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Mobile Peer-Support for Opioid Use Disorders: Refinement of an Innovative Machine Learning Tool ?

机译:Mobile Peer-Support for OpioID使用障碍:改进创新机器学习工具?

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Background: The majority of individuals with Opioid Use Disorder (OUD) do not receive any formal substance use treatment. Due to limited engagement and access to traditional treatment, there is increasing evidence that patients with OUDs turn to online social platforms to access peer support and obtain health-related information about addiction and recovery. Interacting with peers before and during recovery is a key component of many evidence-based addiction recovery programs, and may improve self-efficacy and treatment engagement as well as reduce relapse. Commonly-used online social platforms are limited in utility and scalability as an adjunct to addiction treatment; lack effective content moderation (e.g., misinformed advice, maliciousness or “trolling”); and lack common security and ethical safeguards inherent to clinical care. Methods: This present study will develop a novel, artificial-intelligence (AI) enabled, mobile treatment delivery method that fulfills the need for a robust, secure, technology-based peer support platform to support patients with OUD. Forty adults receiving outpatient buprenorphine treatment for OUD will be asked to pilot a smartphone-based mobile peer support application, the “Marigold App”, for a duration of six weeks. The program will use (1) a prospective cohort study to obtain text message content and feasibility metrics, and (2) qualitative interviews to evaluate usability and acceptability of the mobile platform. Anticipated findings and future directions: The Marigold mobile platform will allow patients to access a tailored chat support group 24/7 as a complement to different forms of clinical OUD treatment. Marigold can keep groups safe and constructive by augmenting chats with AI tools capable of understanding the emotional sentiment in messages, automatically “flagging” critical or clinically relevant content. This project will demonstrate the robustness of these AI tools by adapting them to catch OUD-specific “flags” in peer messages while also examining the adoptability of the platform itself within OUD patients.
机译:背景:大多数具有阿片类药物使用障碍(Oud)的个体不会收到任何正式的物质使用治疗。由于有限的参与和进入传统治疗,越来越多的证据表明,ouds患者转向在线社交平台,以访问同行支持并获得有关成瘾和恢复的健康信息。在恢复之前和期间与对等体进行互动是许多基于证据的成瘾恢复计划的关键组成部分,并且可以改善自我效能和治疗接合以及减少复发。常用的在线社交平台有限公司的效用和可扩展性作为成瘾治疗的辅助性;缺乏有效的内容审核(例如,错误信息的建议,恶意或“拖钓”);并缺乏临床护理固有的共同安全和伦理保障。方法:本研究将开发一种新颖的人工智能(AI),移动治疗送货方式,满足了对支持oud患者的强大,安全,技术的对等支持平台的需求。将被要求将门诊Buprenorphine治疗的四十个成年人能够试用智能手机的移动对等体支持应用程序,“万寿菊应用程序”,持续六周。该计划将使用(1)潜在的队列研究,以获得文本消息内容和可行性度量,以及(2)定性访谈,以评估移动平台的可用性和可接受性。预期的调查结果和未来的方向:万寿菊移动平台将允许患者获得定制聊天支持组24/7作为不同形式的临床询问治疗的补充。万寿菊可以通过使用能够理解消息中的情绪情绪的AI工具来保持群组安全和建设性,自动“标记”关键或临床相关内容。该项目将通过调整对等消息中的oud特定的“标志”来展示这些AI工具的鲁棒性,同时还在oud患者中检查平台本身的可采力。

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