taichi
Saito, Nobuhito
Nakajima, Yoshikazu
author_facet Sugino, Takaaki
Kawase, Toshihiro
Onogi, Shinya
Kin, Taichi
Saito, Nobuhito
Nakajima, Yoshikazu
author_sort Sugino, Takaaki
collection PubMed
description Brain structure segmentation on magnetic resonance (MR) images is important for various clinical applications. It has been automatically performed by using fully convolutional networks. However, it suffers from the class imbalance problem. To address this problem, we investigated how loss weighting strategies work for brain structure segmentation tasks with different class imbalance situations on MR images. In this study, we adopted segmentation tasks of the cerebrum, cerebellum, brainstem, and blood vessels from MR cisternography and angiography images as the target segmentation tasks. We used a U-net architecture with cross-entropy and Dice loss functions as a baseline and evaluated the effect of the following loss weighting strategies: inverse frequency weighting, median inverse frequency weighting, focal weighting, distance map-based weighting, and distance penalty term-based weighting. In the experiments, the Dice loss function with focal weighting showed the best performance and had a high average Dice score of 92.8% in the binary-class segmentation tasks, while the cross-entropy loss functions with distance map-based weighting achieved the Dice score of up to 93.1% in the multi-class segmentation tasks. The results suggested that the distance map-based and the focal weightings could boost the performance of cross-entropy and Dice loss functions in class imbalanced segmentation tasks, respectively.
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spelling pubmed-83935492021-08-28 Loss Weightings for Improving Imbalanced Brain Structure Segmentation Using Fully Convolutional Networks Sugino, Takaaki Kawase, Toshihiro Onogi, Shinya Kin, Taichi Saito, Nobuhito Nakajima, Yoshikazu Healthcare (Basel) Article Brain structure segmentation on magnetic resonance (MR) images is important for various clinical applications. It has been automatically performed by using fully convolutional networks. However, it suffers from the class imbalance problem. To address this problem, we investigated how loss weighting strategies work for brain structure segmentation tasks with different class imbalance situations on MR images. In this study, we adopted segmentation tasks of the cerebrum, cerebellum, brainstem, and blood vessels from MR cisternography and angiography images as the target segmentation tasks. We used a U-net architecture with cross-entropy and Dice loss functions as a baseline and evaluated the effect of the following loss weighting strategies: inverse frequency weighting, median inverse frequency weighting, focal weighting, distance map-based weighting, and distance penalty term-based weighting. In the experiments, the Dice loss function with focal weighting showed the best performance and had a high average Dice score of 92.8% in the binary-class segmentation tasks, while the cross-entropy loss functions with distance map-based weighting achieved the Dice score of up to 93.1% in the multi-class segmentation tasks. The results suggested that the distance map-based and the focal weightings could boost the performance of cross-entropy and Dice loss functions in class imbalanced segmentation tasks, respectively. MDPI 2021-07-26 /pmc/articles/PMC8393549/ /pubmed/34442075 http://dx.doi.org/10.3390/healthcare9080938 Text en © 2021 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Sugino, Takaaki
Kawase, Toshihiro
Onogi, Shinya
Kin, Taichi
Saito, Nobuhito
Nakajima, Yoshikazu
Loss Weightings for Improving Imbalanced Brain Structure Segmentation Using Fully Convolutional Networks
title Loss Weightings for Improving Imbalanced Brain Structure Segmentation Using Fully Convolutional Networks
title_full Loss Weightings for Improving Imbalanced Brain Structure Segmentation Using Fully Convolutional Networks
title_fullStr Loss Weightings for Improving Imbalanced Brain Structure Segmentation Using Fully Convolutional Networks
title_full_unstemmed Loss Weightings for Improving Imbalanced Brain Structure Segmentation Using Fully Convolutional Networks
title_short Loss Weightings for Improving Imbalanced Brain Structure Segmentation Using Fully Convolutional Networks
title_sort loss weightings for improving imbalanced brain structure segmentation using fully convolutional networks
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8393549/
https://www.ncbi.nlm.nih.gov/pubmed/34442075
http://dx.doi.org/10.3390/healthcare9080938
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