Abstract

In order to establish population-based analysis of image data from multi-center studies, it is often helpful to disentangle images in their shape and appearance components. However, abnormal (e.g. pathological) and normal appearances of images strongly differ and should ideally be separated in the modeling process. In this work, we propose a metamorphic autoencoder for the disentanglement of shape as well as normal and abnormal appearance of medical images by integrating a low-rank and sparse decomposition into the training process. Experiments show that this method can reliably be used for unsupervised pathology disentanglement opening perspectives for unsupervised pathology segmentation, pseudo-healthy image synthesis and conditional image generation.

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