El-Bassel Nabila, David James L, Aragundi Eric, Walters Scott T, Wu Elwin, Gilbert Louisa, Chandler Redonna, Hunt Tim, Frye Victoria, Campbell Aimee N C, Goddard-Erich Dawn A, Chen Marc, Davé Parixit, Benjamin Shoshana N, Lounsbury David, Sabounchi Nasim, Aggarwal Maneesha, Feaster Dan, Huang Terry, Zheng Tian
Columbia University School of Social Work (NEB, JLD, EW, LG, TH, VF, DAGE, SNB); Department of Statistics Columbia University (EA, TZ); School of Public Health at the University of North Texas Health Science Center (STW); National Institute on Drug Abuse (RC); Department of Psychiatry, Columbia University Irving Medical Center, New York State Psychiatric Institute (ANCC); Columbia University Information Technology (MC, PD, MA); Albert Einstein College of Medicine (DL); City University of New York School of Public Health (NS, TH); Department of Public Health Sciences, Biostatistics, University of Miami (DF).
J Addict Med. 2025 Jun 26. doi: 10.1097/ADM.0000000000001534.
This paper describes how artificial intelligence (AI) was used to analyze meeting minutes from community coalitions participating in the HEALing Communities Study. We examined how often coalitions discussed stigma when selecting evidence-based practices (EBPs), variations in stigma-related discussions across coalitions, how these discussions addressed race, ethnicity, and racial inequity, and whether the frequency of stigma discussions was associated with the proportion of minoritized populations in each community.
We used Natural Language Processing, Machine Learning, and Large Language Models, employing ChatGPT Enterprise to code data, ensuring data security and privacy compliance with the General Data Protection Regulation and HIPAA.
Community coalitions varied in the extent to which they discussed stigma during meetings focused on EBPs to reduce overdose deaths. Stigma was mentioned more frequently in the context of medication for opioid use disorder compared with other EBPs. As the percentage of racial/ethnic minority populations increased in a county, so did the strength of the association between discussions of EBPs and stigma. Counties with a greater proportion of racial/ethnic minority populations were more likely to integrate discussions of EBPs with stigma-related issues. Specifically, discussions about stigma were ~57% more likely to occur when racial or ethnic disparities were mentioned, compared with when they were not (odds ratio=1.57; 95% CI: 1.22, 2.03).
The paper highlights the potential for integrating AI-human collaboration into community-engaged research, particularly in leveraging qualitative data such as meeting minutes. It shows how AI can be used in real-time to enhance community-based research.
本文描述了如何使用人工智能(AI)来分析参与“治愈社区研究”的社区联盟的会议记录。我们研究了联盟在选择循证实践(EBP)时讨论耻辱感的频率、各联盟之间耻辱感相关讨论的差异、这些讨论如何涉及种族、族裔和种族不平等,以及耻辱感讨论的频率是否与每个社区中少数族裔人口的比例相关。
我们使用自然语言处理、机器学习和大语言模型,利用ChatGPT Enterprise对数据进行编码,确保数据安全和隐私符合《通用数据保护条例》和《健康保险流通与责任法案》。
社区联盟在专注于减少过量用药死亡的循证实践会议上讨论耻辱感的程度各不相同。与其他循证实践相比,在阿片类药物使用障碍药物治疗的背景下,耻辱感被提及的频率更高。随着一个县中种族/族裔少数群体人口百分比的增加,循证实践讨论与耻辱感之间的关联强度也随之增加。种族/族裔少数群体人口比例较高的县更有可能将循证实践讨论与耻辱感相关问题结合起来。具体而言,与未提及种族或族裔差异时相比,提及种族或族裔差异时发生耻辱感讨论的可能性高出约57%(优势比=1.57;95%置信区间:1.22,2.03)。
本文强调了将人工智能与人类协作整合到社区参与研究中的潜力,特别是在利用会议记录等定性数据方面。它展示了如何实时使用人工智能来加强基于社区的研究。