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从数字彩色眼底图像自动定位视盘、中央凹和视网膜血管。

Automated localisation of the optic disc, fovea, and retinal blood vessels from digital colour fundus images.

作者信息

Sinthanayothin C, Boyce J F, Cook H L, Williamson T H

机构信息

Image Processing Group, Department of Physics, King's College, London WC2R 2LS.

出版信息

Br J Ophthalmol. 1999 Aug;83(8):902-10. doi: 10.1136/bjo.83.8.902.

Abstract

AIM

To recognise automatically the main components of the fundus on digital colour images.

METHODS

The main features of a fundus retinal image were defined as the optic disc, fovea, and blood vessels. Methods are described for their automatic recognition and location. 112 retinal images were preprocessed via adaptive, local, contrast enhancement. The optic discs were located by identifying the area with the highest variation in intensity of adjacent pixels. Blood vessels were identified by means of a multilayer perceptron neural net, for which the inputs were derived from a principal component analysis (PCA) of the image and edge detection of the first component of PCA. The foveas were identified using matching correlation together with characteristics typical of a fovea-for example, darkest area in the neighbourhood of the optic disc. The main components of the image were identified by an experienced ophthalmologist for comparison with computerised methods.

RESULTS

The sensitivity and specificity of the recognition of each retinal main component was as follows: 99.1% and 99.1% for the optic disc; 83.3% and 91.0% for blood vessels; 80.4% and 99.1% for the fovea.

CONCLUSIONS

In this study the optic disc, blood vessels, and fovea were accurately detected. The identification of the normal components of the retinal image will aid the future detection of diseases in these regions. In diabetic retinopathy, for example, an image could be analysed for retinopathy with reference to sight threatening complications such as disc neovascularisation, vascular changes, or foveal exudation.

摘要

目的

自动识别数字彩色眼底图像的主要成分。

方法

将眼底视网膜图像的主要特征定义为视盘、黄斑和血管。描述了它们的自动识别和定位方法。112幅视网膜图像通过自适应局部对比度增强进行预处理。视盘通过识别相邻像素强度变化最大的区域来定位。血管通过多层感知器神经网络识别,其输入来自图像的主成分分析(PCA)和PCA第一成分的边缘检测。黄斑通过匹配相关性以及黄斑的典型特征(如视盘附近最暗的区域)来识别。图像的主要成分由经验丰富的眼科医生识别,以便与计算机方法进行比较。

结果

各视网膜主要成分识别的敏感性和特异性如下:视盘为99.1%和99.1%;血管为83.3%和91.0%;黄斑为80.4%和99.1%。

结论

在本研究中,视盘、血管和黄斑被准确检测。视网膜图像正常成分的识别将有助于未来这些区域疾病的检测。例如,在糖尿病视网膜病变中,可以参照诸如视盘新生血管形成、血管变化或黄斑渗出等威胁视力的并发症来分析图像是否存在视网膜病变。

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