Chechulin Yuriy, Nazerian Amir, Rais Saad, Malikov Kamil
Senior Methodologist, Health Analytics Branch, Ontario Ministry of Health and Long-Term Care Toronto, ON.
Methodologist, Health Analytics Branch, Ontario Ministry of Health and Long-Term Care Toronto, ON.
Healthc Policy. 2014 Feb;9(3):68-79.
Literature and original analysis of healthcare costs have shown that a small proportion of patients consume the majority of healthcare resources. A proactive approach is to target interventions towards those patients who are at risk of becoming high-cost users (HCUs). This approach requires identifying high-risk patients accurately before substantial avoidable costs have been incurred and health status has deteriorated further. We developed a predictive model to identify patients at risk of becoming HCUs in Ontario. HCUs were defined as the top 5% of patients incurring the highest costs. Information was collected on various demographic and utilization characteristics. The modelling technique used was logistic regression. If the top 5% of patients at risk of becoming HCUs are followed, the sensitivity is 42.2% and specificity is 97%. Alternatives for implementation of the model include collaboration between different levels of healthcare services for personalized healthcare interventions and interventions addressing needs of patient cohorts with high-cost conditions.
医疗成本的文献及原始分析表明,一小部分患者消耗了大部分医疗资源。一种积极主动的方法是针对那些有成为高成本使用者(HCU)风险的患者进行干预。这种方法需要在产生大量可避免成本且健康状况进一步恶化之前准确识别高风险患者。我们开发了一个预测模型,以识别安大略省有成为HCU风险的患者。HCU被定义为成本最高的前5%的患者。收集了各种人口统计学和使用特征方面的信息。所使用的建模技术是逻辑回归。如果对有成为HCU风险的前5%的患者进行跟踪,敏感性为42.2%,特异性为97%。该模型的实施方式包括不同层级医疗服务之间的合作,以进行个性化医疗干预以及针对患有高成本疾病的患者群体的需求进行干预。