Litcius/Paper detail

ipA-MedGAN: Inpainting of Arbitrary Regions in Medical Imaging

Karim Armanious, Vijeth Kumar, Sherif Abdulatif, Tobias Hepp, Sergios Gatidis, Bin Yang

202032 citationsDOIOpen Access PDF

Abstract

Local deformations in medical modalities are common phenomena due to a multitude of factors such as metallic implants or limited field of views in magnetic resonance imaging (MRI). Completion of the missing or distorted regions is of special interest for automatic image analysis frameworks to enhance post-processing tasks such as segmentation or classification. In this work, we propose a new generative framework for medical image inpainting, titled ipA-MedGAN. It bypasses the limitations of previous frameworks by enabling inpainting of arbitrary shaped regions without a prior localization of the regions of interest. Thorough qualitative and quantitative comparisons with other inpainting and translational approaches have illustrated the superior performance of the proposed framework for the task of brain MR inpainting.

Topics & Concepts

InpaintingArtificial intelligenceComputer visionComputer scienceMedical imagingSegmentationTask (project management)Field (mathematics)Image (mathematics)Image segmentationModalitiesMagnetic resonance imagingMedical diagnosisIterative reconstructionGenerative grammarPattern recognition (psychology)Image restorationImage registrationModality (human–computer interaction)Image processingGenerative modelGenerative Adversarial Networks and Image SynthesisAI in cancer detectionMedical Image Segmentation Techniques