Validating and Improving Adjusted Clinical Group's Future Hospitalization and High-Cost Prediction Models for Dutch Primary Care.

IF 1.8 4区 医学 Q3 HEALTH CARE SCIENCES & SERVICES Population Health Management Pub Date : 2023-12-01 Epub Date: 2023-11-02 DOI:10.1089/pop.2023.0162
Shelley-Ann M Girwar, Marta Fiocco, Stephen P Sutch, Mattijs E Numans, Marc A Bruijnzeels
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Abstract

The rise in health care costs, caused by older and more complex patient populations, requires Population Health Management approaches including risk stratification. With risk stratification, patients are assigned individual risk scores based on medical records. These patient stratifications focus on future high costs and expensive care utilization such as hospitalization, for which different models exist. With this study, the research team validated the accuracy of risk prediction scores for future hospitalization and high health care costs, calculated by the Adjusted Clinical Group (ACG)'s risk stratification models, using Dutch primary health care data registries. In addition, they aimed to adjust the US-based predictive models for Dutch primary care. The statistical validity of the existing models was assessed. In addition, the underlying prediction models were trained on 95,262 patients' data from de Zoetermeer region and externally validated on data of 48,780 patients from Zeist, Nijkerk, and Urk. Information on age, sex, number of general practitioner visits, International Classification of Primary Care coded information on the diagnosis and Anatomical Therapeutic Chemical Classification coded information on the prescribed medications, were incorporated in the model. C-statistics were used to validate the discriminatory ability of the models. Calibrating ability was assessed by visual inspection of calibration plots. Adjustment of the hospitalization model based on Dutch data improved C-statistics from 0.69 to 0.75, whereas adjustment of the high-cost model improved C-statistics from 0.78 to 0.85, indicating good discrimination of the models. The models also showed good calibration. In conclusion, the local adjustments of the ACG prediction models show great potential for use in Dutch primary care.

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验证和改进荷兰初级保健调整后临床组未来住院和高成本预测模型。
老年人和更复杂的患者群体导致的医疗保健成本上升,需要采取包括风险分层在内的人群健康管理方法。通过风险分层,根据医疗记录为患者分配个人风险评分。这些患者分层侧重于未来的高成本和昂贵的护理利用,如住院治疗,存在不同的模式。通过这项研究,研究团队使用荷兰初级卫生保健数据登记验证了调整后临床小组(ACG)的风险分层模型计算的未来住院和高医疗保健成本风险预测分数的准确性。此外,他们旨在调整荷兰初级保健的美国预测模型。对现有模型的统计有效性进行了评估。此外,基础预测模型基于来自de Zoetermeer地区的95262名患者的数据进行了训练,并基于来自Zeist、Nijkerk和Urk的48780名患者的信息进行了外部验证。关于年龄、性别、全科医生就诊次数的信息、关于诊断的国际初级保健分类编码信息和关于处方药物的解剖治疗化学分类编码信息被纳入模型中。使用C统计量来验证模型的判别能力。通过目视检查校准图来评估校准能力。基于荷兰数据的住院模型调整将C统计量从0.69提高到0.75,而高成本模型的调整将C统计学从0.78提高到0.85,表明模型具有良好的判别力。模型也显示出良好的校准效果。总之,ACG预测模型的局部调整显示出在荷兰初级保健中使用的巨大潜力。
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来源期刊
Population Health Management
Population Health Management 医学-卫生保健
CiteScore
4.10
自引率
4.00%
发文量
81
审稿时长
6-12 weeks
期刊介绍: Population Health Management provides comprehensive, authoritative strategies for improving the systems and policies that affect health care quality, access, and outcomes, ultimately improving the health of an entire population. The Journal delivers essential research on a broad range of topics including the impact of social, cultural, economic, and environmental factors on health care systems and practices. Population Health Management coverage includes: Clinical case reports and studies on managing major public health conditions Compliance programs Health economics Outcomes assessment Provider incentives Health care reform Resource management Return on investment (ROI) Health care quality Care coordination.
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