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Distance-based detection of out-of-distribution silent failures for Covid-19 lung lesion segmentation

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arxiv 2208.03217 v1 pith:EBVVP5VC submitted 2022-08-05 eess.IV cs.CVcs.LG

Distance-based detection of out-of-distribution silent failures for Covid-19 lung lesion segmentation

classification eess.IV cs.CVcs.LG
keywords segmentationmethodacrosschestdetectionmodelsout-of-distributionapplications
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Automatic segmentation of ground glass opacities and consolidations in chest computer tomography (CT) scans can potentially ease the burden of radiologists during times of high resource utilisation. However, deep learning models are not trusted in the clinical routine due to failing silently on out-of-distribution (OOD) data. We propose a lightweight OOD detection method that leverages the Mahalanobis distance in the feature space and seamlessly integrates into state-of-the-art segmentation pipelines. The simple approach can even augment pre-trained models with clinically relevant uncertainty quantification. We validate our method across four chest CT distribution shifts and two magnetic resonance imaging applications, namely segmentation of the hippocampus and the prostate. Our results show that the proposed method effectively detects far- and near-OOD samples across all explored scenarios.

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