Vision transformer-based stratification of pre/diabetic and pre/hypertensive patients from retinal photographs for 3PM applications.

IF 5.9 Q1 MEDICINE, RESEARCH & EXPERIMENTAL
The EPMA journal Pub Date : 2025-05-20 eCollection Date: 2025-06-01 DOI:10.1007/s13167-025-00412-9
Krithi Pushpanathan, Yang Bai, Xiaofeng Lei, Jocelyn Hui Lin Goh, Can Can Xue, Samantha Min Er Yew, Miaoli Chee, Ten Cheer Quek, Qingsheng Peng, Zhi Da Soh, Marco Chak Yan Yu, Jun Zhou, Yaxing Wang, Jost B Jonas, Xiaofei Wang, Xueling Sim, E Shyong Tai, Charumathi Sabanayagam, Rick Siow Mong Goh, Yong Liu, Ching-Yu Cheng, Yih-Chung Tham
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引用次数: 0

Abstract

Objective: Diabetes and hypertension pose significant health risks, especially when poorly managed. Retinal evaluation though fundus photography can provide non-invasive assessment of these diseases, yet prior studies focused on disease presence, overlooking control statuses. This study evaluated vision transformer (ViT)-based models for assessing the presence and control statuses of diabetes and hypertension from retinal images.

Methods: ViT-based models with ResNet-50 for patch projection were trained on images from the UK Biobank (n = 113,713) and Singapore Epidemiology of Eye Diseases study (n = 17,783), and externally validated on the Singapore Prospective Study Programme (n = 7,793) and the Beijing Eye Study (n = 6064). Model performance was evaluated using the area under the receiver operating characteristic curve (AUROC) for multiple tasks: detecting disease, identifying poorly controlled and well-controlled cases, distinguishing between poorly and well-controlled cases, and detecting pre-diabetes or pre-hypertension.

Results: The models demonstrated strong performance in detecting disease presence, with AUROC values of 0.820 for diabetes and 0.781 for hypertension in internal testing. External validation showed AUROCs ranging from 0.635 to 0.755 for diabetes, and 0.727 to 0.832 for hypertension. For identifying poorly controlled cases, the performance remained high with AUROCs of 0.871 (internal) and 0.655-0.851 (external) for diabetes, and 0.853 (internal) and 0.792-0.915 (external) for hypertension. Detection of well-controlled cases also yielded promising results for diabetes (0.802 [internal]; 0.675-0.838 [external]), and hypertension (0.740 [internal] and 0.675-0.807 [external]). In distinguishing between poorly and well-controlled disease, AUROCs were more modest with 0.630 (internal) and 0.512-0.547 (external) for diabetes, and 0.651 (internal) and 0.639-0.683 (external) for hypertension. For pre-disease detection, the models achieved AUROCs of 0.746 (internal) and 0.523-0.590 (external) for pre-diabetes, and 0.669 (internal) and 0.645-0.679 (external) for pre-hypertension.

Conclusion: ViT-based models show promise in classifying the presence and control statuses of diabetes and hypertension from retinal images. These findings support the potential of retinal imaging as a tool in primary care for opportunistic detection of diabetes and hypertension, risk stratification, and individualised treatment planning. Further validation in diverse clinical settings is warranted to confirm practical utility.

Supplementary information: The online version contains supplementary material available at 10.1007/s13167-025-00412-9.

基于视觉变压器的分层前期/糖尿病和前期/高血压患者的视网膜照片为3PM应用。
目的:糖尿病和高血压会造成严重的健康风险,尤其是在管理不善的情况下。通过眼底摄影进行视网膜评估可以对这些疾病进行非侵入性评估,但之前的研究主要关注疾病的存在,而忽视了控制状态。本研究评估了基于视觉变压器(ViT)的模型,用于从视网膜图像评估糖尿病和高血压的存在和控制状态。方法:采用ResNet-50进行贴片投影的基于vit的模型,对来自英国生物银行(n = 113,713)和新加坡眼病流行病学研究(n = 17,783)的图像进行训练,并在新加坡前瞻性研究计划(n = 7,793)和北京眼科研究(n = 6064)中进行外部验证。使用受试者工作特征曲线下面积(AUROC)对多个任务进行模型性能评估:检测疾病,识别控制不良和控制良好的病例,区分控制不良和控制良好的病例,以及检测糖尿病前期或高血压前期。结果:模型在检测疾病存在方面表现出较强的性能,在内测中糖尿病的AUROC值为0.820,高血压的AUROC值为0.781。外部验证显示糖尿病的auroc范围为0.635 ~ 0.755,高血压的auroc范围为0.727 ~ 0.832。对于识别控制不良的病例,糖尿病的auroc为0.871(内部)和0.655-0.851(外部),高血压的auroc为0.853(内部)和0.792-0.915(外部)。检测出控制良好的病例对糖尿病也有很好的效果(0.802[内部];高血压(0.740[内]和0.675-0.807[外])。在区分控制不良和控制良好的疾病时,糖尿病的auroc更为温和,为0.630(内部)和0.512-0.547(外部),高血压为0.651(内部)和0.639-0.683(外部)。对于疾病前检测,模型对糖尿病前期的AUROCs为0.746(内部)和0.523-0.590(外部),对高血压前期的AUROCs为0.669(内部)和0.645-0.679(外部)。结论:基于vit的模型在从视网膜图像中分类糖尿病和高血压的存在和控制状态方面具有前景。这些发现支持了视网膜成像作为糖尿病和高血压的机会性检测、风险分层和个性化治疗计划的初级保健工具的潜力。在不同的临床环境中进一步验证是必要的,以确认实际效用。补充信息:在线版本包含补充资料,可在10.1007/s13167-025-00412-9获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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