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AutoPaint: A Self-Inpainting Method for Unsupervised Anomaly Detection

Authors :
Astaraki, Mehdi
De Benetti, Francesca
Yeganeh, Yousef
Toma-Dasu, Iuliana
Smedby, Örjan
Wang, Chunliang
Navab, Nassir
Wendler, Thomas
Astaraki, Mehdi
De Benetti, Francesca
Yeganeh, Yousef
Toma-Dasu, Iuliana
Smedby, Örjan
Wang, Chunliang
Navab, Nassir
Wendler, Thomas
Publication Year :
2023

Abstract

Robust and accurate detection and segmentation of heterogenous tumors appearing in different anatomical organs with supervised methods require large-scale labeled datasets covering all possible types of diseases. Due to the unavailability of such rich datasets and the high cost of annotations, unsupervised anomaly detection (UAD) methods have been developed aiming to detect the pathologies as deviation from the normality by utilizing the unlabeled healthy image data. However, developed UAD models are often trained with an incomplete distribution of healthy anatomies and have difficulties in preserving anatomical constraints. This work intends to, first, propose a robust inpainting model to learn the details of healthy anatomies and reconstruct high-resolution images by preserving anatomical constraints. Second, we propose an autoinpainting pipeline to automatically detect tumors, replace their appearance with the learned healthy anatomies, and based on that segment the tumoral volumes in a purely unsupervised fashion. Three imaging datasets, including PET, CT, and PET-CT scans of lung tumors and head and neck tumors, are studied as benchmarks for evaluation. Experimental results demonstrate the significant superiority of the proposed method over a wide range of state-of-the-art UAD methods. Moreover, the unsupervised method we propose produces comparable results to a robust supervised segmentation method when applied to multimodal images.<br />Comment: 41 pages, 15 figures, follow-up paper to conference abstract at yearly meeting of German Nuclear Medicine in 2022

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1381627699
Document Type :
Electronic Resource