A Deep Network for Joint Registration and Reconstruction of Images with Pathologies.

Xu Han, Zhengyang Shen, Zhenlin Xu, Spyridon Bakas, Hamed Akbari, Michel Bilello, Christos Davatzikos, Marc Niethammer
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引用次数: 10

Abstract

Registration of images with pathologies is challenging due to tissue appearance changes and missing correspondences caused by the pathologies. Moreover, mass effects as observed for brain tumors may displace tissue, creating larger deformations over time than what is observed in a healthy brain. Deep learning models have successfully been applied to image registration to offer dramatic speed up and to use surrogate information (e.g., segmentations) during training. However, existing approaches focus on learning registration models using images from healthy patients. They are therefore not designed for the registration of images with strong pathologies for example in the context of brain tumors, and traumatic brain injuries. In this work, we explore a deep learning approach to register images with brain tumors to an atlas. Our model learns an appearance mapping from images with tumors to the atlas, while simultaneously predicting the transformation to atlas space. Using separate decoders, the network disentangles the tumor mass effect from the reconstruction of quasi-normal images. Results on both synthetic and real brain tumor scans show that our approach outperforms cost function masking for registration to the atlas and that reconstructed quasi-normal images can be used for better longitudinal registrations.

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带病理图像联合配准与重建的深度网络。
由于病理引起的组织外观变化和缺失对应关系,图像与病理的配准具有挑战性。此外,在脑肿瘤中观察到的质量效应可能会使组织移位,随着时间的推移,产生比在健康大脑中观察到更大的变形。深度学习模型已成功应用于图像配准,以提供显著的速度并在训练期间使用替代信息(例如分割)。然而,现有的方法侧重于使用来自健康患者的图像来学习配准模型。因此,它们不是为了配准具有强烈病理学的图像而设计的,例如在脑肿瘤和创伤性脑损伤的背景下。在这项工作中,我们探索了一种深度学习方法,将脑肿瘤图像注册到图谱中。我们的模型学习从肿瘤图像到图谱的外观映射,同时预测到图谱空间的转换。该网络使用单独的解码器,将肿瘤质量效应与准正常图像的重建分离开来。合成和真实脑肿瘤扫描的结果表明,我们的方法在配准到图谱方面优于成本函数掩蔽,并且重建的准正常图像可以用于更好的纵向配准。
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