Pseudo-healthy synthesis is the task of creating a subject-specific `healthy' image from a pathological one. Such images can be helpful in tasks such as anomaly detection and understanding changes induced by pathology and disease. In this paper, we present a model that is encouraged to disentangle the information of pathology from what seems to be healthy. We disentangle what appears to be healthy and where disease is as a segmentation map, which are then recombined by a network to reconstruct the input disease image. We train our models adversarially using either paired or unpaired settings, where we pair disease images and maps when available. We quantitatively and subjectively, with a human study, evaluate the quality of pseudo-healthy images using several criteria. We show in a series of experiments, performed on ISLES, BraTS and Cam-CAN datasets, that our method is better than several baselines and methods from the literature. We also show that due to better training processes we could recover deformations, on surrounding tissue, caused by disease. Our implementation is publicly available at https://github.com/xiat0616/pseudo-healthy-synthesis. This paper has been accepted by Medical Image Analysis: https://doi.org/10.1016/j.media.2020.101719.
翻译:从病理学角度制作一个特定主题的“健康”图像是一项任务。这种图像有助于诸如病理学和疾病引起的异常现象检测和理解变化等任务。在本文中,我们提出了一个模型,鼓励将病理学信息与似乎健康的信息分离开来。我们分解了看来健康的东西,而疾病是分解图,然后由网络重新组合,以重建输入疾病图像。我们用配对或未配对的设置来培训我们的模型,我们在那里对疾病图像和地图进行配对。我们通过一项人类研究,从数量上和主观上评估假健康图像的质量。我们通过一系列实验,在ISLES、BRATS和CM-CAN数据集中显示,我们的方法比文献中的若干基线和方法要好。我们还表明,由于培训过程的改进,我们可以恢复20个因疾病引起的组织上的畸形。我们的实施在https://giub.10.com/xiat06/psimasdohohealheals上公开提供,在https://gisab.10.com/choat0616/simmavialhealhealvialvialheal.