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Cone Photoreceptor Cell Segmentation and Diameter Measurement on Adaptive Optics Images Using Circularly Constrained Active Contour Model

机译:圆锥约束的主动轮廓模型在自适应光学图像上的锥体感光细胞分割和直径测量

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Purpose : Cone photoreceptor cells can be noninvasively imaged in the living human eye by using nonconfocal adaptive optics scanning ophthalmoscopy split detection. Existing metrics, such as cone density and spacing, are based on simplifying cone photoreceptors to single points. The purposes of this study were to introduce a computer-aided approach for segmentation of cone photoreceptors, to apply this technique to create a normal database of cone diameters, and to demonstrate its use in the context of existing metrics. Methods : Cone photoreceptor segmentation is achieved through a circularly constrained active contour model (CCACM). Circular templates and image gradients attract active contours toward cone photoreceptor boundaries. Automated segmentation from in vivo human subject data was compared to ground truth established by manual segmentation. Cone diameters computed from curated data (automated segmentation followed by manual removal of errors) were compared with histology and published data. Results : Overall, there was good agreement between automated and manual segmentations and between diameter measurements (n = 5191 cones) and published histologic data across retinal eccentricities ranging from 1.35 to 6.35 mm (temporal). Interestingly, cone diameter was correlated to both cone density and cone spacing (negatively and positively, respectively; P P 0.05). Conclusions : CCACM can accurately segment cone photoreceptors on split detection images across a range of eccentricities. Metrics derived from this automated segmentation of adaptive optics retinal images can provide new insights into retinal diseases.
机译:目的:通过使用非锥度自适应光学扫描检眼镜分割检测技术,可以在人眼中对锥体感光细胞进行无创成像。现有的度量标准(例如视锥细胞密度和间距)是基于将视锥细胞感光器简化为单点。这项研究的目的是介绍一种用于分割视锥光感受器的计算机辅助方法,将该技术应用于创建视锥直径的标准数据库,并证明其在现有度量标准中的应用。方法:通过圆形约束主动轮廓模型(CCACM)实现锥体感光体分割。圆形模板和图像渐变将活动轮廓吸引到锥感光体边界。将来自体内人类受试者数据的自动分割与通过手动分割建立的地面真相进行比较。从组织数据(自动分割,然后手动消除错误)计算出的圆锥直径与组织学和已发表数据进行比较。结果:总体而言,自动和手动分割之间以及直径测量之间(n = 5191视锥)与已公布的视网膜偏心范围为1.35至6.35 mm(颞侧)的组织学数据之间存在良好的一致性。有趣的是,圆锥直径与圆锥密度和圆锥间距相关(分别为负和正; P P <0.05)。结论:CCACM可以准确地在一系列偏心距上的分割检测图像上分割锥形感光体。从这种自适应光学视网膜图像的自动分割中得出的指标可以为视网膜疾病提供新的见解。

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