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How to Classify Super-Utilizers: A Methodological Review of Super-Utilizer Criteria Applied to the Utah Medicaid Population, 2016-2017

机译:如何对超级用户进行分类:2016-2017年适用于犹他州医疗补助人群的超级用户标准的方法学回顾

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摘要

A limited number of patients, commonly termed super-utilizers, account for the bulk of health care expenditures. Multiple criteria for identifying super-utilizers exist, but no standard methodology is available for determining which criteria should be used for a specific population. Application is often arbitrary, and poorly aligned super-utilizer criteria might result in misallocation of resources and diminished effects of interventions. This study sought to apply an innovative, data-driven approach to classify super-utilizers among Utah Medicaid beneficiaries. The authors conducted a literature review of research methods to catalogue applied super-utilizer criteria. The most commonly used criteria were applied to Utah Medicaid beneficiaries enrolled during July 1, 2016–June 30, 2017, using their previous 12 months of claims data (N = 309,921). The k-medoids algorithm cluster analysis was used to find groups of beneficiaries with similar characteristic based on criteria from the literature. In all, 180 super-utilizer criteria were identified in the literature, 21 of which met the inclusion criteria. When these criteria were applied to Utah Medicaid data, 5 distinct subpopulation clusters were found: non–super-utilizers (n = 163,118), beneficiaries with multiple chronic or mental health conditions (n = 68,054), beneficiaries with a single chronic health condition (n = 43,939), emergency department super-utilizers with chronic or mental health conditions (n = 7809), and beneficiaries with uncomplicated hospitalizations (n = 27,001). This study demonstrates how cluster analysis can aid in selecting characteristics from the literature that systematically differentiate super-utilizer groups from other beneficiaries. This methodology might be useful to health care systems for identifying super-utilizers within their patient populations.
机译:有限的患者(通常被称为超级使用者)占了医疗保健支出的大部分。存在多种识别超级利用者的标准,但是没有标准方法可用于确定应针对特定人群使用哪些标准。应用程序通常是任意的,并且超级使用者条件不统一可能会导致资源分配错误和干预效果减弱。这项研究试图运用一种创新的,数据驱动的方法对犹他州医疗补助受益人中的超级利用者进行分类。作者对研究方法进行了文献综述,以对应用的超级利用者标准进行分类。最常用的标准适用于2016年7月1日至2017年6月30日登记的犹他州医疗补助受益人,使用其之前的12个月索赔数据(N = 309,921)。基于文献中的标准,使用k-medoids算法聚类分析来查找具有相似特征的受益人组。文献中总共确定了180个超级利用者标准,其中21个符合纳入标准。将这些标准应用于犹他州医疗补助数据时,发现了5个不同的亚人群:非超级利用者(n = 163,118),患有多种慢性或精神健康状况的受益人(n = 68,054),具有单一慢性健康状况的受益人(n = 68,054) n = 43,939),患有慢性或精神疾病的急诊部门超级使用者(n = 7809)和住院情况不复杂的受益人(n = 27,001)。这项研究证明了聚类分析如何能够帮助从文献中选择特征,从而有系统地将超级利用者群体与其他受益者区分开。这种方法对于医疗保健系统在其患者群体中识别超级使用者可能有用。

著录项

  • 来源
    《Disease Management》 |2020年第2期|165-173|共9页
  • 作者

  • 作者单位

    Division of Scientific Education and Professional Development CDC|Center for Health Data and Informatics Utah Department of Health;

    Division of Scientific Education and Professional Development CDC|United States Public Health Service Commissioned Corps|Division of Disease Control and Prevention Utah Department of Health;

    Division of Medicaid and Health Financing Utah Department of Health;

    Division of Disease Control and Prevention Utah Department of Health;

    Center for Health Data and Informatics Utah Department of Health;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    cluster analysis; Medicaid; medical overuse; systematic review;

    机译:聚类分析;医疗补助;医疗过度使用;系统评价;

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