Lu Juan, Britton Erin, Ferrance Jacquelyn, Rice Emily, Kuzel Anton, Dow Alan
Department of Family Medicine and Population Health, Division of Epidemiology, Virginia Commonwealth University.
Department of Internal Medicine, Virginia Commonwealth University.
Qual Prim Care. 2015;23(6):318-326.
Improving health and controlling healthcare costs requires better tools for predicting future health needs across populations. We sought to identify factors associated with transitioning of enrollees in an indigent care program from an intermediate cost segment to a high cost segment of this population.
We analyzed data from 9,624 enrollees of the Virginia Coordinated Care program between 2010 and 2013. Each fiscal year included all enrollees who were classified in intermediate cost segment in the preceding year and also enrolled in the program in the following year. Using information from the preceding year, we built logistic regression models to identify the individuals in the top 10% of expenditures in the following year. The effect of demographics, count of chronic conditions, presence of the prevalent chronic conditions, and utilization indicators were evaluated and compared. Models were compared via the Bayesian information criterion and c-statistic.
The count of chronic conditions, diagnosis of congestive heart failure, and numbers of total hospital visits and prescriptions were significantly and independently associated with being in the future high cost segment. Overall, the model that included demographics and utilization indicators had a reasonable discrimination (c=0.67).
A simple model including demographics and health utilization indicators predicted high future costs. The count of chronic conditions and certain medical diagnoses added additional predictive value. With further validation, the approach could be used to identify high-risk individuals and target interventions that decrease utilization and improve health.
改善健康状况并控制医疗成本需要更好的工具来预测人群未来的健康需求。我们试图确定贫困医疗计划中参保者从该人群的中等成本段过渡到高成本段的相关因素。
我们分析了2010年至2013年弗吉尼亚协调医疗计划9624名参保者的数据。每个财政年度包括上一年被归类为中等成本段且下一年也参加该计划的所有参保者。利用上一年的信息,我们建立逻辑回归模型以识别下一年支出处于前10%的个体。对人口统计学特征、慢性病数量、常见慢性病的存在情况以及利用指标的影响进行了评估和比较。通过贝叶斯信息准则和c统计量对模型进行比较。
慢性病数量、充血性心力衰竭诊断以及住院总次数和处方数量与未来处于高成本段显著且独立相关。总体而言,包含人口统计学特征和利用指标的模型具有合理的区分度(c = 0.67)。
一个包含人口统计学特征和健康利用指标的简单模型可预测未来高成本。慢性病数量和某些医学诊断增加了额外的预测价值。经过进一步验证,该方法可用于识别高危个体并针对降低利用和改善健康的干预措施。