Patient-Reported Decisional Regret After Operative Otolaryngology Procedures: A Scoping Review

LARYNGOSCOPE(2023)

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摘要
Objective: To review the published literature on decisional regret in adult patients undergoing operative otolaryngology procedures. The primary outcome was decisional regret scale (DRS) scores. DRS scores of 0 indicate no regret, 1-25 mild regret, and >25 moderate to strong/severe regret.Data Sources: A comprehensive librarian-designed strategy was used to search MEDLINE, Embase, and CINAHL from inception to September 2023.Review Methods: Inclusion criteria consisted of English-language studies of adult patients who underwent operative otolaryngology treatments and reported DRS scores. Data was extracted by two independent reviewers. Preferred Reporting Items for Systematic Reviews and Meta-analyses Extension for Scoping Reviews (PRISMA-ScR) guidelines were followed. Oxford Centre's Levels of Evidence were used for quality assessment.Results: In total, 6306 studies were screened by two independent reviewers; 13 studies were included after full-text analysis. Subspecialties comprised: Head and neck (10), endocrine (1), general (1), and rhinology (1). The DRS results of the included studies spanned a mean range of 10.1-23.9 or a median range of 0-20.0. There was a trend toward more decisional regret after large head and neck procedures or when patients underwent multiple treatment modalities. Depression, anxiety, and patient-reported quality of life measures were all correlated with decisional regret. Oxford Centre's Levels of Evidence ranged from 2 to 4.Conclusion: This is the first comprehensive review of decisional regret in otolaryngology. The majority of patients had no or mild (DRS <25) decisional regret after otolaryngology treatments. Future research on pre-operative counseling and shared decision-making to further minimize patient decisional regret is warranted.Level of Evidence: N/A Laryngoscope, 2023
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关键词
decisional regret,otolaryngology,otolaryngologic surgery,shared-decision-making
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