Sezgin Emre, McKay Ian
The Abigail Wexner Research Institute at Nationwide Children's Hospital, Columbus, OH, USA.
The Ohio State University College of Medicine, Columbus, OH, USA.
Npj Ment Health Res. 2024 Jun 7;3(1):25. doi: 10.1038/s44184-024-00067-w.
There have been considerable advancements in artificial intelligence (AI), specifically with generative AI (GAI) models. GAI is a class of algorithms designed to create new data, such as text, images, and audio, that resembles the data on which they have been trained. These models have been recently investigated in medicine, yet the opportunity and utility of GAI in behavioral health are relatively underexplored. In this commentary, we explore the potential uses of GAI in the field of behavioral health, specifically focusing on image generation. We propose the application of GAI for creating personalized and contextually relevant therapeutic interventions and emphasize the need to integrate human feedback into the AI-assisted therapeutics and decision-making process. We report the use of GAI with a case study of behavioral therapy on emotional recognition and management with a three-step process. We illustrate image generation-specific GAI to recognize, express, and manage emotions, featuring personalized content and interactive experiences. Furthermore, we highlighted limitations, challenges, and considerations, including the elements of human emotions, the need for human-AI collaboration, transparency and accountability, potential bias, security, privacy and ethical issues, and operational considerations. Our commentary serves as a guide for practitioners and developers to envision the future of behavioral therapies and consider the benefits and limitations of GAI in improving behavioral health practices and patient outcomes.
人工智能(AI),特别是生成式人工智能(GAI)模型已经取得了长足的进步。GAI是一类旨在创建新数据的算法,如文本、图像和音频,这些新数据类似于它们所训练的数据。这些模型最近在医学领域得到了研究,但GAI在行为健康方面的机会和效用相对未得到充分探索。在这篇评论中,我们探讨了GAI在行为健康领域的潜在用途,特别关注图像生成。我们建议应用GAI来创建个性化且与情境相关的治疗干预措施,并强调将人类反馈纳入人工智能辅助治疗和决策过程的必要性。我们通过一个关于情绪识别和管理的行为疗法案例研究报告了GAI的使用情况,该案例研究采用了一个三步过程。我们展示了特定于图像生成的GAI,以识别、表达和管理情绪,其特点是具有个性化内容和互动体验。此外,我们强调了局限性、挑战和注意事项,包括人类情感的要素、人机协作的必要性、透明度和问责制、潜在偏差、安全性、隐私和伦理问题以及操作方面的考虑。我们的评论为从业者和开发者提供了一个指南,以展望行为疗法的未来,并考虑GAI在改善行为健康实践和患者治疗效果方面的益处和局限性。