Louise Hansen, Sarah Sofie Elmer Brandborg, Ulla Bjerre-Christensen, Trine Kjeldgaard Møller, Natasja Bjerre
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The data analysis was inspired by qualitative content analysis.</p><p><strong>Results: </strong>Clinics were positive about project activities and how structured data use enhanced management and patient overview while optimising treatment and prescribing practices. Most clinics experienced workflow improvements, such as nurses taking on more responsibilities and heightened staff skills, knowledge, job satisfaction and confidence in data-driven decision-making, medications and guidelines. However, approximately half of the clinics faced some implementation challenges, including technical issues and time constraints. Furthermore, some raised concerns about overtreatment, data misuse and de-prioritisation of other diagnoses.</p><p><strong>Conclusions: </strong>DataSam emphasises the potential of population data to optimise patient care, though further attention to implementation is needed.</p><p><strong>Funding: </strong>This study received an internal grant from Steno Diabetes. Centre Copenhagen.</p><p><strong>Trial registration: </strong>Registered as \"not required approval\" with the Regional Ethics Committee of the Capital Region (F-22073139).</p>","PeriodicalId":11119,"journal":{"name":"Danish medical journal","volume":"72 10","pages":""},"PeriodicalIF":1.2000,"publicationDate":"2025-09-09","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"General practitioners' experiences of a data-driven quality development process.\",\"authors\":\"Louise Hansen, Sarah Sofie Elmer Brandborg, Ulla Bjerre-Christensen, Trine Kjeldgaard Møller, Natasja Bjerre\",\"doi\":\"10.61409/A12240912\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Introduction: </strong>Research shows that structured data use can optimise treatment in general practice clinics. 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General practitioners' experiences of a data-driven quality development process.
Introduction: Research shows that structured data use can optimise treatment in general practice clinics. This qualitative feasibility study evaluated a one-year intervention (DataSam) to assess whether increased use of population data can enhance type 2 diabetes treatment and workflows in general practice clinics.
Methods: Audio-recordings of visits from 12 clinics at baseline, six and 12 months and end-of-intervention semi-structured interviews (n = 14) explored data use, workflow changes and implementation challenges. The data analysis was inspired by qualitative content analysis.
Results: Clinics were positive about project activities and how structured data use enhanced management and patient overview while optimising treatment and prescribing practices. Most clinics experienced workflow improvements, such as nurses taking on more responsibilities and heightened staff skills, knowledge, job satisfaction and confidence in data-driven decision-making, medications and guidelines. However, approximately half of the clinics faced some implementation challenges, including technical issues and time constraints. Furthermore, some raised concerns about overtreatment, data misuse and de-prioritisation of other diagnoses.
Conclusions: DataSam emphasises the potential of population data to optimise patient care, though further attention to implementation is needed.
Funding: This study received an internal grant from Steno Diabetes. Centre Copenhagen.
Trial registration: Registered as "not required approval" with the Regional Ethics Committee of the Capital Region (F-22073139).
期刊介绍:
The Danish Medical Journal (DMJ) is a general medical journal. The journal publish original research in English – conducted in or in relation to the Danish health-care system. When writing for the Danish Medical Journal please remember target audience which is the general reader. This means that the research area should be relevant to many readers and the paper should be presented in a way that most readers will understand the content.
DMJ will publish the following articles:
• Original articles
• Protocol articles from large randomized clinical trials
• Systematic reviews and meta-analyses
• PhD theses from Danish faculties of health sciences
• DMSc theses from Danish faculties of health sciences.