Improving cone identification using merged non-confocal quadrant-detection adaptive optics scanning light ophthalmoscope images

利用融合的非共焦象限检测自适应光学扫描光眼底镜图像来改进锥体识别

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Abstract

Cone photoreceptor inner segments visualized in non-confocal split-detection adaptive optics scanning light ophthalmoscope (AOSLO) images appear as obliquely illuminated domes with bright and dark opposing regions. Previously, the pairing of these bright and dark regions for automated photoreceptor identification has necessitated complex algorithms. Here we demonstrate how the merging of split-detection images captured with a non-confocal quadrant light detection scheme allows automated cone identification using simple, open-source image processing tools, while also improving accuracy in both normal and pathologic retinas.

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