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Published in: BMC Health Services Research 1/2016

Open Access 01-12-2016 | Research article

Pathways to potentially preventable hospitalizations for diabetes and heart failure: a qualitative analysis of patient perspectives

Authors: Tetine L. Sentell, Todd B. Seto, Malia M. Young, May Vawer, Michelle L. Quensell, Kathryn L. Braun, Deborah A. Taira

Published in: BMC Health Services Research | Issue 1/2016

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Abstract

Background

Potentially preventable hospitalizations (PPH) for heart failure (HF) and diabetes mellitus (DM) cost the United States over $14 billion annually. Studies about PPH typically lack patient perspectives, especially across diverse racial/ethnic groups with known PPH health disparities.

Methods

English-speaking individuals with a HF or DM-related PPH (n = 90) at the largest hospital in Hawai‘i completed an in-person interview, including open-ended questions on precipitating factors to their PPH. Using the framework approach, two independent coders identified patient-reported factors and pathways to their PPH.

Results

Seventy-two percent of respondents were under 65 years, 30 % were female, 90 % had health insurance, and 66 % had previously been hospitalized for the same problem. Patients’ stories identified immediate, precipitating, and underlying reasons for the admission. Underlying background factors were critical to understanding why patients had the acute problems necessitating their hospitalizations. Six, non-exclusive, underlying factors included: extreme social vulnerability (e.g., homeless, poverty, no social support, reported by 54 % of respondents); health system interaction issues (e.g., poor communication with providers, 44 %); limited health-related knowledge (42 %); behavioral health issues (e.g., substance abuse, mental illness, 36 %); denial of illness (27 %); and practical problems (e.g., too busy, 6 %). From these findings, we developed a model to understand an individual’s pathways to a PPH through immediate, precipitating, and underlying factors, which could help identify potential intervention foci. We demonstrate the model’s utility using five examples.

Conclusions

In a young, predominately insured population, factors well outside the traditional purview of the hospital, or even clinical medicine, critically influenced many PPH. Patient perspectives were vital to understanding this issue. Innovative partnerships and policies should address these issues, including linkages to social services and behavioral health.
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Metadata
Title
Pathways to potentially preventable hospitalizations for diabetes and heart failure: a qualitative analysis of patient perspectives
Authors
Tetine L. Sentell
Todd B. Seto
Malia M. Young
May Vawer
Michelle L. Quensell
Kathryn L. Braun
Deborah A. Taira
Publication date
01-12-2016
Publisher
BioMed Central
Published in
BMC Health Services Research / Issue 1/2016
Electronic ISSN: 1472-6963
DOI
https://doi.org/10.1186/s12913-016-1511-6

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