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新西兰筛查项目中使用 THEIA™ 检测糖尿病视网膜病变(DR)和糖尿病性黄斑水肿(DMO)的多中心前瞻性评估。

A multi-centre prospective evaluation of THEIA™ to detect diabetic retinopathy (DR) and diabetic macular oedema (DMO) in the New Zealand screening program.

机构信息

Toku Eyes®, Auckland, New Zealand.

School of Optometry and Vision Science, The University of Auckland, Auckland, New Zealand.

出版信息

Eye (Lond). 2023 Jun;37(8):1683-1689. doi: 10.1038/s41433-022-02217-w. Epub 2022 Sep 3.

Abstract

PURPOSE

To validate the potential application of THEIA™ as clinical decision making assistant in a national screening program.

METHODS

A total of 900 patients were recruited from either an urban large eye hospital, or a semi-rural optometrist led screening provider, as they were attending their appointment as part of New Zealand Diabetic Eye Screening Programme. The de-identified images were independently graded by three senior specialists, and final results were aggregated using New Zealand grading scheme, which was then converted to referable/non-referable and Healthy/mild/more than mild/sight threatening categories.

RESULTS

THEIA™ managed to grade all images obtained during the study. Comparing the adjudicated images from the specialist grading team, "ground truth", with the grading by the AI platform in detecting "sight threatening" disease, at the patient level THEIA™ achieved 100% imageability, 100% [98.49-100.00%] sensitivity and [97.02-99.16%] specificity, and negative predictive value of 100%. In other words, THEIA™ did not miss any patients with "more than mild" or "sight threatening" disease. The level of agreement between the clinicians and the aggregated results was (k value: 0.9881, 0.9557, and 0.9175), and the level of agreement between THEIA™ and the aggregated labels was (k value: 0.9515).

CONCLUSION

This multi-centre prospective trial showed that THEIA™ did not miss referable disease when screening for diabetic retinopathy and maculopathy. It also had a very high level of granularity in reporting the disease level. As THEIA™ has been tested on a variety of cameras, operating in a range of clinics (rural/urban, ophthalmologist-led\optometrist-led), we believe that it will be a suitable addition to a public diabetic screening program.

摘要

目的

验证 THEIA™ 在全国筛查项目中作为临床决策辅助工具的潜在应用。

方法

共有 900 名患者来自城市大型眼科医院或半农村视光师主导的筛查机构,他们是作为新西兰糖尿病眼病筛查计划的一部分参加预约的。未经识别的图像由三位高级专家独立评分,最终结果使用新西兰分级方案进行汇总,然后转换为可转诊/不可转诊以及健康/轻度/重度/威胁视力的类别。

结果

THEIA™ 成功地对研究期间获得的所有图像进行了分级。将专家分级团队的裁决图像(“真实情况”)与人工智能平台的分级进行比较,在检测“威胁视力”疾病方面,THEIA™ 在患者层面实现了 100%的图像可识别性、100%[98.49-100.00%]敏感性和[97.02-99.16%]特异性,以及 100%的阴性预测值。换句话说,THEIA™没有漏掉任何患有“重度”或“威胁视力”疾病的患者。临床医生之间的一致性水平(k 值:0.9881、0.9557 和 0.9175)和 THEIA™与汇总标签之间的一致性水平(k 值:0.9515)。

结论

这项多中心前瞻性试验表明,THEIA™在筛查糖尿病性视网膜病变和黄斑病变时不会遗漏可转诊疾病。它在报告疾病程度方面也具有非常高的粒度。由于 THEIA™已经在各种相机上进行了测试,并且在各种诊所(农村/城市、眼科医生主导/视光师主导)中运行,我们相信它将是公共糖尿病筛查计划的合适补充。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9b44/10219993/be4563e5d7e1/41433_2022_2217_Fig1_HTML.jpg

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