Problem-Solving Court Staff Preferences for Educational Videos about Medications for Opioid Use Disorder

SUBSTANCE USE & MISUSE(2023)

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摘要
BackgroundProblem-solving courts use an interdisciplinary approach with treatment mandates, hearings, and monitoring to rehabilitate individuals arrested for drug-related crimes or lost custody of children due to drug use. Medications for opioid use disorder (MOUD) are the standard of care for treating opioid use disorder (OUD), but few problem-solving court clients with OUD are referred to MOUD. Previous studies found court staff often harbor misconceptions about MOUD and could benefit from MOUD education. Tailoring education to the intended audience is an educational best practice. We sought to identify content and style preferences for two MOUD education videos: 1) an introduction to MOUD and, 2) MOUD myths/misconceptions.MethodsWe recruited 40 Florida problem-solving court staff. Using semi-structured interviews, invited document/script edits, and qualitative surveys, we collected data at each of four video development stages. We used template analysis for qualitative data.ResultsCourt staff desired the following content: OUD as a chronic brain condition and MOUD as an effective response; MOUD risks and benefits; how MOUD is accessed; and the appropriate role of court staff with MOUD decisions. Style preferences were: no juvenile/cutesy animation; relatable characters/environments; simple concept illustration; individualizing the learning experience; and combinations of scientific animated videos and successful stakeholder interviews.DiscussionOur findings reinforce the importance of tailoring MOUD education to the audience. Court staff's wish for education about their appropriate role with MOUD reflects their unique position making treatment referrals. Court staff's desire for stakeholder recordings of success stories mirrors the importance of opinion leaders in other dissemination studies.
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关键词
Medications for opioid use disorder,problem-solving court,education,drug court,qualitative,survey
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