Artificial intelligence algorithms for the diagnosis of signs of diabetic retinopathy, diabetic macular edema, age-related macular degeneration, vitreomacular interface abnormalities

E. A. Katalevskaya, A.Y. Sizov, M.I. Tyurikov, Y. V. Vladimirova
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Abstract

Purpose. Development of artificial intelligence (AI) algorithms for diagnosing of diabetic retinopathy (DR), diabetic macular edema (DME), age-related macular degeneration (AMD), vitreomacular interface abnormalities (VMA) through the analysis of OCT scans and fundus images. Material and methods. Fundus images of patients with DR and DME, OCT scans of patients with DME, AMD and VMA were used as training and validation databases. The volume of training databases was 3600 fundus images and 10 000 OCT scans, the volume of validation databases was 400 fundus images and 1000 OCT scans. For fundus images analysis algorithms accuracy, sensitivity, specificity, AUROC were calculated for the following structures: microaneurysms, intraretinal hemorrhages, hard exudates, soft exudates, retinal and optic disc neovascularization, preretinal hemorrhages, epiretinal fibrosis, laser coagulates. For OCT scan analysis algorithms, these metrics were calculated for the features: intraretinal cysts, subretinal fluid, pigment epithelium detachment, subretinal hyperreflective material, drusen, epiretinal membrane, full thickness macular hole, lamellar macular hole, vitreomacular traction. Results. For fundus images analysis algorithms, accuracy exceeded 93% for all features except soft exudates (88.3%) and neovascularization (88.0%), sensitivity exceeded 90% for all features except neovascularization (80.2%) and epiretinal fibrosis (72.5%), specificity exceeded 91% for all features except microaneurysms (80.5%), hard exudates (83.5%) and soft exudates (88.7%), AUROC exceeded 0.90 for all signs except epiretinal fibrosis (0.88), neovascularization (0.87), preretinal hemorrhages (0.89). For OCT analysis algorithms, accuracy exceeded 93% for all features, sensitivity exceeded 90% for all features except lamellar macular hole (87.22%), specificity exceeded 93% for all features, AUROC exceeded 0.93 for all features. Conclusion. An algorithm for high precision segmentation of pathological signs has been developed. Based on these AI algorithms, the Retina.AI ophthalmological platform was developed, which allows automated analysis of OCT scans and fundus images and diagnosing of DR, DME, AMD and VMA. The platform is available for testing at https://www.screenretina.com/ Keywords: artificial intelligence, ophthalmic screening, diabetic retinopathy, diabetic macular edema, age-related macular degeneration, vitreomacular interface abnormalities
用于诊断糖尿病视网膜病变、糖尿病性黄斑水肿、年龄相关性黄斑变性、玻璃体黄斑界面异常的人工智能算法
目的。开发人工智能(AI)算法,通过分析OCT扫描和眼底图像,诊断糖尿病视网膜病变(DR)、糖尿病黄斑水肿(DME)、年龄相关性黄斑变性(AMD)、玻璃体黄斑界面异常(VMA)。材料和方法。DR和DME患者眼底图像、DME、AMD和VMA患者OCT扫描作为训练和验证数据库。训练数据库的容量为3600张眼底图像和10000张OCT扫描,验证数据库的容量为400张眼底图像和1000张OCT扫描。对于眼底图像分析算法的准确性、敏感性、特异性,计算以下结构的AUROC:微动脉瘤、视网膜内出血、硬渗出物、软渗出物、视网膜和视盘新生血管、视网膜前出血、视网膜前纤维化、激光凝固物。对于OCT扫描分析算法,我们计算了以下特征的指标:视网膜内囊肿、视网膜下积液、色素上皮脱离、视网膜下高反射物质、水肿、视网膜前膜、全层黄斑孔、板层黄斑孔、玻璃体黄斑牵拉。结果。对于眼底图像分析算法,除软渗出物(88.3%)和新生血管(88.0%)外的所有特征的准确率均超过93%,除新生血管(80.2%)和视网膜前纤维化(72.5%)外的所有特征的灵敏度均超过90%,除微动脉瘤(80.5%)、硬渗出物(83.5%)和软渗出物(88.7%)外的所有特征的特异性均超过91%,除视网膜前纤维化(0.88)、新生血管(0.87)、视网膜前出血(0.89)外的所有征象的AUROC均超过0.90。OCT分析算法对所有特征的准确率均超过93%,对除板层黄斑孔(87.22%)外的所有特征的灵敏度均超过90%,对所有特征的特异性均超过93%,对所有特征的AUROC均超过0.93。结论。提出了一种高精度的病理征象分割算法。基于这些人工智能算法,视网膜。开发了人工智能眼科平台,可自动分析OCT扫描和眼底图像,诊断DR、DME、AMD和VMA。关键词:人工智能,眼科筛查,糖尿病视网膜病变,糖尿病性黄斑水肿,老年性黄斑变性,玻璃体黄斑界面异常
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