Kole Kyle, Zick Cathleen D, Brown Barbara B, Curtis David S, Kowaleski-Jones Lori, Meeks Huong D, Smith Ken R
Department of Family and Consumer Studies, University of Utah, Salt Lake City, Utah, USA.
Department of Pediatrics, University of Utah, Salt Lake City, Utah, USA.
Health Serv Res. 2025 Jun;60(3):e14412. doi: 10.1111/1475-6773.14412. Epub 2024 Nov 26.
To ascertain how an instrumental variables (IV) model can improve upon the estimates obtained from traditional cost-of-illness (COI) models that treat health conditions as predetermined.
A simulation study based on observational data compares the coefficients and average marginal effects from an IV model to a traditional COI model when an unobservable confounder is introduced. The two approaches are then applied to real data, using a kinship-weighted family history as an instrument, and differences are interpreted within the context of the findings from the simulation study.
The case study utilizes secondary data on type 2 diabetes mellitus (T2DM) status to examine healthcare costs attributable to the disease. The data come from Utah residents born between 1950 and 1970 with medical insurance coverage whose demographic information is contained in the Utah Population Database. Those data are linked to insurance claims from Utah's All-Payer Claims Database for the analyses.
The simulation confirms that estimated T2DM healthcare cost coefficients are biased when traditional COI models do not account for unobserved characteristics that influence both the risk of illness and healthcare costs. This bias can be corrected to a certain extent with instrumental variables. An IV model with a validated instrument estimates that 2014 costs for an individual age 45-64 with T2DM are 27% (95% CI: 2.9% to 51.9%) higher than those for an otherwise comparable individual who does not have T2DM.
Researchers studying the COI for chronic diseases should assess the possibility that traditional estimates may be subject to bias because of unobserved characteristics. Doing so may be especially important for prevention and intervention studies that turn to COI studies to assess the cost savings associated with such initiatives.
确定工具变量(IV)模型如何改进从将健康状况视为既定因素的传统疾病成本(COI)模型中获得的估计值。
一项基于观察性数据的模拟研究,在引入不可观测的混杂因素时,比较了IV模型与传统COI模型的系数和平均边际效应。然后将这两种方法应用于实际数据,使用亲属关系加权家族史作为工具变量,并在模拟研究结果的背景下解释差异。
该案例研究利用关于2型糖尿病(T2DM)状态的二手数据来检查该疾病的医疗保健成本。数据来自1950年至1970年出生且有医疗保险覆盖的犹他州居民,其人口统计信息包含在犹他州人口数据库中。这些数据与犹他州全支付者索赔数据库中的保险索赔相关联以进行分析。
模拟证实,当传统COI模型未考虑影响疾病风险和医疗保健成本的未观测特征时,估计的T2DM医疗保健成本系数存在偏差。这种偏差可以通过工具变量在一定程度上得到纠正。一个使用经过验证的工具变量的IV模型估计,2014年45 - 64岁患有T2DM的个体的成本比没有T2DM的其他可比个体高27%(95%置信区间:2.9%至51.9%)。
研究慢性病疾病成本的研究人员应评估传统估计值可能因未观测特征而存在偏差的可能性。对于那些借助疾病成本研究来评估与此类举措相关的成本节约的预防和干预研究而言,这样做可能尤为重要。