Potential Screening, Grading and Follow-Up of Diabetic Retinopathy in Primary Care Using Artificial Intelligence – How Hard Would It Be to Implement? An Ophthalmologist’s Perspective

Alexandra Cristina Rusu, R. Chistol, Simona-Irina Damian, Klara Brînzaniuc, Karin Ursula Horvath
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Abstract

Diabetic retinopathy (DR) is a microvascular disorder caused by the long-term effects of diabetes mellitus and among the primary causes of blindness worldwide. Early detection of DR is the key to its effective treatment and subsequent reduction of associated economic burden, but manual screening is time-consuming and of limited availability. A highly sensitive and specific automatic diagnostic tool would significantly improve screening programs and allow referring for further evaluation and treatment in an ophthalmology clinic only patients with significant lesions or with changes between two successive evaluations. Several deep learning-based automated diagnosis tools have been proposed to aid screening but their implementation with minimal costs is not accessible to physicians with no coding knowledge. We aimed to develop a fundus images classification model with no coding knowledge by using generative artificial intelligence (AI) implemented in Windows 11 operating system under subscription (Copilot Pro), a free image analysis tool (Fiji ImageJ2), and Vertex AI, a machine learning (ML) platform launched by Google in 2021. For this purpose, we selected a total of 2961 labelled cases from the APTOS 2019 database of DR fundus images. Images were batch segmented using a Java ImageJ script generated by Copilot Pro and based on the Contrast Limited Adaptive Histogram Equalization (CLAHE) algorithm. Segmented images were used to train an automated ML classification model to detect DR severity (5 classes – no DR, mild non-proliferative DR, moderate DR, severe DR, proliferative DR). The model achieved an area under the precision-recall curve of 0.889, with a precision rate of 83.8% and a recall rate of 77%. In conclusion, generative AI implemented into Windows operating system together with a free imaging processing tool and Vertex AI allow ophthalmologists with no coding knowledge to benefit from publicly available image databases (thousands of cases) to develop accurate automated diagnostic tools. Such tools have the potential to facilitate screening especially in areas with few specialists.
利用人工智能对基层医疗机构中的糖尿病视网膜病变进行潜在筛查、分级和随访--实施起来有多难?眼科医生的视角
糖尿病视网膜病变(DR)是一种由糖尿病长期影响引起的微血管疾病,也是全球失明的主要原因之一。早期发现糖尿病视网膜病变是有效治疗和减轻相关经济负担的关键,但人工筛查耗时且可用性有限。高灵敏度和特异性的自动诊断工具将极大地改进筛查计划,并使眼科诊所仅对有明显病变或在两次连续评估之间有变化的患者进行进一步评估和治疗。目前已提出了几种基于深度学习的自动诊断工具来帮助筛查,但没有编码知识的医生无法以最低成本实施这些工具。我们的目标是开发一种无需编码知识的眼底图像分类模型,方法是使用 Windows 11 操作系统中的生成式人工智能(AI)、免费图像分析工具(Fiji ImageJ2)和谷歌于 2021 年推出的机器学习(ML)平台 Vertex AI。为此,我们从 APTOS 2019 DR 眼底图像数据库中选取了 2961 个标记病例。我们使用 Copilot Pro 生成的 Java ImageJ 脚本,基于对比度受限自适应直方图均衡化(CLAHE)算法对图像进行了批量分割。分割后的图像被用于训练自动 ML 分类模型,以检测 DR 的严重程度(5 个等级:无 DR、轻度非增殖性 DR、中度 DR、重度 DR、增殖性 DR)。该模型的精确度-召回曲线下面积为 0.889,精确率为 83.8%,召回率为 77%。总之,在 Windows 操作系统中实施的生成式人工智能以及免费的成像处理工具和 Vertex AI,可以让没有编码知识的眼科医生从公开的图像数据库(成千上万的病例)中获益,从而开发出准确的自动诊断工具。这些工具具有促进筛查的潜力,尤其是在专家较少的地区。
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