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Cluster Analysis of the Highest Users of Medical, Behavioral Health, and Social Services in San Francisco

BACKGROUND: In the City and County of San Francisco, frequent users of emergent and urgent services across different settings (i.e., medical, mental health (MH), substance use disorder (SUD) services) are referred to as high users of multiple systems (HUMS). While often grouped together, frequent us...

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Autores principales: Hewlett, Meghan M., Raven, Maria C., Graham-Squire, Dave, Evans, Jennifer L., Cawley, Caroline, Kushel, Margot, Kanzaria, Hemal K.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9708142/
https://www.ncbi.nlm.nih.gov/pubmed/36447066
http://dx.doi.org/10.1007/s11606-022-07873-y
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author Hewlett, Meghan M.
Raven, Maria C.
Graham-Squire, Dave
Evans, Jennifer L.
Cawley, Caroline
Kushel, Margot
Kanzaria, Hemal K.
author_facet Hewlett, Meghan M.
Raven, Maria C.
Graham-Squire, Dave
Evans, Jennifer L.
Cawley, Caroline
Kushel, Margot
Kanzaria, Hemal K.
author_sort Hewlett, Meghan M.
collection PubMed
description BACKGROUND: In the City and County of San Francisco, frequent users of emergent and urgent services across different settings (i.e., medical, mental health (MH), substance use disorder (SUD) services) are referred to as high users of multiple systems (HUMS). While often grouped together, frequent users of the health care system are likely a heterogenous population composed of subgroups with differential management needs. OBJECTIVE: To identify subgroups within this HUMS population using a cluster analysis. DESIGN: Cross-sectional study of HUMS patients for the 2019–2020 fiscal year using the Coordinated Care Management System (CCMS), San Francisco Department of Public Health’s integrated data system. PARTICIPANTS: We calculated use scores based on nine types of urgent and emergent medical, MH, and SUD services and identified the top 5% of HUMS patients. Through k-medoids cluster analysis, we identified subgroups of HUMS patients. MAIN MEASURES: Subgroup-specific demographic, comorbidity, and service use profiles. KEY RESULTS: The top 5% of HUMS patients in the study period included 2657 individuals; 69.7% identified as men and 66.5% identified as non-White. We detected 5 subgroups: subgroup 1 (N = 298, 11.2%) who were relatively younger with prevalent MH and SUD comorbidities, and MH services use; subgroup 2 (N = 478, 18.0%), who were experiencing homelessness, with multiple comorbidities, and frequent use of medical services; subgroup 3 (N = 449, 16.9%), who disproportionately self-identified as Black, with prolonged homelessness, multiple comorbidities, and persistent HUMS status; subgroup 4 (N = 690, 26.0%), who were relatively older, disproportionately self-identified as Black, with prior homelessness, multiple comorbidities, and frequent use of medical services; and subgroup 5 (N=742, 27.9%), who disproportionately self-identified as Latinx, were housed, with medical comorbidities and frequent medical service use. CONCLUSIONS: Our study highlights the heterogeneity of HUMS patients. Interventions must be tailored to meet the needs of these diverse patient subgroups. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s11606-022-07873-y.
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spelling pubmed-97081422022-11-30 Cluster Analysis of the Highest Users of Medical, Behavioral Health, and Social Services in San Francisco Hewlett, Meghan M. Raven, Maria C. Graham-Squire, Dave Evans, Jennifer L. Cawley, Caroline Kushel, Margot Kanzaria, Hemal K. J Gen Intern Med Original Research BACKGROUND: In the City and County of San Francisco, frequent users of emergent and urgent services across different settings (i.e., medical, mental health (MH), substance use disorder (SUD) services) are referred to as high users of multiple systems (HUMS). While often grouped together, frequent users of the health care system are likely a heterogenous population composed of subgroups with differential management needs. OBJECTIVE: To identify subgroups within this HUMS population using a cluster analysis. DESIGN: Cross-sectional study of HUMS patients for the 2019–2020 fiscal year using the Coordinated Care Management System (CCMS), San Francisco Department of Public Health’s integrated data system. PARTICIPANTS: We calculated use scores based on nine types of urgent and emergent medical, MH, and SUD services and identified the top 5% of HUMS patients. Through k-medoids cluster analysis, we identified subgroups of HUMS patients. MAIN MEASURES: Subgroup-specific demographic, comorbidity, and service use profiles. KEY RESULTS: The top 5% of HUMS patients in the study period included 2657 individuals; 69.7% identified as men and 66.5% identified as non-White. We detected 5 subgroups: subgroup 1 (N = 298, 11.2%) who were relatively younger with prevalent MH and SUD comorbidities, and MH services use; subgroup 2 (N = 478, 18.0%), who were experiencing homelessness, with multiple comorbidities, and frequent use of medical services; subgroup 3 (N = 449, 16.9%), who disproportionately self-identified as Black, with prolonged homelessness, multiple comorbidities, and persistent HUMS status; subgroup 4 (N = 690, 26.0%), who were relatively older, disproportionately self-identified as Black, with prior homelessness, multiple comorbidities, and frequent use of medical services; and subgroup 5 (N=742, 27.9%), who disproportionately self-identified as Latinx, were housed, with medical comorbidities and frequent medical service use. CONCLUSIONS: Our study highlights the heterogeneity of HUMS patients. Interventions must be tailored to meet the needs of these diverse patient subgroups. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s11606-022-07873-y. Springer International Publishing 2022-11-29 2023-04 /pmc/articles/PMC9708142/ /pubmed/36447066 http://dx.doi.org/10.1007/s11606-022-07873-y Text en © The Author(s), under exclusive licence to Society of General Internal Medicine 2022, Springer Nature or its licensor (e.g. a society or other partner) holds exclusive rights to this article under a publishing agreement with the author(s) or other rightsholder(s); author self-archiving of the accepted manuscript version of this article is solely governed by the terms of such publishing agreement and applicable law.
spellingShingle Original Research
Hewlett, Meghan M.
Raven, Maria C.
Graham-Squire, Dave
Evans, Jennifer L.
Cawley, Caroline
Kushel, Margot
Kanzaria, Hemal K.
Cluster Analysis of the Highest Users of Medical, Behavioral Health, and Social Services in San Francisco
title Cluster Analysis of the Highest Users of Medical, Behavioral Health, and Social Services in San Francisco
title_full Cluster Analysis of the Highest Users of Medical, Behavioral Health, and Social Services in San Francisco
title_fullStr Cluster Analysis of the Highest Users of Medical, Behavioral Health, and Social Services in San Francisco
title_full_unstemmed Cluster Analysis of the Highest Users of Medical, Behavioral Health, and Social Services in San Francisco
title_short Cluster Analysis of the Highest Users of Medical, Behavioral Health, and Social Services in San Francisco
title_sort cluster analysis of the highest users of medical, behavioral health, and social services in san francisco
topic Original Research
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9708142/
https://www.ncbi.nlm.nih.gov/pubmed/36447066
http://dx.doi.org/10.1007/s11606-022-07873-y
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