Centre for Eye Health, University of New South Wales, Sydney, New South Wales, Australia.
School of Optometry and Vision Science, University of New South Wales, Sydney, New South Wales, Australia.
Invest Ophthalmol Vis Sci. 2018 Apr 1;59(5):1790-1799. doi: 10.1167/iovs.17-23076.
To develop a proof-of-concept, computational method for the quantification and classification of fundus images in intermediate age-related macular degeneration (AMD).
Multispectral, unsupervised pattern recognition was applied to 184 fundus images from 10 normal and 36 intermediate AMD eyes. The imaging results of preprocessed, grayscale images from three modalities (infrared, green, and fundus autofluorescence scanning laser ophthalmoscopy) were automatically classified into various clusters sharing a common spectral signature, using a k-means clustering algorithm. Class separability was calculated by using transformed divergence (DT). The classification results for large drusen, pigmentary abnormalities, and areas unaffected by AMD were compared against three expert observers for concordance, and to calculate sensitivity and specificity.
Multispectral, unsupervised pattern recognition successfully identified a finite number of AMD-specific, statistically separable signatures in eyes with intermediate AMD. By using a correct classification criterion of >83% for identical clusters and a total of 1693 expert annotations, the sensitivity and specificity of multispectral pattern recognition for the detection of AMD lesions was 74% and 98%, respectively. Large drusen and pigmentary abnormalities were correctly classified in 75% and 68% of instances, respectively.
We describe herein a novel approach for the classification of multispectral images in intermediate AMD. Automated classification of intermediate AMD, using multispectral pattern recognition, has moderate sensitivity and high specificity, when compared against clinical experts. The methods described may have a future role in AMD screening or monitoring.
开发一种用于定量和分类中期年龄相关性黄斑变性(AMD)眼底图像的概念验证计算方法。
将多光谱、无监督模式识别应用于 10 只正常眼和 36 只中期 AMD 眼中的 184 张眼底图像。使用 k-均值聚类算法,对来自三种模式(红外、绿色和眼底自发荧光扫描激光检眼镜)的预处理灰度图像的成像结果自动分类为具有共同光谱特征的各种聚类。使用变换散度(DT)计算分类分离度。将大玻璃膜疣、色素异常和不受 AMD 影响的区域的分类结果与三位专家观察者进行一致性比较,并计算敏感性和特异性。
多光谱、无监督模式识别成功地在中期 AMD 眼中识别出有限数量的具有 AMD 特异性的、统计学上可分离的特征。使用>83%的正确分类标准来识别相同的聚类,以及总共 1693 次专家注释,多光谱模式识别对 AMD 病变检测的敏感性和特异性分别为 74%和 98%。大玻璃膜疣和色素异常的分类准确率分别为 75%和 68%。
我们在此描述了一种用于中期 AMD 多光谱图像分类的新方法。与临床专家相比,使用多光谱模式识别对中期 AMD 进行自动分类具有中等的敏感性和较高的特异性。所描述的方法可能在 AMD 筛查或监测方面具有未来的作用。