Pareja-Ríos Alicia, Ceruso Sabato, Romero-Aroca Pedro, Bonaque-González Sergio
Department of Ophthalmology, University Hospital of the Canary Islands, 38320 San Cristóbal de La Laguna, Spain.
School of Engineering and Technology, University of La Laguna, 38200 San Cristóbal de La Laguna, Spain.
J Clin Med. 2022 Aug 23;11(17):4945. doi: 10.3390/jcm11174945.
We report the development of a deep learning algorithm (AI) to detect signs of diabetic retinopathy (DR) from fundus images. For this, we use a ResNet-50 neural network with a double resolution, the addition of Squeeze-Excitation blocks, pre-trained in ImageNet, and trained for 50 epochs using the Adam optimizer. The AI-based algorithm not only classifies an image as pathological or not but also detects and highlights those signs that allow DR to be identified. For development, we have used a database of about half a million images classified in a real clinical environment by family doctors (FDs), ophthalmologists, or both. The AI was able to detect more than 95% of cases worse than mild DR and had 70% fewer misclassifications of healthy cases than FDs. In addition, the AI was able to detect DR signs in 1258 patients before they were detected by FDs, representing 7.9% of the total number of DR patients detected by the FDs. These results suggest that AI is at least comparable to the evaluation of FDs. We suggest that it may be useful to use signaling tools such as an aid to diagnosis rather than an AI as a stand-alone tool.
我们报告了一种深度学习算法(人工智能)的开发情况,该算法可从眼底图像中检测糖尿病视网膜病变(DR)的迹象。为此,我们使用了具有双分辨率的ResNet-50神经网络,添加了挤压激励模块,在ImageNet上进行预训练,并使用Adam优化器训练50个轮次。基于人工智能的算法不仅能将图像分类为病理性或非病理性,还能检测并突出显示那些可用于识别DR的迹象。在开发过程中,我们使用了一个由家庭医生(FDs)、眼科医生或两者在真实临床环境中分类的约50万张图像的数据库。该人工智能能够检测出超过95%的比轻度DR更严重的病例,并且对健康病例的错误分类比FDs少70%。此外,该人工智能能够在FDs检测到之前,在1258名患者中检测出DR迹象,占FDs检测到的DR患者总数的7.9%。这些结果表明,人工智能至少与FDs的评估相当。我们建议,使用信号工具作为诊断辅助手段可能比将人工智能作为独立工具更有用。