Description
Background: Type II diabetes mellitus (T2DM) is a growing issue globally. Social determinants of health (SDH) play a crucial role on patients’ outcomes and complications from the disease. Hispanics are twice as likely to suffer from T2DM when compared to

Background: Type II diabetes mellitus (T2DM) is a growing issue globally. Social determinants of health (SDH) play a crucial role on patients’ outcomes and complications from the disease. Hispanics are twice as likely to suffer from T2DM when compared to non-Hispanic whites, and they often rely on federally qualified community health centers (FQCHC) for their medical needs. These centers are then faced with high volume of patients with high acuity, which leads to limited time and resources to provide diabetic education. Methods: The Purnell model of cultural competence will be used as a framework to provide unbiased, culturally tailored (CT) education to improve patients’ outcomes. The advancing research and clinical practice through close collaboration (ARCC) model will be used as it focuses on evidence-based practice (EPB) implementation that is sustainable across the system. Purpose: The purpose of this EBP project is to promote culturally tailored (CT) DSME at a low-income FQCHC in greater Phoenix to improve diabetes outcomes and decrease complications from the disease. Consequently, decreasing the costly effects of diabetes complications to patients, FQCHC, and the state of Arizona. Conclusion: Evidence suggest that diabetes self-care management education (DSME) is successful, independent of the format of delivery, in improving diabetes outcomes and patients’ self-care. However, it is underutilized in the United States even though it is a covered Medicare service.
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    Title
    • Culturally Sensitive Diabetes Education for Hispanics
    Date Created
    2021-04-28
    Resource Type
  • Text
  • Collaborating institutions
    College of Nursing and Health Innovation

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