4.4 Article

Choosing Models for Health Care Cost Analyses: Issues of Nonlinearity and Endogeneity

期刊

HEALTH SERVICES RESEARCH
卷 47, 期 6, 页码 2377-2397

出版社

WILEY-BLACKWELL
DOI: 10.1111/j.1475-6773.2012.01414.x

关键词

Costs; endogeneity; nonlinear models; treatment effects; palliative care

资金

  1. Department of Veterans Affairs, Veterans Health Administration, Office of Research and Development, Health Services Research and Development Service [IAD-06-060-2, REA 08-260]
  2. NIH/NIA Claude D. Pepper Older Americans Independence Center [1P30AG28741-01]

向作者/读者索取更多资源

Objective To compare methods of analyzing endogenous treatment effect models for nonlinear outcomes and illustrate the impact of model specification on estimates of treatment effects such as health care costs. Data Sources Secondary data on cost and utilization for inpatients hospitalized in five Veterans Affairs acute care facilities in 20052006. Study Design We compare results from analyses with full information maximum simulated likelihood (FIMSL); control function (CF) approaches employing different types and functional forms for the residuals, including the special case of two-stage residual inclusion; and two-stage least squares (2SLS). As an example, we examine the effect of an inpatient palliative care (PC) consultation on direct costs of care per day. Data Collection/Extraction Methods We analyzed data for 3,389 inpatients with one or more life-limiting diseases. Principal Findings The distribution of average treatment effects on the treated and local average treatment effects of a PC consultation depended on model specification. CF and FIMSL estimates were more similar to each other than to 2SLS estimates. CF estimates were sensitive to choice and functional form of residual. Conclusions When modeling cost or other nonlinear data with endogeneity, one should be aware of the impact of model specification and treatment effect choice on results.

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