Risk adjustment for high utilizers of public mental health care

IF 1 4区 医学 Q4 HEALTH POLICY & SERVICES
Kanika Kapur., Alexander S Young, Dennis Murata
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引用次数: 26

Abstract

Background: Publicly funded mental health systems are increasingly implementing managed care systems, such as capitation, to control costs. Capitated contracts may increase the risk for disenrollment or adverse outcomes among high cost clients with severe mental illness. Risk-adjusted payments to providers are likely to reduce providers' incentives to avoid or under-treat these people. However, most research has focused on Medicare and private populations, and risk adjustment for individuals who are publicly funded and severely mentally ill has received far less attention.

Aims of the Study: Risk adjustment models for this population can be used to improve contracting for mental health care. Our objective is to develop risk adjustment models for individuals with severe mental illness and assess their performance in predicting future costs. We apply the risk adjustment model to predict costs for the first year of a pilot capitation program for the severely mentally ill that was not risk adjusted. We assess whether risk adjustment could have reduced disenrollment from this program.

Methods: This analysis uses longitudinal administrative data from the County of Los Angeles Department of Mental Health for the fiscal years 1991 to 1994. The sample consists of 1956 clients who have high costs and are severely mentally ill. We estimate several modified two part models of 1993 cost that use 1992 client-based variables such as demographics, living conditions, diagnoses and mental health costs (for 1992 and 1991) to explain the variation in mental health and substance abuse costs.

Results: We find that the model that incorporates demographic characteristics, diagnostic information and cost data from two previous years explains about 16 percent of the in-sample variation and 10 percent of the out-of-sample variation in costs. A model that excludes prior cost covariates explains only 5 percent of the variation in costs. Despite the relatively low predictive power, we find some evidence that the disenrollment from the pilot capitation initiative input have been reduced if risk adjustment had been used to set capitation rates.

Discussion: The evidence suggests that even though risk adjustment techniques have room to improve, they are still likely to be useful for reducing risk selection in capitation programs. Blended payment schemes that combine risk adjustment with risk corridors or partial fee-for-service payments should be explored.

Implications for Health Care Provision, Use, and Policy: Our results suggest that risk adjustment methods, as developed to data, do not have the requisite predictive power to be used as the sole approach to adjusting capitation rates. Risk adjustment is informative and useful; however, payments to providers should not be fully capitated, and may need to involve some degree of risk sharing between providers and public mental health agencies. A blended contract design may further reduce incentives for risk selection by incorporating a partly risk-adjusted capitation payment, without relying completely on the accuracy of risk adjustment models.

Implications for Further Research: Risk adjustment models estimated using data sets containing better predictors of rehospitalization and more precise clinical information are likely to have higher predictive power. Further research should also focus on the effect of combination contract designs. Copyright © 2000 John Wiley & Sons, Ltd.

公共精神卫生服务高利用率人群的风险调整
背景:公共资助的心理健康系统越来越多地实施管理式护理系统,如按人头付费,以控制成本。资本化合同可能会增加患有严重精神疾病的高成本客户的退出风险或不良后果。对提供者进行风险调整后的付款可能会降低提供者避免或低估这些人的动机。然而,大多数研究都集中在医疗保险和私人人群上,而对公共资助和严重精神病患者的风险调整关注度要低得多。研究目的:这一人群的风险调整模型可用于改善心理健康护理合同。我们的目标是为患有严重精神疾病的个人开发风险调整模型,并评估他们在预测未来成本方面的表现。我们应用风险调整模型来预测未经风险调整的严重精神病患者按人头计算试点项目第一年的成本。我们评估风险调整是否可以减少该计划的退出。方法:该分析使用了洛杉矶县精神卫生部1991至1994财政年度的纵向行政数据。样本包括1956名高成本和严重精神病患者。我们估计了1993年成本的几个修改的两部分模型,这些模型使用了1992年基于客户的变量,如人口统计、生活条件、诊断和心理健康成本(1992年和1991年)来解释心理健康和药物滥用成本的变化。结果:我们发现,该模型结合了前两年的人口统计特征、诊断信息和成本数据,解释了约16%的样本内成本变化和10%的样本外成本变化。排除先前成本协变量的模型只能解释5%的成本变化。尽管预测能力相对较低,但我们发现一些证据表明,如果使用风险调整来设定按人头付费率,从试点按人头付费倡议投入中退出的人数已经减少。讨论:有证据表明,即使风险调整技术还有改进的空间,它们仍然可能有助于减少按人头计算项目中的风险选择。应探索将风险调整与风险走廊或部分服务费支付相结合的混合支付方案。对医疗保健提供、使用和政策的影响:我们的研究结果表明,根据数据开发的风险调整方法不具备必要的预测能力,无法作为调整按人头付费率的唯一方法。风险调整具有信息性和实用性;然而,向提供者支付的费用不应完全按人头计算,可能需要在提供者和公共心理健康机构之间进行一定程度的风险分担。混合合同设计可以在不完全依赖风险调整模型准确性的情况下,通过纳入部分风险调整的按人头付费,进一步减少风险选择的动机。对进一步研究的启示:使用包含更好的再住院预测因素和更精确的临床信息的数据集估计的风险调整模型可能具有更高的预测能力。进一步的研究还应侧重于组合合同设计的效果。版权所有©2000 John Wiley&;有限公司。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.20
自引率
6.20%
发文量
8
期刊介绍: The Journal of Mental Health Policy and Economics publishes high quality empirical, analytical and methodologic papers focusing on the application of health and economic research and policy analysis in mental health. It offers an international forum to enable the different participants in mental health policy and economics - psychiatrists involved in research and care and other mental health workers, health services researchers, health economists, policy makers, public and private health providers, advocacy groups, and the pharmaceutical industry - to share common information in a common language.
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