Generative AI-Derived Information About Opioid Use Disorder Treatment During Pregnancy: An exploratory evaluation of GPT-4's steerability for provision of trustworthy person-centered information.

IF 2.4 3区 医学 Q2 PSYCHOLOGY
Drew Herbert, Jerald Westendorf, Matthew Farmer, Blaine Reeder
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Abstract

Objective: Increasing engagement in evidence-based treatment for opioid use disorder during pregnancy is pressing. Generative artificial intelligence large language model conversational agents may support clinicians in delivering safe, accurate, and relevant information to this population. The central aim of this study was an exploratory evaluation of the steerability of GPT-4 (generative pre-trained transformer) for the provision of trustworthy treatment-related information to pregnant people with opioid use disorder.

Methods: The model was tuned using evidence-based guidelines and tenets of motivational interviewing. A rubric was developed to evaluate the safety, accuracy, and relevance of the tuned model's responses to user messages from the persona of a pregnant woman with an opioid use disorder. Two advanced practice registered nurses with more than 10 years of experience treating people with opioid use disorder independently evaluated the model-persona dialogs (n = 30) using the rubric and qualitative methodology.

Results: Responses were rated as safe, accurate, and relevant in 96.7% of cases. Qualitative analysis identified four increasing connection subthemes, including three related to client-centered communication. In 100% of cases, the model identified congruence with opioid use disorder criteria and located the person within the transtheoretical model's stages of change.

Conclusion: The tuned model generated clinically safe, accurate, and relevant responses about opioid use disorder treatment during pregnancy. Consistent with the progression of informatics study typology, before this model could be embedded in an application to allow direct public access, additional lab- and field-based testing is indicated, including with people with this use disorder.

关于怀孕期间阿片类药物使用障碍治疗的生成人工智能衍生信息:对GPT-4提供可信赖的以人为中心的信息的可操作性的探索性评估。
目的:迫切需要增加对妊娠期间阿片类药物使用障碍的循证治疗。生成式人工智能大语言模型会话代理可以支持临床医生向这一人群提供安全、准确和相关的信息。本研究的中心目的是探索性评估GPT-4(生成预训练变压器)的可操作性,为阿片类药物使用障碍孕妇提供可靠的治疗相关信息。方法:采用循证指导原则和动机性访谈原则对模型进行调整。开发了一个标题来评估调整模型对来自阿片类药物使用障碍孕妇角色的用户信息的响应的安全性,准确性和相关性。两名具有超过10年治疗阿片类药物使用障碍患者经验的高级执业注册护士使用标题和定性方法独立评估了模型-人物对话(n = 30)。结果:96.7%的病例反应被评为安全、准确和相关。定性分析确定了四个日益增长的连接子主题,其中三个与以客户为中心的通信有关。在100%的情况下,该模型确定了与阿片类药物使用障碍标准的一致性,并将人定位在跨理论模型的变化阶段。结论:调整后的模型对妊娠期阿片类药物使用障碍治疗产生了临床安全、准确、相关的反应。与信息学研究类型学的进展一致,在该模型可以嵌入到应用程序中以允许直接公众访问之前,需要进行额外的实验室和现场测试,包括对患有这种使用障碍的人进行测试。
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来源期刊
CiteScore
4.80
自引率
5.90%
发文量
224
审稿时长
3 months
期刊介绍: The Journal of Studies on Alcohol and Drugs began in 1940 as the Quarterly Journal of Studies on Alcohol. It was founded by Howard W. Haggard, M.D., director of Yale University’s Laboratory of Applied Physiology. Dr. Haggard was a physiologist studying the effects of alcohol on the body, and he started the Journal as a way to publish the increasing amount of research on alcohol use, abuse, and treatment that emerged from Yale and other institutions in the years following the repeal of Prohibition in 1933. In addition to original research, the Journal also published abstracts summarizing other published documents dealing with alcohol. At Yale, Dr. Haggard built a large team of alcohol researchers within the Laboratory of Applied Physiology—including E.M. Jellinek, who became managing editor of the Journal in 1941. In 1943, to bring together the various alcohol research projects conducted by the Laboratory, Dr. Haggard formed the Section of Studies on Alcohol, which also became home to the Journal and its editorial staff. In 1950, the Section was renamed the Center of Alcohol Studies.
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