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首页> 外文期刊>Medical care >Predicting Healthcare Costs in a Population of Veterans Affairs Beneficiaries Using Diagnosis-Based Risk Adjustment and Self-Reported Health Status.
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Predicting Healthcare Costs in a Population of Veterans Affairs Beneficiaries Using Diagnosis-Based Risk Adjustment and Self-Reported Health Status.

机译:使用基于诊断的风险调整和自我报告的健康状况,预测退伍军人受益人人群的医疗费用。

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BACKGROUND:: Many healthcare organizations use diagnosis-based risk adjustment systems for predicting costs. Health self-report may add information not contained in a diagnosis-based system but is subject to incomplete response. OBJECTIVE:: The objective of this study was to evaluate the added predictive power of health self-report in combination with a diagnosis-based risk adjustment system in concurrent and prospective models of healthcare cost. RESEARCH DESIGN:: This was a cohort study using Department of Veterans Affairs (VA) administrative databases. We tested the predictive ability of the Adjusted Clinical Group (ACG) methodology and the added value of SF-36V (short form functional status for veterans) results. Linear regression models were compared using R, mean absolute prediction error (MAPE), and predictive ratio. SUBJECTS:: Subjects were 35,337 VA beneficiaries at 8 VA medical centers during fiscal year (FY) 1998 who voluntarily completed an SF-36V survey. MEASURES:: Outcomes were total FY 1998 and FY 1999 cost. Demographics and ACG-based Adjusted Diagnostic Groups (ADGs) with and without 8 SF-36V multiitem scales and the Physical Component Score and Mental Component Score were compared. RESULTS:: The survey response rate was 45%. Adding the 8 scales to ADGs and demographics increased the crossvalidated R by 0.007 in the prospective model. The 8 scales reduced the MAPE by Dollars 236 among patients in the upper 10% of FY 1999 cost. CONCLUSIONS:: The limited added predictive power of health self-report to a diagnosis-based risk adjustment system should be weighed against the cost of collecting these data. Adding health self-report data may increase predictive accuracy in high-cost patients.
机译:背景:许多医疗机构使用基于诊断的风险调整系统来预测成本。健康自我报告可能会添加不包含在基于诊断的系统中,但响应不完整的信息。目的::本研究的目的是在医疗费用的并发和前瞻性模型中,结合基于诊断的风险调整系统,评估健康自我报告的附加预测能力。研究设计:这是一项使用退伍军人事务部(VA)行政数据库进行的队列研究。我们测试了校正临床组(ACG)方法的预测能力和SF-36V(退伍军人的简短形式功能状态)结果的增加值。使用R,平均绝对预测误差(MAPE)和预测比率比较线性回归模型。受试者:在1998财政年度(FY),受试者是8 VA医疗中心的35,337 VA受益人,他们自愿完成了SF-36V调查。措施:结果是1998财政年度和1999财政年度的总费用。比较了有和没有8个SF-36V多项目量表的人口统计学和基于ACG的调整诊断组(ADG),以及身体成分评分和心理成分评分。结果::调查答复率为45%。将8个量表添加到ADG和人口统计资料中,在预期模型中将交叉验证的R增加0.007。在1999财年费用的前10%中,这8个量表将MAPE降低了236美元。结论:应将健康自我报告对基于诊断的风险调整系统的有限附加预测能力与收集这些数据的成本进行权衡。添加健康自我报告数据可以提高高成本患者的预测准确性。

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