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患有阿片类药物使用障碍的个体与其移动健康电子教练之间的短信交流:内容分析研究。

Text Messages Exchanged Between Individuals With Opioid Use Disorder and Their mHealth e-Coaches: Content Analysis Study.

作者信息

Ranjit Yerina S, Davis Warren M, Fentem Andrea, Riordan Raven, Roscoe Rikki, Cavazos-Rehg Patricia

机构信息

Department of Communication, University of Missouri, Columbia, MO, United States.

Department of Psychiatry, Washington University School of Medicine in St Louis, St Louis, MO, United States.

出版信息

JMIR Hum Factors. 2023 Mar 10;10:e37351. doi: 10.2196/37351.

Abstract

BACKGROUND

Opioid use disorder (OUD) has affected 2.2 million people in the United States. About 7.2 million people reported using illicit drugs in 2019, which contributed to over 70,000 overdose deaths. SMS text messaging interventions have been shown to be effective in OUD recovery. However, the interpersonal communication between individuals in OUD treatment and a support team on digital platforms has not been well examined.

OBJECTIVE

This study aims to understand the communication between participants undergoing OUD recovery and their e-coaches by examining the SMS text messages exchanged from the lens of social support and the issues related to OUD treatment.

METHODS

A content analysis of messages exchanged between individuals recovering from OUD and members of a support team was conducted. Participants were enrolled in a mobile health intervention titled "uMAT-R," a primary feature of which is the ability for patients to instantly connect with a recovery support staff or an "e-coach" via in-app messaging. Our team analyzed dyadic text-based messages of over 12 months. In total, 70 participants' messages and 1196 unique messages were analyzed using a social support framework and OUD recovery topics.

RESULTS

Out of 70 participants, 44 (63%) were between the ages of 31 and 50 years, 47 (67%) were female, 41 (59%) were Caucasian, and 42 (60%) reported living in unstable housing conditions. An average of 17 (SD 16.05) messages were exchanged between each participant and their e-coach. Out of 1196 messages, 64% (n=766) messages were sent by e-coaches and 36% (n=430) by participants. Messages of emotional support occurred the most, with 196 occurrences (n=9, 0.8%) and e-coaches (n=187, 15.6%). Messages of material support had 110 occurrences (participants: n=8, 0.7%; e-coaches: n=102, 8.5%). With OUD recovery topics, opioid use risk factors appeared in most (n=72) occurrences (patient: n=66, 5.5%; e-coach: n=6, 0.5%), followed by a message of avoidance of drug use 3.9% (n=47), which occurred mainly from participants. Depression was correlated with messages of social support (r=0.27; P=.02).

CONCLUSIONS

Individuals with OUD who had mobile health needs tended to engage in instant messaging with the recovery support staff. Participants who are engaged in messaging often engage in conversations around risk factors and avoidance of drug use. Instant messaging services can be instrumental in providing the social and educational support needs of individuals recovering from OUD.

摘要

背景

阿片类药物使用障碍(OUD)在美国影响了220万人。2019年约有720万人报告使用非法药物,这导致了超过7万例过量用药死亡。短信干预已被证明对OUD康复有效。然而,OUD治疗中的个体与数字平台上的支持团队之间的人际沟通尚未得到充分研究。

目的

本研究旨在通过从社会支持的角度检查交换的短信以及与OUD治疗相关的问题,了解正在进行OUD康复的参与者与其电子教练之间的沟通。

方法

对从OUD康复的个体与支持团队成员之间交换的信息进行了内容分析。参与者参加了一项名为“uMAT - R”的移动健康干预,其主要特点是患者能够通过应用内消息即时与康复支持人员或“电子教练”联系。我们的团队分析了超过12个月的基于文本的二元消息。总共使用社会支持框架和OUD康复主题分析了70名参与者的消息和1196条独特消息。

结果

在70名参与者中,44名(63%)年龄在31至50岁之间,47名(67%)为女性,41名(59%)为白人,42名(60%)报告生活在不稳定的住房条件下。每个参与者与其电子教练之间平均交换了17条(标准差16.05)消息。在1196条消息中,64%(n = 766)的消息由电子教练发送,36%(n = 430)由参与者发送。情感支持消息出现的次数最多,有196次(参与者:n = 9,0.8%;电子教练:n = 187,15.6%)。物质支持消息有110次(参与者:n = 8,0.7%;电子教练:n = 102,8.5%)。关于OUD康复主题,阿片类药物使用风险因素出现的次数最多(n = 72)(患者:n = 66,5.5%;电子教练:n = 6,0.5%),其次是避免药物使用的消息3.9%(n = 47),主要由参与者发送。抑郁与社会支持消息相关(r = 0.27;P = 0.02)。

结论

有移动健康需求的OUD个体倾向于与康复支持人员进行即时消息交流。参与消息交流的参与者经常围绕风险因素和避免药物使用进行对话。即时消息服务有助于满足从OUD康复的个体的社会和教育支持需求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8de8/10039403/a3b2058045c6/humanfactors_v10i1e37351_fig1.jpg

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