Clinical validation of artificial intelligence-based cataract screening solution with smartphone images (Logy AI cataract screening module)

Mano Aarthi V. M., Nivedita Tiwari, Vinay Khobragade, Mitali Pareek, Anand Panchbhai, Priyanjit Ghosh, Jayachandhran Saravanan
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Abstract

Background: Purpose of the study was to clinically assess the accuracy of Logy AI cataract screening solution, an artificial intelligence-based module, which works through WhatsApp and also as a separate smart phone application, that can detect cataracts using images taken by a smartphone camera, by comparing with slit lamp based diagnoses made by ophthalmologists. Methods: A prospective clinical study was conducted in an eye clinic of a tertiary care hospital in the southern part of India with 437 patients. Smartphone images taken were sent to the Logy AI cataract screening solution which predicted if the patient had cataract or not. It graded cataracts as immature and mature. Patients were examined by ophthalmologists with slit-lamp and diagnosis was documented. Both were compared. Results: 794 eye images were included in the study. The overall accuracy of the AI screening solution for cataract detection was computed to be 90.08%. Further, the accuracy was 88.02% for immature cataract, 97.16% for mature cataract, and 90.08% normal category. The sensitivity was 90.38%, the specificity was 89.87%, and the F1 score was 87.98%. The positive predictive value was 85.71% and the negative predictive value was 93.29%. Logy AI cataract prediction module’s AUC (0.8946) falls under the good category. Conclusions: Logy AI cataract screening module could work as an effective cataract screening tool at the community level in remote areas where there is no expensive equipment and ophthalmic health care workers considering the accuracy and efficiency to work in low resource settings. It can also be a good home screening tool suitable for the post-COVID era.  
利用智能手机图像对基于人工智能的白内障筛查解决方案(Logy 人工智能白内障筛查模块)进行临床验证
研究背景Logy AI 白内障筛查解决方案是一个基于人工智能的模块,可通过 WhatsApp 和单独的智能手机应用程序使用智能手机摄像头拍摄的图像检测白内障,并与眼科医生基于裂隙灯的诊断结果进行比较:在印度南部一家三级医院的眼科诊所开展了一项前瞻性临床研究,共收治了 437 名患者。智能手机拍摄的图像被发送到 Logy AI 白内障筛查解决方案,该解决方案可预测患者是否患有白内障。它将白内障分为未成熟白内障和成熟白内障。眼科医生用裂隙灯对患者进行检查,并记录诊断结果。结果研究共纳入了 794 张眼球图像。经计算,人工智能筛查方案检测白内障的总体准确率为 90.08%。此外,未成熟白内障的准确率为 88.02%,成熟白内障为 97.16%,正常类别为 90.08%。灵敏度为 90.38%,特异度为 89.87%,F1 得分为 87.98%。阳性预测值为 85.71%,阴性预测值为 93.29%。Logy AI 白内障预测模块的 AUC(0.8946)属于良好类别:Logy 人工智能白内障筛查模块可作为一种有效的白内障筛查工具,在偏远地区的社区层面发挥作用,因为那里没有昂贵的设备,眼科医护人员也没有考虑到在低资源环境下工作的准确性和效率。它还可以成为适合后 COVID 时代的良好家庭筛查工具。
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