Kosyluk Kristin, Baeder Tanner, Greene Karah Yeona, Tran Jennifer T, Bolton Cassidy, Loecher Nele, DiEva Daniel, Galea Jerome T
Department of Mental Health Law & Policy, University of South Florida, Tampa, FL, United States.
School of Social Work, University of South Florida, Tampa, FL, United States.
JMIR Form Res. 2024 Apr 12;8:e45959. doi: 10.2196/45959.
For almost two decades, researchers and clinicians have argued that certain aspects of mental health treatment can be removed from clinicians' responsibilities and allocated to technology, preserving valuable clinician time and alleviating the burden on the behavioral health care system. The service delivery tasks that could arguably be allocated to technology without negatively impacting patient outcomes include screening, triage, and referral.
We pilot-tested a chatbot for mental health screening and referral to understand the relationship between potential users' demographics and chatbot use; the completion rate of mental health screening when delivered by a chatbot; and the acceptability of a prototype chatbot designed for mental health screening and referral. This chatbot not only screened participants for psychological distress but also referred them to appropriate resources that matched their level of distress and preferences. The goal of this study was to determine whether a mental health screening and referral chatbot would be feasible and acceptable to users.
We conducted an internet-based survey among a sample of US-based adults. Our survey collected demographic data along with a battery of measures assessing behavioral health and symptoms, stigma (label avoidance and perceived stigma), attitudes toward treatment-seeking, readiness for change, and technology readiness and acceptance. Participants were then offered to engage with our chatbot. Those who engaged with the chatbot completed a mental health screening, received a distress score based on this screening, were referred to resources appropriate for their current level of distress, and were asked to rate the acceptability of the chatbot.
We found that mental health screening using a chatbot was feasible, with 168 (75.7%) of our 222 participants completing mental health screening within the chatbot sessions. Various demographic characteristics were associated with a willingness to use the chatbot. The participants who used the chatbot found it to be acceptable. Logistic regression produced a significant model with perceived usefulness and symptoms as significant positive predictors of chatbot use for the overall sample, and label avoidance as the only significant predictor of chatbot use for those currently experiencing distress.
Label avoidance, the desire to avoid mental health services to avoid the stigmatized label of mental illness, is a significant negative predictor of care seeking. Therefore, our finding regarding label avoidance and chatbot use has significant public health implications in terms of facilitating access to mental health resources. Those who are high on label avoidance are not likely to seek care in a community mental health clinic, yet they are likely willing to engage with a mental health chatbot, participate in mental health screening, and receive mental health resources within the chatbot session. Chatbot technology may prove to be a way to engage those in care who have previously avoided treatment due to stigma.
近二十年来,研究人员和临床医生一直认为,心理健康治疗的某些方面可以从临床医生的职责中分离出来,交由技术承担,这样既能节省临床医生的宝贵时间,又能减轻行为健康护理系统的负担。在不负面影响患者治疗效果的前提下,可以交由技术完成的服务提供任务包括筛查、分诊和转诊。
我们对一款用于心理健康筛查和转诊的聊天机器人进行了试点测试,以了解潜在用户的人口统计学特征与聊天机器人使用之间的关系;聊天机器人进行心理健康筛查的完成率;以及一款专为心理健康筛查和转诊设计的原型聊天机器人的可接受性。这款聊天机器人不仅能对参与者进行心理困扰筛查,还能将他们转介到与其困扰程度和偏好相匹配的合适资源。本研究的目的是确定一款心理健康筛查和转诊聊天机器人对用户来说是否可行且可接受。
我们对一组美国成年人进行了基于网络的调查。我们的调查收集了人口统计学数据以及一系列评估行为健康和症状、耻辱感(避免标签化和感知到的耻辱感)、寻求治疗的态度、改变意愿以及技术准备度和接受度的指标。然后邀请参与者与我们的聊天机器人互动。与聊天机器人互动的参与者完成了心理健康筛查,根据此次筛查获得了一个困扰分数,被转介到与其当前困扰程度相匹配的资源,并被要求对聊天机器人的可接受性进行评分。
我们发现使用聊天机器人进行心理健康筛查是可行的,在我们的222名参与者中,有168名(75.7%)在聊天机器人会话中完成了心理健康筛查。各种人口统计学特征与使用聊天机器人的意愿相关。使用聊天机器人的参与者认为它是可接受的。逻辑回归分析得出了一个显著模型,对于总体样本而言,感知有用性和症状是聊天机器人使用的显著正向预测因素,而对于当前正在经历困扰的人来说,避免标签化是聊天机器人使用的唯一显著预测因素。
避免标签化,即希望避免使用心理健康服务以避免贴上精神疾病的耻辱标签,是寻求治疗的一个显著负向预测因素。因此,我们关于避免标签化与聊天机器人使用的发现对于促进获取心理健康资源具有重大的公共卫生意义。那些高度避免标签化的人不太可能在社区心理健康诊所寻求治疗,但他们可能愿意与心理健康聊天机器人互动,参与心理健康筛查,并在聊天机器人会话中获得心理健康资源。聊天机器人技术可能被证明是一种让那些因耻辱感而此前一直避免治疗的人接受治疗的方式。