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识别可能从护理管理计划中获益的患者。

Identification of patients likely to benefit from care management programs.

机构信息

Department of General Practice and Health Services Research, University Hospital Heidelberg, Heidelberg, Germany.

出版信息

Am J Manag Care. 2011 May;17(5):345-52.

Abstract

OBJECTIVES

To compare predictive modeling (PM), selection by primary care physician (PCP), and a combination of both as approaches to prospective patient identification for care management programs.

STUDY DESIGN

Observational study.

METHODS

A total of 6026 beneficiaries of a statutory health insurance program in Germany served as a sample for patient identification by PM and selection by PCP. The resulting mutually exclusive subpopulations were compared for care needs (eg, morbidity burden), healthcare utilization (previous all-cause hospitalizations and predicted costs), and prior participation in intensified care programs (as a proxy for amenability). Data sources were insurance claims data and a patient survey.

RESULTS

Patients were selected for eligibility in a care management program by PM (n = 301), selection by PCP (n = 203), or a combination of both (n = 32). Compared with 5490 nonselected patients, all eligible patients had significantly higher morbidity burden and more previous hospitalizations. Compared with selection by PCP, PM identified patients at significantly higher risk for future healthcare utilization, with predicted annual healthcare costs of 8760 euro (95% confidence interval [CI], 8314-9205 euro) vs 4541 euro (95% CI, 4094-4989 euro) (P <.01). Compared with patients selected by PM, patients selected by PCP had significantly higher rates of prior participation in intensified care programs (80.8% vs 56.4%, P <.01). Patients selected independently by both approaches seemed to be at high risk for future healthcare utilization, with predicted annual healthcare costs of 8279 euro (95% CI, 7465-9092 euro), and 84.6% had prior participation in intensified care programs.

CONCLUSIONS

Identification of high-risk patients most likely to benefit from and participate in care management programs may be facilitated by a combination of PM and selection by PCP.

摘要

目的

比较预测模型(PM)、初级保健医生(PCP)选择以及两者结合作为前瞻性患者识别方法,以用于护理管理计划。

研究设计

观察性研究。

方法

德国一项法定健康保险计划的 6026 名受益人为 PM 和 PCP 识别患者的样本。由此产生的互斥亚人群在护理需求(例如,发病负担)、医疗保健利用(既往全因住院和预测费用)和之前参与强化护理计划(作为适宜性的替代指标)方面进行了比较。数据来源为保险索赔数据和患者调查。

结果

PM(n = 301)、PCP 选择(n = 203)或两者结合(n = 32)选择患者参加护理管理计划的资格。与 5490 名未选择的患者相比,所有符合条件的患者的发病负担和既往住院治疗明显更高。与 PCP 选择相比,PM 识别出未来医疗保健利用风险显著更高的患者,预计年医疗保健费用为 8760 欧元(95%置信区间 [CI],8314-9205 欧元),而 4541 欧元(95% CI,4094-4989 欧元)(P <.01)。与 PM 选择的患者相比,PCP 选择的患者之前参与强化护理计划的比例明显更高(80.8%对 56.4%,P <.01)。通过两种方法独立选择的患者似乎未来医疗保健利用风险较高,预计年医疗保健费用为 8279 欧元(95% CI,7465-9092 欧元),84.6%的患者之前参与强化护理计划。

结论

PM 和 PCP 选择相结合,可能有助于识别最有可能受益和参与护理管理计划的高风险患者。

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