Kim Myungsung, Lee Seonmi, Kim Sieun, Heo Jeong-In, Lee Sangil, Shin Yu-Bin, Cho Chul-Hyun, Jung Dooyoung
Graduate School of Health Science and Technology, Ulsan National Institute of Science and Technology, Ulsan, Republic of Korea.
Department of Biomedical Engineering, Ulsan National Institute of Science and Technology, Ulsan, Republic of Korea.
J Med Internet Res. 2025 Jan 14;27:e65589. doi: 10.2196/65589.
Artificial intelligence (AI) social chatbots represent a major advancement in merging technology with mental health, offering benefits through natural and emotional communication. Unlike task-oriented chatbots, social chatbots build relationships and provide social support, which can positively impact mental health outcomes like loneliness and social anxiety. However, the specific effects and mechanisms through which these chatbots influence mental health remain underexplored.
This study explores the mental health potential of AI social chatbots, focusing on their impact on loneliness and social anxiety among university students. The study seeks to (i) assess the impact of engaging with an AI social chatbot in South Korea, "Luda Lee," on these mental health outcomes over a 4-week period and (ii) analyze user experiences to identify perceived strengths and weaknesses, as well as the applicability of social chatbots in therapeutic contexts.
A single-group pre-post study was conducted with university students who interacted with the chatbot for 4 weeks. Measures included loneliness, social anxiety, and mood-related symptoms such as depression, assessed at baseline, week 2, and week 4. Quantitative measures were analyzed using analysis of variance and stepwise linear regression to identify the factors affecting change. Thematic analysis was used to analyze user experiences and assess the perceived benefits and challenges of chatbots.
A total of 176 participants (88 males, average age=22.6 (SD 2.92)) took part in the study. Baseline measures indicated slightly elevated levels of loneliness (UCLA Loneliness Scale, mean 27.97, SD (11.07)) and social anxiety (Liebowitz Social Anxiety Scale, mean 25.3, SD (14.19)) compared to typical university students. Significant reductions were observed as loneliness decreasing by week 2 (t=2.55, P=.02) and social anxiety decreasing by week 4 (t=2.67, P=.01). Stepwise linear regression identified baseline loneliness (β=0.78, 95% CI 0.67 to 0.89), self-disclosure (β=-0.65, 95% CI -1.07 to -0.23) and resilience (β=0.07, 95% CI 0.01 to 0.13) as significant predictors of week 4 loneliness (R=0.64). Baseline social anxiety (β=0.92, 95% CI 0.81 to 1.03) significantly predicted week 4 anxiety (R=0.65). These findings indicate higher baseline loneliness, lower self-disclosure to the chatbot, and higher resilience significantly predicted higher loneliness at week 4. Additionally, higher baseline social anxiety significantly predicted higher social anxiety at week 4. Qualitative analysis highlighted the chatbot's empathy and support as features for reliability, though issues such as inconsistent responses and excessive enthusiasm occasionally disrupted user immersion.
Social chatbots may have the potential to mitigate feelings of loneliness and social anxiety, indicating their possible utility as complementary resources in mental health interventions. User insights emphasize the importance of empathy, accessibility, and structured conversations in achieving therapeutic goals.
Clinical Research Information Service (CRIS) KCT0009288; https://tinyurl.com/hxrznt3t.
人工智能(AI)社交聊天机器人是技术与心理健康融合方面的一项重大进步,通过自然且富有情感的交流带来益处。与面向任务的聊天机器人不同,社交聊天机器人能够建立人际关系并提供社会支持,这对诸如孤独感和社交焦虑等心理健康结果会产生积极影响。然而,这些聊天机器人影响心理健康的具体效果和机制仍未得到充分探索。
本研究探讨人工智能社交聊天机器人对心理健康的潜在影响,重点关注其对大学生孤独感和社交焦虑的影响。该研究旨在:(i)评估在韩国与人工智能社交聊天机器人“柳达丽”互动四周对这些心理健康结果的影响;(ii)分析用户体验,以确定感知到的优势和劣势,以及社交聊天机器人在治疗环境中的适用性。
对与聊天机器人互动四周的大学生进行单组前后测研究。测量指标包括孤独感、社交焦虑以及抑郁等与情绪相关的症状,在基线、第2周和第4周进行评估。使用方差分析和逐步线性回归对定量测量结果进行分析,以确定影响变化的因素。采用主题分析来分析用户体验,并评估聊天机器人的感知益处和挑战。
共有176名参与者(88名男性,平均年龄 = 22.6(标准差2.92))参与了该研究。基线测量表明,与典型大学生相比,孤独感(加州大学洛杉矶分校孤独量表,均值27.97,标准差(11.07))和社交焦虑(利博维茨社交焦虑量表,均值25.3,标准差(14.19))水平略有升高。观察到显著下降,孤独感在第2周下降(t = 2.55,P = 0.02),社交焦虑在第4周下降(t = 2.67,P = 0.01)。逐步线性回归确定基线孤独感(β = 0.78,95%置信区间0.67至0.89)、自我表露(β = -0.65,95%置信区间 -1.07至 -0.23)和心理韧性(β = 0.07,95%置信区间0.01至0.13)是第4周孤独感的显著预测因素(R = 0.64)。基线社交焦虑(β = 0.92,95%置信区间0.81至1.03)显著预测第4周的焦虑(R = 0.65)。这些发现表明,较高的基线孤独感、对聊天机器人较低的自我表露以及较高的心理韧性显著预测了第4周更高的孤独感。此外,较高基线社交焦虑显著预测了第4周更高的社交焦虑。定性分析强调聊天机器人的同理心和支持是可靠性特征,不过诸如回复不一致和过度热情等问题偶尔会干扰用户沉浸感。
社交聊天机器人可能有减轻孤独感和社交焦虑情绪的潜力,表明它们可能作为心理健康干预中的补充资源具有效用。用户见解强调同理心、可及性和结构化对话对于实现治疗目标的重要性。
临床研究信息服务(CRIS)KCT0009288;https://tinyurl.com/hxrznt3t。