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Automated Quantification of Optic Nerve Axons in Primate Glaucomatous and Normal Eyesa??Method and Comparison to Semi-Automated Manual Quantification

机译:灵长类青光眼和正常眼的视神经轴突的自动定量方法及其与半自动人工定量方法的比较

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Purpose.: To describe an algorithm and software application (APP) for 100% optic nerve axon counting and to compare its performance with a semi-automated manual (SAM) method in optic nerve cross-section images (images) from normal and experimental glaucoma (EG) nonhuman primate (NHP) eyes. Methods.: ON cross sections from eight EG eyes from eight NHPs, five EG and five normal eyes from five NHPs, and 12 normal eyes from 12 NHPs were imaged at 100??. Calibration (n = 500) and validation (n = 50) image sets ranging from normal to end-stage damage were assembled. Correlation between APP and SAM axon counts was assessed by Deming regression within the calibration set and a compensation formula was generated to account for the subtle, systematic differences. Then, compensated APP counts for each validation image were compared with the mean and 95% confidence interval of five SAM counts of the validation set performed by a single observer. Results.: Calibration set APP counts linearly correlated to SAM counts (APP = 10.77 + 1.03 [SAM]; R 2 = 0.94, P 0.0001) in normal to end-stage damage images. In the validation set, compensated APP counts fell within the 95% confidence interval of the SAM counts in 42 of the 50 images and were within 12 axons of the confidence intervals in six of the eight remaining images. Uncompensated axon density maps for the normal and EG eyes of a representative NHP were generated. Conclusions.: An APP for 100% ON axon counts has been calibrated and validated relative to SAM counts in normal and EG NHP eyes.
机译:目的:描述用于100%视神经轴突计数的算法和软件应用程序(APP),并与半自动手册(SAM)方法在正常和实验性青光眼的视神经横截面图像(图像)中的性能进行比较(EG)非人类灵长类动物(NHP)眼睛。方法:在100℃下,对来自八个NHP的八只EG眼,来自五个NHP的五只EG和五只正常眼以及来自12个NHP的12只正常眼的ON截面成像。组装了从正常到最终损坏范围的校准(n = 500)和验证(n = 50)图像集。通过在校准集中进行Deming回归评估APP和SAM轴突计数之间的相关性,并生成补偿公式以解释细微的系统差异。然后,将每个验证图像的补偿APP计数与单个观察者执行的验证集的五个SAM计数的平均值和95%置信区间进行比较。结果:在正常至末期损伤图像中,校准集APP计数与SAM计数线性相关(APP = 10.77 + 1.03 [SAM]; R 2 = 0.94,P <0.0001)。在验证集中,补偿后的APP计数落在50幅图像中的42张SAM计数的95%置信区间内,并且在其余八幅图像中的六张可信区间的12轴突内。生成了代表NHP的正常和EG眼的未补偿轴突密度图。结论:相对于正常和EG NHP眼睛中的SAM计数,已经校准并验证了轴突计数为100%的APP。

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