Bayliss Elizabeth A, Powers J David, Ellis Jennifer L, Barrow Jennifer C, Strobel MaryJo, Beck Arne
Kaiser Permanente Colorado Institute for Health Research; Department of Family Medicine, University of Colorado School of Medicine.
Kaiser Permanente Colorado Institute for Health Research.
EGEMS (Wash DC). 2016 Jul 12;4(1):1258. doi: 10.13063/2327-9214.1258. eCollection 2016.
Identifying care needs for newly enrolled or newly insured individuals is important under the Affordable Care Act. Systematically collected patient-reported information can potentially identify subgroups with specific care needs prior to service use.
We conducted a retrospective cohort investigation of 6,047 individuals who completed a 10-question needs assessment upon initial enrollment in Kaiser Permanente Colorado (KPCO), a not-for-profit integrated delivery system, through the Colorado State Individual Exchange. We used responses from the Brief Health Questionnaire (BHQ), to develop a predictive model for cost for receiving care in the top 25 percent, then applied cluster analytic techniques to identify different high-cost subpopulations. Per-member, per-month cost was measured from 6 to 12 months following BHQ response.
BHQ responses significantly predictive of high-cost care included self-reported health status, functional limitations, medication use, presence of 0-4 chronic conditions, self-reported emergency department (ED) use during the prior year, and lack of prior insurance. Age, gender, and deductible-based insurance product were also predictive. The largest possible range of predicted probabilities of being in the top 25 percent of cost was 3.5 percent to 96.4 percent. Within the top cost quartile, examples of potentially actionable clusters of patients included those with high morbidity, prior utilization, depression risk and financial constraints; those with high morbidity, previously uninsured individuals with few financial constraints; and relatively healthy, previously insured individuals with medication needs.
Applying sequential predictive modeling and cluster analytic techniques to patient-reported information can identify subgroups of individuals within heterogeneous populations who may benefit from specific interventions to optimize initial care delivery.
根据《平价医疗法案》,识别新参保或新获保险者的护理需求很重要。系统收集的患者报告信息有可能在使用服务之前识别出有特定护理需求的亚组。
我们对6047名通过科罗拉多州个人医保交易所首次加入凯撒永久医疗集团科罗拉多分部(KPCO,一个非营利性综合医疗服务体系)时完成了10个问题需求评估的个体进行了回顾性队列研究。我们利用简易健康问卷(BHQ)的回答来建立一个预测模型,以预测前25%接受护理的成本,然后应用聚类分析技术来识别不同的高成本亚人群。在BHQ回答后的6至12个月内测量每人每月的成本。
能显著预测高成本护理的BHQ回答包括自我报告的健康状况、功能受限、用药情况、存在0至4种慢性病、前一年自我报告的急诊室使用情况以及缺乏既往保险。年龄、性别和基于免赔额的保险产品也具有预测性。处于成本前25%的预测概率的最大可能范围是3.5%至96.4%。在成本最高的四分位数范围内,潜在可采取行动的患者聚类示例包括高发病率、既往利用率高、有抑郁风险和经济受限的患者;高发病率、既往未参保且经济受限较少的患者;以及相对健康、既往参保且有用药需求的患者。
将序贯预测建模和聚类分析技术应用于患者报告信息,可以识别出异质人群中可能受益于特定干预措施以优化初始护理服务的个体亚组。