Intelligent Technology Innovation Lab, Victoria University, Melbourne, Victoria, Australia.
PLoS One. 2023 Feb 3;18(2):e0279743. doi: 10.1371/journal.pone.0279743. eCollection 2023.
Artificial intelligence (AI) has gained momentum in behavioural health interventions in recent years. However, a limited number of studies use or apply such methodologies in the early detection of depression. A large population needing psychological-intervention is left unidentified due to barriers such as cost, location, stigma and a global shortage of health workers. Therefore, it is essential to develop a mass screening integrative approach that can identify people with depression at its early stage to avoid a potential crisis.
This study aims to understand the feasibility and efficacy of using AI-enabled chatbots in the early detection of depression.
We use Dialogflow as a conversation interface to build a Depression Analysisn (DEPRA) chatbot. A structured and authoritative early detection depression interview guide, which contains 27 questions combining the structured interview guide for the Hamilton Depression Scale (SIGH-D) and the inventory of depressive symptomatology (IDS-C), underpins the design of the conversation flow. To attain better accuracy and a wide variety of responses, we train Dialogflow with the utterances collected from a focus group of 10 people. The occupation of the focus group members included academics and HDR candidates who are conscious, vigilant and have a clear understanding of the questions. In addition, DEPRA is integrated with a social media platform to provide practical access to all the participants. For the non-clinical trial, we recruited 50 participants aged between 18 and 80 from across Australia. To evaluate the practicability and performance of DEPRA, we also asked participants to submit a user satisfaction survey at the end of the conversation.
A sample of 50 participants, with an average age of 34.7 years, completed this non-clinical trial. More than half of the participants (54%) are male and the major ethnicities are Asian (63%), Middle Eastern (25%), and others 12%. The first group comprises professional academic staff and HDR candidates, the second and third groups comprise relatives, friends, and volunteers who were recruited via social media promotions. DEPRA uses two scientific scoring systems, QIDS-SR and IDS-SR to verify the results of early depression detection. As the results indicate, both scoring systems return a similar outcome with slight variations for different depression levels. According to IDS-SR, 30% of participants were healthy, 14% mild, 22% moderate, 14% severe, and 20% very severe. QIDS-SR suggests 32% were healthy, 18% mild, 10% moderate, 18% severe, and 22% very severe. Furthermore, the overall satisfaction rate of using DEPRA was 79% indicating that the participants had a high rate of user satisfaction and engagement.
DEPRA shows promises as a feasible option for developing a mass screening integrated approach for early detection of depression. Although the chatbot is not intended to replace the functionality of mental health professionals, it does show promise as a means of assisting with automation and concealed communication with verified scoring systems.
近年来,人工智能(AI)在行为健康干预措施中得到了广泛关注。然而,只有少数研究使用或应用了这些方法来早期检测抑郁症。由于成本、地点、耻辱感和全球卫生工作者短缺等障碍,大量需要心理干预的人群未被发现。因此,开发一种可以在早期识别抑郁症的大规模筛查综合方法至关重要,以避免潜在的危机。
本研究旨在了解使用 AI 支持的聊天机器人早期检测抑郁症的可行性和效果。
我们使用 Dialogflow 作为对话界面来构建一个名为 Depression Analysisn(DEPRA)的聊天机器人。该设计基于一个结构化和权威的早期检测抑郁症访谈指南,该指南结合了 Hamilton Depression Scale(SIGH-D)的结构化访谈指南和抑郁症状清单(IDS-C),包含 27 个问题。为了获得更好的准确性和更广泛的响应,我们使用由 10 名研究对象组成的焦点小组的话语来训练 Dialogflow。焦点小组的成员包括学者和 HDR 候选人,他们具有意识、警觉和对问题的清晰理解。此外,DEPRA 与社交媒体平台集成,为所有参与者提供实际的访问途径。在非临床试验中,我们从澳大利亚各地招募了 50 名年龄在 18 至 80 岁之间的参与者。为了评估 DEPRA 的实用性和性能,我们还要求参与者在对话结束后提交用户满意度调查。
共有 50 名参与者完成了这项非临床试验,平均年龄为 34.7 岁。超过一半的参与者(54%)是男性,主要种族为亚洲(63%)、中东(25%)和其他(12%)。第一组由专业学术人员和 HDR 候选人组成,第二组和第三组由通过社交媒体推广招募的亲戚、朋友和志愿者组成。DEPRA 使用两种科学评分系统,QIDS-SR 和 IDS-SR 来验证早期抑郁症检测结果。结果表明,这两种评分系统都返回了相似的结果,但不同的抑郁水平略有差异。根据 IDS-SR,30%的参与者为健康,14%为轻度,22%为中度,14%为重度,20%为非常重度。QIDS-SR 则表明 32%为健康,18%为轻度,10%为中度,18%为重度,22%为非常重度。此外,使用 DEPRA 的总体满意度率为 79%,表明参与者的用户满意度和参与度很高。
DEPRA 作为一种可行的选择,为开发大规模筛查综合方法早期检测抑郁症提供了希望。尽管该聊天机器人并非旨在替代心理健康专业人员的功能,但它确实有望作为一种自动化和与经过验证的评分系统进行隐蔽通信的手段。