首页> 外文期刊>Investigative ophthalmology & visual science >Improving the repeatability of topographic height measurements in confocal scanning laser imaging using maximum-likelihood deconvolution.
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Improving the repeatability of topographic height measurements in confocal scanning laser imaging using maximum-likelihood deconvolution.

机译:在使用最大似然反卷积的共聚焦扫描激光成像中提高地形高度测量的可重复性。

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摘要

PURPOSE: To evaluate maximum likelihood (ML) blind deconvolution as a technique for improving the repeatability of topographic height measurements obtained from scanning laser tomography (Heidelberg Retinal Tomograph [HRT]; Heidelberg Engineering, Heidelberg, Germany). METHODS: ML blind deconvolution is an image-processing technique that estimates the original scene from a degraded image. This technique has been used in confocal scanning laser microscopy to remove "out-of-focus" haze in three-dimensional confocal image stacks. ML blind deconvolution requires no prior estimation of the point-spread function (PSF), as opposed to classic linear deconvolution methods. Instead, the algorithm estimates an initial PSF based on the optical setup of the confocal scanning device and optics of the eye and iteratively proceeds to a solution. The improvement in repeatability of height measurements from mean topography images within scan (intrascan) and between scans (interscan) afforded by ML deconvolution was evaluated in a test-retest series of HRT images from 40 ocular hypertensive and glaucomatous patients with varying degrees of media opacity. RESULTS: There was an improvement in intrascan repeatability in 38 out of the 40 mean topography images (median improvement 2.5 microm, inter-quartile range 2.19, P < 0.001), and an improvement in interscan repeatability in 33 of the 40 mean topographies (median improvement, 1.0 microm, interquartile range 3.49, P < 0.001). There was a positive association between the magnitude of the improvement in repeatability and the level of mean pixel height standard deviation (MPHSD), intrascan (P = 0.004) and interscan (P = 0.002). CONCLUSIONS: ML blind deconvolution algorithm improves the repeatability of topographic height measurements from the HRT. This improvement was greater in patients with poorer quality images.
机译:目的:评估最大似然(ML)盲反褶积技术,以提高从扫描激光层析成像(Heidelberg Retinaal Tomograph [HRT]; Heidelberg Engineering,Heidelberg,Germany)获得的地形高度测量的可重复性。方法:ML盲解卷积是一种图像处理技术,可从降级的图像估计原始场景。此技术已用于共聚焦扫描激光显微镜中,以消除三维共聚焦图像堆栈中的“离焦”雾度。与经典的线性反卷积方法相比,ML盲解卷积不需要点扩展函数(PSF)的事先估计。取而代之的是,该算法根据共焦扫描设备的光学设置和眼睛的光学器件来估算初始PSF,然后迭代进行求解。在40例不同程度的介质不透明度的高眼压和青光眼患者的HRT图像重测系列中,评估了ML解卷积在扫描内(扫描内)和扫描之间(扫描内)的平均地形图像的高度测量结果的可重复性。结果:40幅平均地形图图像中有38幅的扫描内重复性得到了改善(中值改善了2.5微米,四分位间距为2.19,P <0.001),而40幅平均地形图中的33幅扫描中了重复性得到了改善(中位数改进,1.0微米,四分位间距3.49,P <0.001)。重复性的改善幅度与平均像素高度标准偏差(MPHSD),内部扫描(P = 0.004)和内部扫描(P = 0.002)的水平之间存在正相关。结论:ML盲解卷积算法提高了HRT进行地形高度测量的可重复性。对于质量较差图像的患者,这种改善更大。

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