University of Chinese Academy of Sciences, Beijing, 100049, China.
Cixi Institute of Biomedical Engineering, Ningbo Institute of Materials Technology and Engineering, Chinese Academy of Sciences, Cixi, 315399, China.
Med Phys. 2019 Oct;46(10):4531-4544. doi: 10.1002/mp.13746. Epub 2019 Aug 31.
The detection of abnormalities such as lesions or leakage from retinal images is an important health informatics task for automated early diagnosis of diabetic and malarial retinopathy or other eye diseases, in order to prevent blindness and common systematic conditions. In this work, we propose a novel retinal lesion detection method by adapting the concepts of saliency.
Retinal images are first segmented as superpixels, two new saliency feature representations: uniqueness and compactness, are then derived to represent the superpixels. The pixel level saliency is then estimated from these superpixel saliency values via a bilateral filter. These extracted saliency features form a matrix for low-rank analysis to achieve saliency detection. The precise contour of a lesion is finally extracted from the generated saliency map after removing confounding structures such as blood vessels, the optic disk, and the fovea. The main novelty of this method is that it is an effective tool for detecting different abnormalities at the pixel level from different modalities of retinal images, without the need to tune parameters.
To evaluate its effectiveness, we have applied our method to seven public datasets of diabetic and malarial retinopathy with four different types of lesions: exudate, hemorrhage, microaneurysms, and leakage. The evaluation was undertaken at the pixel level, lesion level, or image level according to ground truth availability in these datasets.
The experimental results show that the proposed method outperforms existing state-of-the-art ones in applicability, effectiveness, and accuracy.
从视网膜图像中检测病变或渗漏等异常情况,是自动诊断糖尿病性和疟疾性视网膜病变或其他眼部疾病以预防失明和常见系统性疾病的重要健康信息学任务。在这项工作中,我们通过采用显著图的概念提出了一种新的视网膜病变检测方法。
首先将视网膜图像分割为超像素,然后提取两个新的显著特征表示:独特性和紧致性,用于表示超像素。通过双边滤波器从这些超像素显著值中估计像素级显著值。这些提取的显著特征形成一个矩阵,通过低秩分析来实现显著检测。从生成的显著图中去除血管、视盘和黄斑等混杂结构后,最终从生成的显著图中提取病变的精确轮廓。该方法的主要新颖之处在于,它是一种从不同模态的视网膜图像中以像素级检测不同异常的有效工具,而无需调整参数。
为了评估其有效性,我们将该方法应用于七个具有四种不同病变类型(渗出物、出血、微动脉瘤和渗漏)的糖尿病性和疟疾性视网膜病变公共数据集。根据这些数据集的ground truth 的可用性,在像素级、病变级或图像级进行评估。
实验结果表明,该方法在适用性、有效性和准确性方面优于现有的最先进方法。