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正常和青光眼性视神经乳头地形图图像的自动分析。

Automated analysis of normal and glaucomatous optic nerve head topography images.

作者信息

Swindale N V, Stjepanovic G, Chin A, Mikelberg F S

机构信息

Department of Ophthalmology, University of British Columbia, Vancouver, Canada.

出版信息

Invest Ophthalmol Vis Sci. 2000 Jun;41(7):1730-42.

Abstract

PURPOSE

To classify images of optic nerve head (ONH) topography obtained by scanning laser ophthalmoscopy as normal or glaucomatous without prior manual outlining of the optic disc.

METHODS

The shape of the ONH was modeled by a smooth two-dimensional surface with a shape described by 10 free parameters. Parameters were adjusted by least-squares fitting to give the best fit of the model to the image. These parameters, plus others derived from the image using the model as a basis, were used to discriminate between normal and abnormal images. The method was tested by applying it to ONH topography images, obtained with the Heidelberg Retina Tomograph, from 100 normal volunteers and 100 patients with glaucomatous visual field damage.

RESULTS

Many of the parameters derived from the fits differed significantly between normal and glaucomatous ONH images. They included the degree of surface curvature of the disc region surrounding the cup, the steepness of the cup walls, the goodness-of-fit of the model to the image in the cup region, and measures of cup width and cup depth. The statistics of the parameters were analyzed and were used to construct a classifier that gave the probability, P(G), that each image came from the glaucoma population. Images were classified as abnormal if P(G) > 0.5. The probabilities assigned to each image were in most cases close to 0 (normal) or 1 (abnormal). Eighty-seven percent of the sample was confidently classified with P(G) < 0.3 or P(G) > 0.7. Within this group, the overall classification accuracy was 92%. The overall accuracy of the method (the mean of sensitivity and specificity, which were similar) in the whole sample was 89%.

CONCLUSIONS

ONH images can be classified objectively and dependably by an automated procedure that does not require prior manual outlining of disc boundaries.

摘要

目的

在无需事先手动勾勒视盘轮廓的情况下,将通过扫描激光检眼镜获得的视神经乳头(ONH)地形图图像分类为正常或青光眼性图像。

方法

ONH的形状由一个光滑的二维表面建模,其形状由10个自由参数描述。通过最小二乘法拟合调整参数,以使模型与图像最佳拟合。这些参数,加上以该模型为基础从图像中导出的其他参数,用于区分正常图像和异常图像。将该方法应用于用海德堡视网膜断层扫描仪获得的100名正常志愿者和100名有青光眼性视野损害患者的ONH地形图图像,对该方法进行测试。

结果

从拟合中得出的许多参数在正常和青光眼性ONH图像之间存在显著差异。它们包括视杯周围盘区的表面曲率程度、视杯壁的陡峭程度、模型在视杯区域与图像的拟合优度,以及视杯宽度和视杯深度的测量值。对这些参数的统计数据进行分析,并用于构建一个分类器,该分类器给出每张图像来自青光眼群体的概率P(G)。如果P(G)>0.5,则将图像分类为异常。在大多数情况下,分配给每张图像的概率接近0(正常)或1(异常)。87%的样本通过P(G)<0.3或P(G)>0.7被可靠分类。在该组内,总体分类准确率为92%。该方法在整个样本中的总体准确率(敏感性和特异性的平均值,两者相似)为89%。

结论

ONH图像可以通过一种无需事先手动勾勒视盘边界的自动化程序进行客观可靠的分类。

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