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Photoreceptor counting and montaging of en-face retinal images from an adaptive optics fundus camera

机译:来自自适应光学眼底照相机的视网膜表面图像的感光器计数和蒙太奇

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摘要

A fast and efficient method for quantifying photoreceptor density in images obtained with an en-face flood-illuminated adaptive optics (AO) imaging system is described. To improve accuracy of cone counting, en-face images are analyzed over extended areas. This is achieved with two separate semiautomated algorithms: (1) a montaging algorithm that joins retinal images with overlapping common features without edge effects and (2) a cone density measurement algorithm that counts the individual cones in the montaged image. The accuracy of the cone density measurement algorithm is high, with >97% agreement for a simulated retinal image (of known density, with low contrast) and for AO images from normal eyes when compared with previously reported histological data. Our algorithms do not require spatial regularity in cone packing and are, therefore, useful for counting cones in diseased retinas, as demonstrated for eyes with Stargardt’s macular dystrophy and retinitis pigmentosa.
机译:描述了一种快速有效的方法,用于量化使用面部泛光自适应光学(AO)成像系统获得的图像中的感光体密度。为了提高锥体计数的准确性,在扩展区域上分析了面部图像。这可以通过两种独立的半自动化算法来实现:(1)蒙太奇算法,该蒙太奇算法将具有重叠共同特征的视网膜图像连接在一起,而没有边缘效应;(2)锥体密度测量算法,用于对蒙太奇图像中的各个锥体进行计数。与先前报告的组织学数据相比,视锥细胞密度测量算法的准确性很高,对于模拟的视网膜图像(已知密度,低对比度)和正常眼睛的AO图像,一致性> 97%。我们的算法不需要视锥细胞堆积的空间规律性,因此,对于计数患病视网膜中的视锥细胞非常有用,如患有Stargardt黄斑营养不良和色素性视网膜炎的眼睛所证明的那样。

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