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Diffusion Models for Medical Anomaly Detection

About

In medical applications, weakly supervised anomaly detection methods are of great interest, as only image-level annotations are required for training. Current anomaly detection methods mainly rely on generative adversarial networks or autoencoder models. Those models are often complicated to train or have difficulties to preserve fine details in the image. We present a novel weakly supervised anomaly detection method based on denoising diffusion implicit models. We combine the deterministic iterative noising and denoising scheme with classifier guidance for image-to-image translation between diseased and healthy subjects. Our method generates very detailed anomaly maps without the need for a complex training procedure. We evaluate our method on the BRATS2020 dataset for brain tumor detection and the CheXpert dataset for detecting pleural effusions.

Julia Wolleb, Florentin Bieder, Robin Sandk\"uhler, Philippe C. Cattin• 2022

Related benchmarks

TaskDatasetResultRank
Tumor SegmentationKiTS Kidney Tumor 23
DSC36.55
12
Tumor SegmentationMSD Lung Tumor
DSC25.7
9
Tumor SegmentationMSD Pancreas Tumor
DSC28.52
9
Tumor SegmentationMSD Liver Tumor
DSC43.54
9
Tumor SegmentationMSD Colon Tumor
DSC13.97
9
Tumor SegmentationMSD Hepatic Vessel Tumor
DSC39.57
9
Tumor SegmentationIn-house MRI Liver Tumor
DSC0.1578
9
Tumor SegmentationMSD Brain
DSC16.11
9
Tumor SegmentationBraTS 23
DSC15.08
9
Semantic segmentationBraTS
Dice45.6
8
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