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Accurate Correspondence of Cone Photoreceptor Neurons in the Human Eye Using Graph Matching Applied to Longitudinal Adaptive Optics Images

机译:使用曲线匹配应用于纵向自适应光学图像的人眼中锥形光感受器神经元的准确对应关系

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Loss of cone photoreceptor neurons is a leading cause of many blinding retinal diseases. Direct visualization of these cells in the living human eye is now feasible using adaptive optics scanning light ophthalmoscopy (AOSLO). However, it remains challenging to monitor the state of specific cells across multiple visits, due to inherent eye-motion-based distortions that arise during data acquisition, artifacts when overlapping images are montaged, as well as substantial variability in the data itself. This paper presents an accurate graph matching framework that integrates (1) robust local intensity order patterns (LIOP) to describe neuron regions with illumination variation from different visits; (2) a sparse-coding based voting process to measure visual similarities of neuron pairs using LIOP descriptors; and (3) a graph matching model that combines both visual similarity and geometrical cone packing information to determine the correspondence of repeated imaging of cone photoreceptor neurons across longitudinal AOSLO datasets. The matching framework was evaluated on imaging data from ten subjects using a validation dataset created by removing 15% of the neurons from 713 neuron correspondences across image pairs. An overall matching accuracy of 98% was achieved. The framework was robust to differences in the amount of overlap between image pairs. Evaluation on a test dataset showed that the matching accuracy remained at 98% on approximately 3400 neuron correspondences, despite image quality degradation, illumination variation, large image deformation, and edge artifacts. These experimental results show that our graph matching approach can accurately identify cone photoreceptor neuron correspondences on longitudinal AOSLO images.
机译:锥形光感受器神经元的丧失是许多眩目视网膜疾病的主要原因。使用自适应光学扫描光眼镜(AOSLO)直接可视化这些细胞的直接可视化现在可行。然而,监视多次访问的特定细胞状态仍然具有挑战性,由于在数据采集期间出现的基于内部运动的失真,在重叠图像被蒙编码时出现的伪像,以及数据本身的实质性变异性。本文介绍了一个准确的图表匹配框架,它集成了(1)稳健的局部强度顺序模式(LIOP)来描述具有不同访问的照明变化的神经元区域; (2)基于稀疏编码的投票过程,用于使用LioP描述符测量神经元对的视觉相似性; (3)曲线图匹配模型,其结合了视觉相似性和几何锥形填充信息,以确定锥形光感受器神经元跨越纵向AOSLO数据集的反复成像的对应关系。使用通过从图像对的713神经元对应中从713神经元对应中移除15%的验证数据集来评估匹配框架从十个受试者的成像数据。实现了98%的整体匹配准确性。该框架对图像对之间的重叠量的差异很强。在测试数据集上的评估显示,尽管图像质量下降,照明变化,大图像变形和边缘伪像,但匹配精度仍保持在大约3400个神经元对应的98%。这些实验结果表明,我们的图形匹配方法可以准确地识别纵向AOSLO图像上的锥形光感受器神经元对应。

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