Karnowski T P, Aykac D, Giancardo L, Li Y, Nichols T, Tobin K W, Chaum E
Oak Ridge National Laboratory, Oak Ridge, TN 37831, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:5959-64. doi: 10.1109/IEMBS.2011.6091473.
The automated detection of diabetic retinopathy and other eye diseases in images of the retina has great promise as a low-cost method for broad-based screening. Many systems in the literature which perform automated detection include a quality estimation step and physiological feature detection, including the vascular tree and the optic nerve / macula location. In this work, we study the robustness of an automated disease detection method with respect to the accuracy of the optic nerve location and the quality of the images obtained as judged by a quality estimation algorithm. The detection algorithm features microaneurysm and exudate detection followed by feature extraction on the detected population to describe the overall retina image. Labeled images of retinas ground-truthed to disease states are used to train a supervised learning algorithm to identify the disease state of the retina image and exam set. Under the restrictions of high confidence optic nerve detections and good quality imagery, the system achieves a sensitivity and specificity of 94.8% and 78.7% with area-under-curve of 95.3%. Analysis of the effect of constraining quality and the distinction between mild non-proliferative diabetic retinopathy, normal retina images, and more severe disease states is included.
在视网膜图像中自动检测糖尿病视网膜病变和其他眼部疾病,作为一种低成本的广泛筛查方法具有很大的前景。文献中的许多自动检测系统包括质量评估步骤和生理特征检测,其中生理特征检测包括血管树以及视神经/黄斑位置。在这项工作中,我们研究了一种自动疾病检测方法相对于视神经位置准确性和质量评估算法所判定的图像质量的稳健性。该检测算法的特点是先进行微动脉瘤和渗出物检测,然后对检测到的群体进行特征提取,以描述整个视网膜图像。经过疾病状态标注的视网膜图像用于训练监督学习算法,以识别视网膜图像和检查集的疾病状态。在高置信度视神经检测和高质量图像的限制下,该系统的灵敏度和特异性分别达到94.8%和78.7%,曲线下面积为95.3%。文中还分析了质量约束的影响以及轻度非增殖性糖尿病视网膜病变、正常视网膜图像和更严重疾病状态之间的区别。