基于人工智能的心理治疗:可用性、个性化和治疗进展感知的定性探索。

IF 2 Q3 PSYCHIATRY
Mirza Jahanzeb Beg, Manish Kumar Verma
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引用次数: 0

摘要

背景:基于人工智能的心理治疗应用程序提供了可访问性和结构化干预,但在情感深度、个性化、参与度和伦理问题方面面临挑战。这项研究批判性地考察了用户体验,确定了关键优势、限制和需要改进的领域。方法:采用定性方法,对17名参与者(18-45岁)进行半结构化访谈的主题分析,这些参与者使用基于人工智能的心理治疗应用程序至少四周。10名参与者有先前的临床诊断(如焦虑、抑郁、适应障碍),而其他人报告亚临床心理困扰。用户持续时间从2个月到11个月不等,大多数人每周使用2到5次。结果:出现了十个核心主题,揭示了可及性与治疗深度的矛盾。虽然用户重视即时性和匿名性,但他们在支离破碎的治疗叙述、脚本化的同理心和个性化的算法停滞中挣扎。过度依赖CBT框架限制了对不同情感需求的适应性,而语言和文化的微侵犯导致了脱离接触。隐私问题源于感知风险和实际风险之间的不匹配,人工智能引发的依赖引发了关于用户自主权的伦理问题。结论:人工智能心理治疗必须通过整合情感反应、文化适应和道德负责的人工智能模型,超越静态、标准化的干预。增强治疗连续性、适应性学习和人类-人工智能混合模型可以弥合可访问性和真实参与之间的差距。这些发现为未来人工智能驱动的心理健康创新提供了信息,确保它们符合心理、道德和文化期望。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence-based Psychotherapy: A Qualitative Exploration of Usability, Personalization, and the Perception of Therapeutic Progress.

Background: AI-based psychotherapy apps offer accessibility and structured interventions but face challenges regarding emotional depth, personalization, engagement, and ethical concerns. This study critically examines user experiences, identifying key advantages, limitations, and areas for refinement.

Methods: A qualitative approach was employed, using thematic analysis of semi-structured interviews with 17 participants (aged 18-45) who had used AI-based psychotherapy apps for at least four weeks. Ten participants had prior clinical diagnoses (e.g., anxiety, depression, adjustment disorder), while others reported subclinical psychological distress. Engagement duration ranged from 2 to 11 months, with most using the apps two to five times per week.

Results: Ten core themes emerged, revealing a paradox of accessibility versus therapeutic depth. While users valued immediacy and anonymity, they struggled with fragmented therapeutic narratives, scripted empathy, and algorithmic stagnation in personalization. The over-reliance on CBT frameworks limited adaptability to diverse emotional needs, while linguistic and cultural microaggressions led to disengagement. Privacy concerns stemmed from a mismatch between perceived and actual risks, and AI-induced dependence raised ethical questions about user autonomy.

Conclusions: The AI psychotherapy must evolve beyond static, standardized interventions by integrating emotionally responsive, culturally adaptive, and ethically responsible AI models. Enhancing therapeutic continuity, adaptive learning, and human-AI hybrid models can bridge the gap between accessibility and authentic engagement. These findings inform future AI-driven mental health innovations, ensuring they align with psychological, ethical, and cultural expectations.

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来源期刊
CiteScore
4.80
自引率
7.10%
发文量
116
审稿时长
12 weeks
期刊介绍: The Indian Journal of Psychological Medicine (ISSN 0253-7176) was started in 1978 as the official publication of the Indian Psychiatric Society South Zonal Branch. The journal allows free access (Open Access) and is published Bimonthly. The Journal includes but is not limited to review articles, original research, opinions, and letters. The Editor and publisher accept no legal responsibility for any opinions, omissions or errors by the authors, nor do they approve of any product advertised within the journal.
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