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当关注类别随系统拥堵变化时急诊科中的机器学习应用

Machine learning in the Emergency Department when the class of interest adapts to system congestion

Journal of the Operational Research Society · 2025
被引 0
ABS 3

中文导读

研究提出一种数据驱动方法,利用电子健康记录和临床预测因子,根据资源可用性和患者就诊频率动态调整模型,辅助急诊科医生决定是否对患者进行糖尿病筛查,以提高资源利用效率。

Abstract

Diabetic screening of Emergency Department (ED)/Urgent Care (UC) patients can proactively improve health outcomes, but it is uneconomic to screen all such patients. Physicians divide patients into three groups: those who should be screened, those who do not require screening, and those who might be screened if resources to do so are available. We present a data-driven analytical approach, using near-time electronic health record data and clinical predictors, that could assist physicians with the yes/no diabetes screening decision. The approach is capable of selecting the most appropriate statistical model as resource availability and the patient’s historical frequency of utilization change over time. Our findings show that when testing resources are more constrained, the approach’s predictive accuracy is greater for frequent ED/UC users and decreases with patient visit frequency. Conversely, when testing resources are more available, the approach’s predictive accuracy decreases as patient visit frequency increases. Overall, the models are much better at identifying patients who do not need screening thus helping to use resources efficiently. For clinical implementation, the proposed data-driven predictive approach would be one component embedded in the ED/UC workflow, capable of personalizing the care path for individuals at-risk for diabetes or who have been diagnosed with diabetes.

急诊医学糖尿病筛查机器学习医疗资源管理运营管理