论文标题
深度学习在108,308个视网膜图像上实现了完美的异常检测
Deep learning achieves perfect anomaly detection on 108,308 retinal images including unlearned diseases
论文作者
论文摘要
光学相干断层扫描(OCT)扫描可用于检测各种视网膜疾病。但是,没有足够的眼科医生可以诊断世界上大部分地区的视网膜OCT图像。为了提供廉价和广泛的OCT筛查,自动诊断系统是必不可少的。尽管已经提出了许多机器学习技术来协助眼科医生诊断视网膜OCT图像,但是没有任何技术可以独立诊断而不依靠眼科医生,即,没有任何技术不会忽略任何异常,包括未经疾病。只要有技术忽视疾病的风险,眼科医生也必须仔细检查该技术将其分类为正常的图像。在这里,我们表明我们的基于深度学习的二进制分类器(正常或异常)在108,308二维视网膜OCT图像上实现了完美的分类,即真实正率= 1.000000,而真为负率= 1.000000;因此,ROC曲线下的面积= 1.0000000。尽管测试集包括三种类型的疾病,但其中两种未用于训练。但是,所有测试图像均正确分类。此外,我们证明了我们的计划能够应对患者种族的差异。没有传统的方法可以实现上述表演。我们的工作有足够的可能性将视网膜OCT图像的自动诊断技术从“眼科医生的助手”提高到没有眼科医生的“独立诊断系统”。
Optical coherence tomography (OCT) scanning is useful in detecting various retinal diseases. However, there are not enough ophthalmologists who can diagnose retinal OCT images in much of the world. To provide OCT screening inexpensively and extensively, an automated diagnosis system is indispensable. Although many machine learning techniques have been presented for assisting ophthalmologists in diagnosing retinal OCT images, there is no technique that can diagnose independently without relying on an ophthalmologist, i.e., there is no technique that does not overlook any anomaly, including unlearned diseases. As long as there is a risk of overlooking a disease with a technique, ophthalmologists must double-check even those images that the technique classifies as normal. Here, we show that our deep-learning-based binary classifier (normal or abnormal) achieved a perfect classification on 108,308 two-dimensional retinal OCT images, i.e., true positive rate = 1.000000 and true negative rate = 1.000000; hence, the area under the ROC curve = 1.0000000. Although the test set included three types of diseases, two of these were not used for training. However, all test images were correctly classified. Furthermore, we demonstrated that our scheme was able to cope with differences in patient race. No conventional approach has achieved the above performances. Our work has a sufficient possibility of raising automated diagnosis techniques for retinal OCT images from "assistant for ophthalmologists" to "independent diagnosis system without ophthalmologists".