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      Segmentation of High-Cost Adults in an Integrated Healthcare System Based on Empirical Clustering of Acute and Chronic Conditions

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          Abstract

          Background

          High-cost patients are a frequent focus of improvement projects based on primary care and other settings. Efforts to characterize high-cost, high-need patients are needed to inform care planning, but such efforts often rely on a priori assumptions, masking underlying complexities of a heterogenous population.

          Objective

          To define recognizable subgroups of patients among high-cost adults based on clinical conditions, and describe their survival and future spending.

          Design

          Retrospective observational cohort study.

          Participants

          Within a large integrated delivery system with 2.7 million adult members, we selected the top 1% of continuously enrolled adults with respect to total healthcare expenditures during 2010.

          Main Measures

          We used latent class analysis to identify clusters of alike patients based on 53 hierarchical condition categories. Prognosis as measured by healthcare spending and survival was assessed through 2014 for the resulting classes of patients.

          Results

          Among 21,183 high-cost adults, seven clinically distinctive subgroups of patients emerged. Classes included end-stage renal disease (12% of high-cost population), cardiopulmonary conditions (17%), diabetes with multiple comorbidities (8%), acute illness superimposed on chronic conditions (11%), conditions requiring highly specialized care (14%), neurologic and catastrophic conditions (5%), and patients with few comorbidities (the largest class, 33%). Over 4 years of follow-up, 6566 (31%) patients died, and survival in the classes ranged from 43 to 88%. Spending regressed to the mean in all classes except the ESRD and diabetes with multiple comorbidities groups.

          Conclusions

          Data-driven characterization of high-cost adults yielded clinically intuitive classes that were associated with survival and reflected markedly different healthcare needs. Relatively few high-cost patients remain persistently high cost over 4 years. Our results suggest that high-cost patients, while not a monolithic group, can be segmented into few subgroups. These subgroups may be the focus of future work to understand appropriateness of care and design interventions accordingly.

          Electronic supplementary material

          The online version of this article (10.1007/s11606-018-4626-0) contains supplementary material, which is available to authorized users.

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          Author and article information

          Contributors
          (626) 564-3936 , Anna.Davis@kp.org
          (626) 564-3926 , michael.k.gould@kp.org
          Journal
          J Gen Intern Med
          J Gen Intern Med
          Journal of General Internal Medicine
          Springer US (New York )
          0884-8734
          1525-1497
          4 September 2018
          December 2018
          : 33
          : 12
          : 2171-2179
          Affiliations
          [1 ] ISNI 0000 0000 9957 7758, GRID grid.280062.e, Kaiser Permanente Center for Effectiveness and Safety Research, ; Pasadena, CA USA
          [2 ] ISNI 0000 0000 9632 6718, GRID grid.19006.3e, Department of Health Policy and Management, , University of California Los Angeles Fielding School of Public Health, ; Los Angeles, CA USA
          [3 ] ISNI 0000 0000 9957 7758, GRID grid.280062.e, Kaiser Permanente Southern California Clinical Operations Support, ; Pasadena, CA USA
          [4 ] ISNI 0000 0000 9957 7758, GRID grid.280062.e, Kaiser Permanente Southern California Department of Research and Evaluation, ; Pasadena, CA USA
          [5 ] ISNI 0000000419368956, GRID grid.168010.e, Stanford University School of Medicine, ; Stanford, CA USA
          [6 ] ISNI 0000 0000 9632 6718, GRID grid.19006.3e, Department of Biostatistics, , University of California Los Angeles Fielding School of Public Health, ; Los Angeles, CA USA
          Article
          PMC6258619 PMC6258619 6258619 4626
          10.1007/s11606-018-4626-0
          6258619
          30182326
          a88202ff-7632-4824-a767-53528418dac0
          © Society of General Internal Medicine 2018
          History
          : 26 February 2018
          : 21 June 2018
          : 2 August 2018
          Categories
          Original Research
          Custom metadata
          © Society of General Internal Medicine 2018

          health services research,healthcare costs,statistical modeling,comorbidity

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