Description
Medicare implemented a yearly Annual Wellness Visit (AWV) to improve quality patient care through early detection of declining health. However, there has been only partial provider participation since its inception, which potentially delays treatment and negatively impacts patient outcomes. The

Medicare implemented a yearly Annual Wellness Visit (AWV) to improve quality patient care through early detection of declining health. However, there has been only partial provider participation since its inception, which potentially delays treatment and negatively impacts patient outcomes. The aim of this quality improvement project was to assess the feasibility of implementing a standardized electronic AWV template into private primary care practices to improve the consistency of delivery and documentation. The project designer utilized the theory of transitions (TOT) to facilitate the project execution. An electronic Excel-based template was designed to capture and calculate all aspects of the AWV, including billing codes, to allow for ease and consistency of use within a small primary care practice over two weeks. A provider performed the AWVs using the electronic template after completing a hands-on tutorial and reviewing an educational handout. Data were retrieved from a 7-question, 5-point Likert scale questionnaire given to the provider to assess the effectiveness of the electronic template versus a paper assessment. The results of this study indicated overall satisfaction with using leveraged technology to provide consistency of AWVs to improve patient outcomes, provider satisfaction, and increase revenue through uniform charting and billing. The outcomes of this project provide a basis of existing evidence for using standardized methods to perform and track Medicare AWVs.
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    Details

    Title
    • Improving Patient Outcomes and Private Practice Profitability
    Date Created
    2022-04-29
    Resource Type
  • Text
  • Collaborating institutions
    College of Nursing and Health Innovation

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