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首页> 外文期刊>Investigative ophthalmology & visual science >An In Silico Model of Scanning Laser Tomography Image Series: An Alternative Benchmark for the Specificity of Progression Algorithms
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An In Silico Model of Scanning Laser Tomography Image Series: An Alternative Benchmark for the Specificity of Progression Algorithms

机译:扫描断层扫描图像系列的计算机模型:级联算法特异性的替代基准

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Purpose.: There is no gold-standard measurement of glaucomatous structural progression against which to validate software progression algorithms. A computer model was developed and validated to simulate stable series of Heidelberg Retina Tomograph II (HRT; Heidelberg Engineering, Heidelberg, Germany) images, with realistic topographic variability, suitable for benchmarking false-positive rates of progression algorithms. Methods.: Three confocal image stacks were selected from each of five sets of HRT II scans, obtained within 6 weeks in 127 eyes of 66 patients. For each eye, a simulated series was propagated from one baseline confocal stack by adding fixational eye movements, photon-counting, and electronic measurement noise. Simulated confocal stacks were imported into the HRT software to generate topography images. Real and simulated image comparisons were quantified with the mean pixel height standard deviation (MPHSD), image cross-correlation (CC) of pixel-wise variability maps, and the rim area (RA) coefficient of variation (CV). Results.: The mean difference (95% limits of agreement; LoA) in MPHSD between real and simulated images was 3.5 ??m (a??20.9 to 28.8 ??m) within mean topographies and 2.0 ??m (a??5.4 to 9.3 ??m) between mean topographies. The mean CC between real and simulated spatial variability maps was 0.58 within mean topographies and 0.54 between mean topographies. The mean difference (95% LoA) between real and simulated mean topography RA CV was a??2.1% (a??17.6% to +13.4%). Variability about anatomic features was well reproduced. Conclusions.: Simulation realistically reproduces variability in real, stable images acquired over a short period. Stability in clinical datasets is uncertain, whereas in these modeled series, it is certain. This method provides benchmark datasets on which the specificity of progression algorithms can be tested.
机译:目的:目前尚无针对青光眼结构进展的金标准测量方法,可用来验证软件进行算法。开发并验证了计算机模型,以模拟海德堡视网膜断层扫描仪II(HRT;海德堡工程公司,海德堡,德国)图像的稳定序列,具有真实的地形变异性,适用于标定渐进算法的假阳性率。方法:从五组HRT II扫描中各选择三个共聚焦图像堆栈,这些图像在6周内从66位患者的127眼中获得。对于每只眼睛,通过添加固定眼动,光子计数和电子测量噪声,从一个基线共聚焦堆栈传播一个模拟序列。将模拟的共焦堆栈导入HRT软件以生成地形图。使用平均像素高度标准差(MPHSD),逐像素可变性图的图像互相关(CC)和边缘区域(RA)变异系数(CV)来量化真实和模拟图像比较。结果:真实图像和模拟图像之间MPHSD的平均差异(95%一致限; LoA)在平均地形范围内为3.5 ?? m(a ?? 20.9至28.8 ?? m),而在平均地形内为2.0 ?? m(a?a)。平均地形之间的距离为5.4至9.3?m)。实际和模拟空间变异图之间的平均CC在平均地形内为0.58,在平均地形间为0.54。真实和模拟平均地形RA CV的平均差(95%LoA)为a ?? 2.1%(a ?? 17.6%至+ 13.4%)。关于解剖特征的变异性被很好地再现。结论:仿真真实地再现了在短时间内获得的真实,稳定图像中的可变性。临床数据集中的稳定性尚不确定,而在这些建模的系列中,则是肯定的。此方法提供了基准数据集,可以在其上测试级数算法的特异性。

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