Singapore Eye Research Institute, Singapore National Eye Centre, Singapore.
Singapore Eye Research Institute, Singapore National Eye Centre, Singapore; School of Computing, National University of Singapore, Singapore.
Lancet Digit Health. 2020 May;2(5):e240-e249. doi: 10.1016/S2589-7500(20)30060-1. Epub 2020 Apr 23.
Deep learning is a novel machine learning technique that has been shown to be as effective as human graders in detecting diabetic retinopathy from fundus photographs. We used a cost-minimisation analysis to evaluate the potential savings of two deep learning approaches as compared with the current human assessment: a semi-automated deep learning model as a triage filter before secondary human assessment; and a fully automated deep learning model without human assessment.
In this economic analysis modelling study, using 39 006 consecutive patients with diabetes in a national diabetic retinopathy screening programme in Singapore in 2015, we used a decision tree model and TreeAge Pro to compare the actual cost of screening this cohort with human graders against the simulated cost for semi-automated and fully automated screening models. Model parameters included diabetic retinopathy prevalence rates, diabetic retinopathy screening costs under each screening model, cost of medical consultation, and diagnostic performance (ie, sensitivity and specificity). The primary outcome was total cost for each screening model. Deterministic sensitivity analyses were done to gauge the sensitivity of the results to key model assumptions.
From the health system perspective, the semi-automated screening model was the least expensive of the three models, at US$62 per patient per year. The fully automated model was $66 per patient per year, and the human assessment model was $77 per patient per year. The savings to the Singapore health system associated with switching to the semi-automated model are estimated to be $489 000, which is roughly 20% of the current annual screening cost. By 2050, Singapore is projected to have 1 million people with diabetes; at this time, the estimated annual savings would be $15 million.
This study provides a strong economic rationale for using deep learning systems as an assistive tool to screen for diabetic retinopathy.
Ministry of Health, Singapore.
深度学习是一种新颖的机器学习技术,已被证明在从眼底照片中检测糖尿病视网膜病变方面与人类分级员一样有效。我们使用成本最小化分析来评估两种深度学习方法与当前人工评估相比的潜在节省:半自动深度学习模型作为二级人工评估前的分诊过滤器;以及无需人工评估的全自动深度学习模型。
在这项经济分析模型研究中,我们使用 2015 年在新加坡全国糖尿病视网膜病变筛查计划中连续的 39006 例糖尿病患者,使用决策树模型和 TreeAge Pro 来比较该队列的实际筛查成本与人类分级员相比,半自动和全自动筛查模型的模拟成本。模型参数包括糖尿病视网膜病变患病率、每种筛查模型下的糖尿病视网膜病变筛查成本、医疗咨询成本以及诊断性能(即敏感性和特异性)。主要结果是每种筛查模型的总成本。进行确定性敏感性分析以衡量结果对关键模型假设的敏感性。
从卫生系统的角度来看,三种模型中半自动筛查模型最便宜,每位患者每年 62 美元。全自动模型每位患者每年 66 美元,人工评估模型每位患者每年 77 美元。切换到半自动模型,新加坡卫生系统的节省估计为 489 万美元,约占当前年度筛查成本的 20%。到 2050 年,新加坡预计将有 100 万糖尿病患者;届时,预计每年的节省将达到 1500 万美元。
本研究为使用深度学习系统作为辅助工具筛查糖尿病视网膜病变提供了强有力的经济学依据。
新加坡卫生部。