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Active Redesign of a Medicaid Care Management Strategy for Greater Return on Investment: Predicting Impactability

机译:积极重新设计医疗补助管理策略以提高投资回报率:预测影响力

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Care management of high-cost/high-needs patients is an increasingly common strategy to reduce health care costs. A variety of targeting methodologies have emerged to identify patients with high historical or predicted health care utilization, but the more pertinent question for program planners is how to identify those who are most likely to benefit from care management intervention. This paper describes the evolution of complex care management targeting strategies in Community Care of North Carolina's (CCNC) work with the statewide non-dual Medicaid population, culminating in the development of an Impactability Score that uses administrative data to predict achievable savings. It describes CCNC's pragmatic approach for estimating intervention effects in a historical cohort of 23,455 individuals, using a control population of 14,839 to determine expected spending at an individual level, against which actual spending could be compared. The actual-to-expected spending difference was then used as the dependent variable in a multivariate model to determine the predictive contribution of a multitude of demographic, clinical, and utilization characteristics. The coefficients from this model yielded the information required to build predictive models for prospective use. Model variables related to medication adherence and historical utilization unexplained by disease burden proved to be more important predictors of impactability than any given diagnosis or event, disease profile, or overall costs of care. Comparison of this approach to alternative targeting strategies (emergency department super-utilizers, inpatient super-utilizers, or patients with highest Hierarchical Condition Category risk scores) suggests a 2- to 3-fold higher return on investment using impactability-based targeting.
机译:高成本/高需求患者的护理管理是降低医疗费用的日益普遍的策略。已经出现了多种针对性的方法论,以识别具有较高历史或预期的医疗保健利用率的患者,但是对于计划制定者来说,更相关的问题是如何识别最有可能从护理管理干预中受益的患者。本文介绍了北卡罗来纳州社区护理(CCNC)与全州非双重医疗补助人群的复杂护理管理针对性策略的演变,并最终提出了使用管理数据预测可实现的节省的影响力评分。它描述了CCNC的务实方法,该方法用于评估23455人的历史队列中的干预效果,使用14839名对照人群来确定个人水平的预期支出,可以将实际支出与之进行比较。然后,将实际到预期的支出差异用作多变量模型中的因变量,以确定众多人口统计学,临床和利用特征的预测贡献。该模型的系数产生了建立用于预期用途的预测模型所需的信息。疾病负担无法解释的与药物依从性和历史使用率相关的模型变量被证明比任何给定的诊断或事件,疾病概况或总体护理费用更重要的预测影响力的指标。将该方法与其他目标策略(急诊部门的超级利用者,住院超级利用者或具有最高分层状况类别风险评分的患者)进行比较,可以得出结论:使用基于影响力的目标可以使投资回报提高2到3倍。

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