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Automated measurements of human cone photoreceptor density in healthy and degenerative retina by region-based segmentation

机译:通过基于区域的分割自动测量健康和退化性视网膜中人锥体感光细胞的密度

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Purpose: The purpose of this study was to develop an algorithm based on region-based segmentation for automated calculations of human cone photoreceptor density of en face images obtained by an adaptive optics scanning laser ophthalmoscope (AOSLO). Subjects and methods: Cone mosaics of 15 eyes of 15 healthy subjects were photographed by a custom-built AOSLO. The cone density was calculated at 0.5, 1.0, and 1.5?mm temporal from the fovea using a region-based segmentation method (RSM) developed in our laboratory. The cone density was also determined by a manual identification method (MIM) and a conventional spatial filtering method (SFM). The cone densities of three eyes of three patients with retinal degeneration were calculated by the three methods and compared to the results from normal eyes. Results: The cone densities in healthy retinas determined by the RSM at 0.5, 1.0, and 1.5?mm temporal from the fovea were 28,436, 21,233, and 13,620?cells/mm2, respectively. These densities were in good agreement with a histological study and with in vivo AOSLO studies. The cone densities determined by RSM were different from those determined by MIM with a difference of 5% in healthy eyes. In eyes with retinal degeneration, with the appropriate threshold-level settings or spatial frequency bandwidth, the cone density measured by MIM was significantly closer to that measured by RSM than by SFM. Conclusion: These results suggest that our method is more stable than conventional methods in cases of non-periodical photoreceptor structures such as the affected retinal area. Our method can be used in the longitudinal follow-up of retinal degenerative diseases and to determine the effect of therapy.
机译:目的:本研究的目的是开发一种基于区域分割的算法,用于自动计算由自适应光学扫描激光检眼镜(AOSLO)获得的人脸图像的人锥光感受器密度。受试者和方法:通过定制的AOSLO对15名健康受试者的15只眼睛的圆锥形马赛克进行拍照。使用我们实验室开发的基于区域的分割方法(RSM),从中央凹处计算出的视锥细胞在距中央凹处的时间分别为0.5、1.0和1.5?mm。锥密度也通过手动识别方法(MIM)和常规空间过滤方法(SFM)确定。通过三种方法计算了三名视网膜变性患者的三只眼的视锥密度,并与正常眼的结果进行了比较。结果:在距中央凹0.5、1.0和1.5?mm处,由RSM确定的健康视网膜的视锥密度分别为28,436、21,233和13620?cells / mm 2 。这些密度与组织学研究和体内AOSLO研究非常吻合。在健康的眼睛中,通过RSM确定的视锥密度与通过MIM确定的视锥密度相差5%。在具有适当阈值水平设置或空间频率带宽的视网膜变性眼中,MIM测量的视锥密度显着接近RSM测量的视锥密度而不是SFM测量的视锥密度。结论:这些结果表明,在非周期性光感受器结构(例如受影响的视网膜区域)的情况下,我们的方法比常规方法更稳定。我们的方法可用于视网膜变性疾病的纵向随访并确定治疗效果。

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