Department of Eye and Vision Science, University of Liverpool, Liverpool, United Kingdom.
Invest Ophthalmol Vis Sci. 2012 Dec 17;53(13):8310-8. doi: 10.1167/iovs.12-9576.
To describe and evaluate an automated grading system for age-related macular degeneration (AMD) by color fundus photography.
An automated "disease/no disease" grading system for AMD was developed based on image-mining techniques. First, image preprocessing was performed to normalize color and nonuniform illumination of the fundus images to define a region of interest and to identify and remove pixels belonging to retinal vessels. To represent images for the prediction task, a graph-based image representation using quadtrees was then adopted. Next, a graph-mining technique was applied to the generated graphs to extract relevant features (in the form of frequent subgraphs) from images of both AMD and healthy volunteers. Features of the training data were then fed into a classifier generator for training purposes before employing the trained classifiers to classify new "unseen" images.
The algorithm was evaluated on two publically available fundus-image datasets comprising 258 images (160 AMD and 98 normal). Ten-fold cross validation was used. The experiments produced a best specificity of 100% and a best sensitivity of 99.4% with an overall accuracy of 99.6%. Our approach outperformed previous approaches reported in the literature.
This study has demonstrated a proof-of-concept, image-mining technique for automated AMD grading. This technique has the potential to be further developed as an automated grading tool for future whole-scale AMD screening programs.
描述并评估一种基于眼底彩色照相的年龄相关性黄斑变性(AMD)自动分级系统。
基于图像挖掘技术,开发了一种用于 AMD 的自动“疾病/无疾病”分级系统。首先,进行图像预处理,以标准化眼底图像的颜色和非均匀光照,定义感兴趣区域,并识别和去除属于视网膜血管的像素。为了表示预测任务的图像,采用基于四叉树的图形表示法。接下来,应用图形挖掘技术从 AMD 和健康志愿者的图像中提取相关特征(以频繁子图的形式)。然后,将训练数据的特征输入分类器生成器进行训练,然后使用训练好的分类器对新的“未见”图像进行分类。
该算法在两个公开的眼底图像数据集上进行了评估,包含 258 张图像(160 张 AMD 和 98 张正常)。采用 10 倍交叉验证。实验产生的最佳特异性为 100%,最佳敏感性为 99.4%,总体准确性为 99.6%。我们的方法优于文献中报道的先前方法。
本研究证明了一种用于 AMD 自动分级的图像挖掘技术的概念验证。该技术有可能进一步开发为未来大规模 AMD 筛查计划的自动分级工具。