Aragon Health Science Institute, 25, Gomez Laguna Ave, Zaragoza 50009, Spain.
BMC Health Serv Res. 2010 Jan 21;10:22. doi: 10.1186/1472-6963-10-22.
In the financing of a national health system, where pharmaceutical spending is one of the main cost containment targets, predicting pharmacy costs for individuals and populations is essential for budget planning and care management. Although most efforts have focused on risk adjustment applying diagnostic data, the reliability of this information source has been questioned in the primary care setting. We sought to assess the usefulness of incorporating pharmacy data into claims-based predictive models (PMs). Developed primarily for the U.S. health care setting, a secondary objective was to evaluate the benefit of a local calibration in order to adapt the PMs to the Spanish health care system.
The population was drawn from patients within the primary care setting of Aragon, Spain (n = 84,152). Diagnostic, medication and prior cost data were used to develop PMs based on the Johns Hopkins ACG methodology. Model performance was assessed through r-squared statistics and predictive ratios. The capacity to identify future high-cost patients was examined through c-statistic, sensitivity and specificity parameters.
The PMs based on pharmacy data had a higher capacity to predict future pharmacy expenses and to identify potential high-cost patients than the models based on diagnostic data alone and a capacity almost as high as that of the combined diagnosis-pharmacy-based PM. PMs provided considerably better predictions when calibrated to Spanish data.
Understandably, pharmacy spending is more predictable using pharmacy-based risk markers compared with diagnosis-based risk markers. Pharmacy-based PMs can assist plan administrators and medical directors in planning the health budget and identifying high-cost-risk patients amenable to care management programs.
在国家卫生系统的融资中,药品支出是主要的成本控制目标之一,因此预测个人和人群的药房成本对于预算规划和护理管理至关重要。尽管大多数努力都集中在应用诊断数据进行风险调整上,但在初级保健环境中,人们对这种信息源的可靠性提出了质疑。我们试图评估将药房数据纳入基于索赔的预测模型 (PM) 中的有用性。这些模型主要是为美国医疗保健环境开发的,次要目标是评估本地校准的益处,以便使 PM 适应西班牙的医疗保健系统。
该人群来自西班牙阿拉贡的初级保健环境中的患者(n=84152)。诊断、药物和先前的成本数据用于基于约翰霍普金斯 ACG 方法学开发 PM。通过 r 平方统计和预测比来评估模型性能。通过 c 统计量、敏感性和特异性参数来检查识别未来高成本患者的能力。
基于药房数据的 PM 比仅基于诊断数据的模型更能预测未来的药房支出和识别潜在的高成本患者,其能力几乎与基于诊断和药房的组合 PM 相当。当针对西班牙数据进行校准时,PM 提供了更好的预测。
可以理解的是,与基于诊断的风险标志物相比,基于药房的风险标志物更能预测药房支出。基于药房的 PM 可以帮助计划管理员和医疗主任规划卫生预算并识别适合护理管理计划的高成本风险患者。