Background: To determine the ability of a commercially available deep learning system, RetCAD v.1.3.1 (Thirona, Nijmegen, The Netherlands) for the automatic detection of referable diabetic retinopathy (DR) on a dataset of colour fundus images acquired during routine clinical practice in a tertiary hospital screening program, analyzing the reduction of workload that can be released incorporating this artificial intelligence-based technology. Methods: Evaluation of the software was performed on a dataset of 7195 nonmydriatic fundus images from 6325 eyes of 3189 diabetic patients attending our screening program between February to December of 2019. The software generated a DR severity score for each colour fundus image which was combined into an eye-level score. This score was then compared with a reference standard as set by a human expert using receiver operating characteristic (ROC) curve analysis. Results: The artificial intelligence (AI) software achieved an area under the ROC curve (AUC) value of 0.988 [0.981:0.993] for the detection of referable DR. At the proposed operating point, the sensitivity of the RetCAD software for DR is 90.53% and specificity is 97.13%. A workload reduction of 96% could be achieved at the cost of only 6 false negatives. Conclusions: The AI software correctly identified the vast majority of referable DR cases, with a workload reduction of 96% of the cases that would need to be checked, while missing almost no true cases, so it may therefore be used as an instrument for triage.
翻译:为确定商业上可获得的深层学习系统的能力,RetCAD v.1.3.1(Thirona, Nijmegen,荷兰)用于自动检测在三级医院常规临床检查方案常规临床操作过程中获得的彩金图象数据集中的可参考糖尿病视网膜病病(DR),分析可结合这种人工智能技术释放的工作量的减少情况。方法:对软件的评价是在一套数据集中进行的,该数据集来自6325目中的3189名糖尿病患者在2019年2月至12月参加我们的筛查方案。该软件为每种彩金图生成了一种可参考的糖尿病视分数,并合为视分数。这一评分随后与一位人类专家使用接收器操作特征(ROC)曲线分析而设定的参考标准进行了比较。结果:人工智能(AI)软件在ROC曲线值为0.988[0.981:0.993]下的一个区域,用于检测可参考的DR。在拟议的操作点上,RECADA软件的敏感度几乎为DR%,因此,在96-DRM软件的精确度中,在96%的精确度中可以降低,因此,在96-DRA-SA软件中,在96%的精确度上,在96%的精确度上,因此,在193的精确度上可以降低。