Incorporating Stakeholder Feedback in Guidelines Development for the Management of Abnormal Cervical Cancer Screening Tests.
Journal of lower genital tract disease(2020)SCI 4区
Dept Obstet & Gynecol | H Lee Moffitt Canc Ctr & Res Inst | Northwestern Univ | Ctr Dis Control & Prevent | NCI | Cervivor | Magee Womens Hosp
Abstract
OBJECTIVE:The 2019 ASCCP Risk-Based Management Consensus Guidelines present a paradigm shift from results- to risk-based management. Patient and provider factors can affect guideline adoption. We sought feedback from stakeholders to inform guideline development. MATERIALS AND METHODS:To solicit provider feedback, we surveyed attendees at the 2019 ASCCP annual meeting regarding readiness to adopt proposed changes and used a web-based public comment period to gauge agreement/disagreement with preliminary guidelines. We elicited patient feedback via a brief survey on preferences around proposed recommendations for treatment without biopsy. Surveys and public comment included both closed-ended and free-text items. Quantitative results were analyzed using descriptive statistics; qualitative results were analyzed using content analysis. Results were incorporated into guideline development in real time. RESULTS:Surveys indicated that 98% of providers currently evaluate their patients' past results to determine management; 88% felt formally incorporating history into management would represent an improvement in care. Most providers supported expedited treatment without biopsy: 22% currently perform expedited treatment and 60% were willing to do so. Among patients, 41% preferred expedited treatment, 32% preferred biopsy before treatment, and the remainder were undecided. Responses from the public comment period included agreement/disagreement with preliminary guidelines, reasons for disagreement, and suggestions for improvement. CONCLUSIONS:Stakeholder feedback was incorporated into the development of the 2019 ASCCP Risk-Based Management Consensus Guidelines. Proposed recommendations with less than two-thirds agreement in the public comment period were considered for revision. Findings underscore the importance of stakeholder feedback in developing guidelines that meet the needs of patients and providers.
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consensus guideline development,stakeholder involvement,cervical cancer screening
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