Institute of Health Policy and Management, Erasmus University Rotterdam, Rotterdam, The Netherlands.
Med Care. 2010 May;48(5):448-57. doi: 10.1097/MLR.0b013e3181d559b4.
Current research on the added value of self-reported health measures for risk equalization modeling does not include all types of self-reported health measures; and/or is compared with a limited set of medically diagnosed or pharmacy-based diseases; and/or is limited to specific populations of high-risk individuals.
The objective of our study is to determine the predictive power of all types of self-reported health measures for prospective modeling of health care expenditures in a general population of adult Dutch sickness fund enrollees, given that pharmacy and diagnostic data from administrative records are already included in the risk equalization formula.
We used 4 models of 2002 total, inpatient and outpatient expenditures to evaluate the separate and combined predictive ability of 2 kinds of data: (1) Pharmacy-based (PCGs) and Diagnosis-based (DCGs) Cost Groups and (2) summarized self-reported health information. Model performance is measured at the total population level using R2 and mean absolute prediction error; also, by examining mean discrepancies between model-predicted and actual expenditures (ie, expected over- or undercompensation) for members of potentially "mispriced" subgroups. These subgroups are identified by self-reports from prior-year health surveys and utilization and expenditure data from 5 preceding years.
Subjects were 18,617 respondents to a health survey, held among a stratified sample of adult members of the largest Dutch sickness fund in 2002, with an overrepresentation of people in poor health.
The data were extracted from a claims database and a health survey. The claims-based data are the outcomes of total, inpatient, and outpatient annualized expenditures in 2002; age, gender, PCGs, DCGs in 2001; and health care expenditures and hospitalizations during the years 1997 to 2001. The SF-36, Organization for Economic Cooperation and Development items, and long-term diseases and conditions were collected by a special purpose health survey conducted in the last quarter of 2001.
Out-of-sample R2 equals 17.2%, 2.6%, and 32.4% for the models of total, inpatient and outpatient expenditures including PCGs, DCGs, and self-reported health measures. Self-reported health measures contribute less to predictive power than PCGs and DCGs. PCGs and DCGs also predict better than self-reported health measures for people with top 25% total expenditures or hospitalizations in each year during a 5-year period. On the other hand, self-reported health measures are better predictors than PCGs and DCGs for people without any top 25% expenditures during the 5-year period, for switchers, and for most subgroups of relatively unhealthy people defined by self-reported health measures. Among the set of self-reported health measures, the SF-36 adds most to predictive power in terms of R2, mean absolute prediction error, and for almost all studied subgroups.
It is concluded that the self-reported health measures make an independent contribution to forecasting health care expenditures, even if the prediction model already includes diagnostic and pharmacy-based information currently used in Dutch risk equalization models.
目前关于自我报告健康测量值在风险均衡建模中的附加值的研究没有包括所有类型的自我报告健康测量值;并且/或者与有限的一组医学诊断或基于药房的疾病进行比较;并且/或者仅限于特定的高危人群。
我们的研究目的是确定所有类型的自我报告健康测量值在荷兰大型医疗保险参保者的一般人群中对未来医疗支出建模的预测能力,因为药房和诊断数据已经包含在风险均衡公式中。
我们使用了 4 个模型,共 2002 个总、住院和门诊支出,以评估 2 种数据的单独和综合预测能力:(1)基于药房的(PCGs)和基于诊断的(DCGs)成本组和(2)总结自我报告的健康信息。模型性能在总体人群水平上使用 R2 和平均绝对预测误差进行衡量;还通过检查潜在“定价错误”亚组成员的模型预测支出与实际支出之间的平均差异(即预期的超额或不足补偿)来衡量。这些亚组是根据前一年健康调查的自我报告和前 5 年的利用和支出数据确定的。
受试者是 2002 年在荷兰最大的医疗保险之一的分层样本中接受健康调查的 18617 名成年人,其中包括健康状况较差的人群。
数据取自索赔数据库和健康调查。索赔数据是 2002 年总、住院和门诊年度支出的结果;2001 年的年龄、性别、PCGs、DCGs;以及 1997 年至 2001 年的医疗保健支出和住院治疗。SF-36、经济合作与发展组织项目以及长期疾病和状况是由 2001 年最后一个季度进行的一项特殊目的健康调查收集的。
包括 PCGs、DCGs 和自我报告健康措施的总、住院和门诊支出模型的样本外 R2 分别为 17.2%、2.6%和 32.4%。自我报告的健康措施对预测能力的贡献小于 PCGs 和 DCGs。PCGs 和 DCGs 也比自我报告的健康措施更能预测每年总支出或住院治疗前 25%的人群。另一方面,对于过去 5 年期间没有任何前 25%支出的人群、转换者以及通过自我报告健康措施定义的大多数相对不健康人群亚组,自我报告的健康措施是比 PCGs 和 DCGs 更好的预测指标。在自我报告的健康措施中,SF-36 在 R2、平均绝对预测误差以及几乎所有研究的亚组中都增加了预测能力。
结论是,即使预测模型已经包含了目前在荷兰风险均衡模型中使用的诊断和基于药房的信息,自我报告的健康措施也对预测医疗保健支出做出了独立贡献。