A Generic Review of Integrating Artificial Intelligence in Cognitive Behavioral Therapy
- URL: http://arxiv.org/abs/2407.19422v1
- Date: Sun, 28 Jul 2024 08:09:46 GMT
- Title: A Generic Review of Integrating Artificial Intelligence in Cognitive Behavioral Therapy
- Authors: Meng Jiang, Qing Zhao, Jianqiang Li, Fan Wang, Tianyu He, Xinyan Cheng, Bing Xiang Yang, Grace W. K. Ho, Guanghui Fu,
- Abstract summary: We review the literature on integrating AI into Cognitive Behavioral Therapy interventions.
We discuss the benefits and current limitations of applying AI to CBT.
The transformative potential of AI in reshaping the practice of CBT heralds a new era of more accessible, efficient, and personalized mental health interventions.
- Score: 27.348132451928535
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Cognitive Behavioral Therapy (CBT) is a well-established intervention for mitigating psychological issues by modifying maladaptive cognitive and behavioral patterns. However, delivery of CBT is often constrained by resource limitations and barriers to access. Advancements in artificial intelligence (AI) have provided technical support for the digital transformation of CBT. Particularly, the emergence of pre-training models (PTMs) and large language models (LLMs) holds immense potential to support, augment, optimize and automate CBT delivery. This paper reviews the literature on integrating AI into CBT interventions. We begin with an overview of CBT. Then, we introduce the integration of AI into CBT across various stages: pre-treatment, therapeutic process, and post-treatment. Next, we summarized the datasets relevant to some CBT-related tasks. Finally, we discuss the benefits and current limitations of applying AI to CBT. We suggest key areas for future research, highlighting the need for further exploration and validation of the long-term efficacy and clinical utility of AI-enhanced CBT. The transformative potential of AI in reshaping the practice of CBT heralds a new era of more accessible, efficient, and personalized mental health interventions.
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