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Papers/Adaptive t-vMF Dice Loss for Multi-class Medical Image Seg...

Adaptive t-vMF Dice Loss for Multi-class Medical Image Segmentation

Sota Kato, Kazuhiro Hotta

2022-07-16Semantic SegmentationMedical Image SegmentationImage Segmentation
PaperPDFCode(official)

Abstract

Dice loss is widely used for medical image segmentation, and many improvement loss functions based on such loss have been proposed. However, further Dice loss improvements are still possible. In this study, we reconsidered the use of Dice loss and discovered that Dice loss can be rewritten in the loss function using the cosine similarity through a simple equation transformation. Using this knowledge, we present a novel t-vMF Dice loss based on the t-vMF similarity instead of the cosine similarity. Based on the t-vMF similarity, our proposed Dice loss is formulated in a more compact similarity loss function than the original Dice loss. Furthermore, we present an effective algorithm that automatically determines the parameter $\kappa$ for the t-vMF similarity using a validation accuracy, called Adaptive t-vMf Dice loss. Using this algorithm, it is possible to apply more compact similarities for easy classes and wider similarities for difficult classes, and we are able to achieve an adaptive training based on the accuracy of the class. Through experiments conducted on four datasets using a five-fold cross validation, we confirmed that the Dice score coefficient (DSC) was further improved in comparison with the original Dice loss and other loss functions.

Results

TaskDatasetMetricValueModel
Medical Image SegmentationKvasir-SEGmIoU0.8974FCB Former
Medical Image SegmentationKvasir-SEGmean Dice0.9445FCB Former
Medical Image SegmentationSynapse multi-organ CTAvg DSC80.26FCB Former
Medical Image SegmentationAutomatic Cardiac Diagnosis Challenge (ACDC)Avg DSC94.26FCT
Medical Image SegmentationCVC-ClinicDBmIoU0.9343DUCK-Net
Medical Image SegmentationCVC-ClinicDBmean Dice0.9684DUCK-Net

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