Department of Public Health and Primary Care, Leiden University Medical Centre, Turfmarkt 99, 2511 DP, the Hague, the Netherlands. Email:
Am J Manag Care. 2022 Apr 1;28(4):e140-e145. doi: 10.37765/ajmc.2022.88867.
To produce an efficient and practically implementable method, based on primary care data exclusively, to identify patients with complex care needs who have problems in several health domains and are experiencing a mismatch of care. The Johns Hopkins ACG System was explored as a tool for identification, using its Aggregated Diagnosis Group (ADG) categories.
Retrospective cross-sectional study using general practitioners' electronic health records combined with hospital data.
A prediction model for patients with complex care needs was developed using a primary care population of 105,345 individuals. Dependent variables in the model included age, sex, and the 32 ADGs. The prediction model was externally validated on 30,793 primary care patients. Discrimination and calibrations were assessed by computing C statistics and by visual inspection of the calibration plot, respectively.
Our model was able to discriminate very well between complex and noncomplex patients (C statistic = 0.9; 95% CI, 0.88-0.92), whereas the calibration plot suggests that the model provides overestimates of complex patients.
With this study, the ACG System has proven to be a useful tool in the identification of patients with complex care needs in primary care, opening up possibilities for tailored interventions of care management for this complex group of patients. Utilizing ADGs, the prediction model that we developed had a very good discriminatory ability to identify those complex patients. However, the calibrating ability of the model still needs improvement.
基于初级保健数据,开发一种高效且实际可行的方法,以识别出有多种健康问题且护理不匹配的复杂护理需求患者。本研究探讨了使用约翰霍普金斯 ACG 系统的聚合诊断组(ADG)类别进行识别的方法。
回顾性横断面研究,使用全科医生的电子健康记录和医院数据。
使用 105345 名初级保健人群开发了一种用于识别复杂护理需求患者的预测模型。模型中的因变量包括年龄、性别和 32 个 ADG。该预测模型在 30793 名初级保健患者中进行了外部验证。通过计算 C 统计量评估判别能力,通过校准图的直观检查评估校准能力。
我们的模型能够很好地区分复杂患者和非复杂患者(C 统计量=0.9;95%CI,0.88-0.92),而校准图表明该模型对复杂患者存在高估。
通过这项研究,ACG 系统已被证明是在初级保健中识别有复杂护理需求患者的有用工具,为这一复杂患者群体提供了定制护理管理干预的可能性。利用 ADG,我们开发的预测模型对识别复杂患者具有很好的判别能力。然而,该模型的校准能力仍需改进。