Identifying subgroups of adult high-cost health care users: a retrospective analysis.

CMAJ open Pub Date : 2022-04-19 Print Date: 2022-04-01 DOI:10.9778/cmajo.20210265
James Wick, David J T Campbell, Finlay A McAlister, Braden J Manns, Marcello Tonelli, Reed F Beall, Brenda R Hemmelgarn, Andrew Stewart, Paul E Ronksley
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Abstract

Background: Few studies have categorized high-cost patients (defined by accumulated health care spending above a predetermined percentile) into distinctive groups for which potentially actionable interventions may improve outcomes and reduce costs. We sought to identify homogeneous groups within the persistently high-cost population to develop a taxonomy of subgroups that may be targetable with specific interventions.

Methods: We conducted a retrospective analysis in which we identified adults (≥ 18 yr) who lived in Alberta between April 2014 and March 2019. We defined "persistently high-cost users" as those in the top 1% of health care spending across 4 data sources (the Discharge Abstract Database for inpatient encounters; Practitioner Claims for outpatient primary care and specialist encounters; the Ambulatory Care Classification System for emergency department encounters; and the Pharmaceutical Information Network for medication use) in at least 2 consecutive fiscal years. We used latent class analysis and expert clinical opinion in tandem to separate the persistently high-cost population into subgroups that may be targeted by specific interventions based on their distinctive clinical profiles and the drivers of their health system use and costs.

Results: Of the 3 919 388 adults who lived in Alberta for at least 2 consecutive fiscal years during the study period, 21 115 (0.5%) were persistently high-cost users. We identified 9 subgroups in this population: people with cardiovascular disease (n = 4537; 21.5%); people receiving rehabilitation after surgery or recovering from complications of surgery (n = 3380; 16.0%); people with severe mental health conditions (n = 3060; 14.5%); people with advanced chronic kidney disease (n = 2689; 12.7%); people receiving biologic therapies for autoimmune conditions (n = 2538; 12.0%); people with dementia and awaiting community placement (n = 2520; 11.9%); people with chronic obstructive pulmonary disease or other respiratory conditions (n = 984; 4.7%); people receiving treatment for cancer (n = 832; 3.9%); and people with unstable housing situations or substance use disorders (n = 575; 2.7%).

Interpretation: Using latent class analysis supplemented with expert clinical review, we identified 9 policy-relevant subgroups among persistently high-cost health care users. This taxonomy may be used to inform policy, including identifying interventions that are most likely to improve care and reduce cost for each subgroup.

确定成人高费用医疗保健使用者的亚组:回顾性分析
背景:很少有研究将高成本患者(由超过预定百分位数的累计医疗保健支出定义)分为不同的群体,对这些群体来说,潜在的可行干预措施可以改善结果并降低成本。我们试图在持续高成本人群中识别同质群体,以制定一种亚组分类法,该分类法可能是特定干预措施的目标。方法:我们进行了一项回顾性分析,确定了2014年4月至2019年3月期间居住在阿尔伯塔省的成年人(≥18岁)。我们将“持续高成本用户”定义为4个数据源(住院患者出院摘要数据库;门诊初级保健和专科医生就诊的从业者索赔;急诊科就诊的门诊护理分类系统;药物使用的药物信息网络)中医疗支出前1%的用户至少连续2个财政年度。我们结合潜在类别分析和专家临床意见,将持续高成本人群分为亚组,根据其独特的临床特征以及其卫生系统使用和成本的驱动因素,这些亚组可能是特定干预措施的目标。结果:在研究期间,在阿尔伯塔省连续居住至少2个财政年度的3199388名成年人中,21115人(0.5%)是持续的高成本用户。我们在该人群中确定了9个亚组:心血管疾病患者(n=4537;21.5%);接受手术后康复或从手术并发症中恢复的人(n=3380;16.0%);有严重心理健康状况的人(n=3060;14.5%);晚期慢性肾脏疾病患者(n=2689;12.7%);接受自身免疫性疾病生物治疗的人(n=2538;12.0%);痴呆症患者和等待社区安置的人(n=2520;11.9%);患有慢性阻塞性肺病或其他呼吸系统疾病的人(n=984;4.7%);接受癌症治疗的人(n=832;3.9%);以及住房状况不稳定或物质使用障碍的人(n=575;2.7%)。解释:通过潜在类别分析和专家临床审查,我们在持续高成本的医疗保健用户中确定了9个政策相关亚组。这种分类法可用于为政策提供信息,包括确定最有可能改善护理并降低每个亚组成本的干预措施。
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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CiteScore
5.40
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