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Deep-learning based multi-modal retinal image registration for the longitudinal analysis of patients with age-related macular degeneration

机译:基于深度学习的多模态视网膜图像注册用于年龄相关性黄斑变性患者的纵向分析

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摘要

This work reports a deep-learning based registration algorithm that aligns multi-modal retinal images collected from longitudinal clinical studies to achieve accuracy and robustness required for analysis of structural changes in large-scale clinical data. Deep-learning networks that mirror the architecture of conventional feature-point-based registration were evaluated with different networks that solved for registration affine parameters, image patch displacements, and patch displacements within the region of overlap. The ground truth images for deep learning-based approaches were derived from successful conventional feature-based registration. Cross-sectional and longitudinal affine registrations were performed across color fundus photography (CFP), fundus autofluorescence (FAF), and infrared reflectance (IR) image modalities. For mono-modality longitudinal registration, the conventional feature-based registration method achieved mean errors in the range of 39-53 µm (depending on the modality) whereas the deep learning method with region overlap prediction exhibited mean errors in the range 54-59 µm. For cross-sectional multi-modality registration, the conventional method exhibited gross failures with large errors in more than 50% of the cases while the proposed deep-learning method achieved robust performance with no gross failures and mean errors in the range 66-69 µm. Thus, the deep learning-based method achieved superior overall performance across all modalities. The accuracy and robustness reported in this work provide important advances that will facilitate clinical research and enable a detailed study of the progression of retinal diseases such as age-related macular degeneration.
机译:这项工作报告了一种基于深度学习的登记算法,该算法对准从纵向临床研究中收集的多模态视网膜图像,以实现大规模临床数据中结构变化所需的准确性和稳健性。镜像镜像传统特征点的重叠的不同网络评估了镜像传统特征点注册的架构的深度学习网络,该不同网络评估了重叠区域内的图像补丁位移和补丁位移。基于深度学习的方法的地面真理图像来自成功的常规功能的注册。横截面和纵向仿射注射在彩色眼底摄影(CFP),眼底自发荧光(FAF)和红外反射率(IR)图像方式进行。对于单态纵向登记,传统的基于特征的配准法在39-53μm的范围内实现了平均误差(取决于模态),而具有区域重叠预测的深度学习方法在54-59μm的范围内表现出平均误差。对于横截面多种方式注册,传统方法展示了超过50%的误差的总失败,而提出的深度学习方法则实现了稳健性能,没有总体故障,均值误差为66-69μm。 。因此,基于深度学习的方法在所有模式中实现了卓越的整体性能。本工作中报告的准确性和稳健性提供了重要进展,促进临床研究,并能够详细研究视网膜疾病的进展,如年龄相关的黄斑变性。

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