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Deep Learning Based Multi-modal Registration for Retinal Imaging

机译:基于深度学习的视网膜成像多模式配准

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The precise alignment of retina images from different modalities allows ophthalmologists not only to track morphological/pathological changes over time but also to combine different modalities to approach the diagnosis, prognostication, management and monitoring of a retinal disease. We propose an image registration algorithm to trace changes in the retina structure across modalities using vessel segmentation and automatic landmark detection. The segmentation of the vessels is done using a U-Net and the detection of the vessel junctions is achieved with Mask R-CNN. We evaluated the results of our approach using manual grading by expert readers. In the largest dataset (FA-to-SLO/OCT) containing 1130 pairs we achieve an average error rate of 13.12%. We compared our method with intensity based affine registration methods using original and vessel segmentation images.
机译:来自不同方式的视网膜图像的精确对准使眼科医生不仅可以跟踪随时间变化的形态/病理变化,而且可以结合不同的方式来进行视网膜疾病的诊断,预后,管理和监测。我们提出了一种图像配准算法,以使用血管分割和自动界标检测来跟踪跨模态的视网膜结构变化。使用U-Net进行血管分割,并使用Mask R-CNN实现血管连接的检测。我们使用专业读者的手动评分来评估我们方法的结果。在包含1130对的最大数据集(FA到SLO / OCT)中,我们实现了13.12%的平均错误率。我们将我们的方法与使用原始和血管分割图像的基于强度的仿射配准方法进行了比较。

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