Tan Miaoqing, Xiao Yanning, Jing Fengshi, Xie Yewei, Lu Sanmei, Xiang Mingqiang, Ren Hao
Guangzhou Sport University, Guangzhou, China.
China Swimming College, Beijing Sport University, Beijing, China.
Front Psychiatry. 2024 Jan 15;15:1352420. doi: 10.3389/fpsyt.2024.1352420. eCollection 2024.
Mental illnesses represent a significant global health challenge, affecting millions with far-reaching social and economic impacts. Traditional exercise prescriptions for mental health often adopt a one-size-fits-all approach, which overlooks individual variations in mental and physical health. Recent advancements in artificial intelligence (AI) offer an opportunity to tailor these interventions more effectively.
This study aims to develop and evaluate a multimodal data-driven AI system for personalized exercise prescriptions, targeting individuals with mental illnesses. By leveraging AI, the study seeks to overcome the limitations of conventional exercise regimens and improve adherence and mental health outcomes.
The study is conducted in two phases. Initially, 1,000 participants will be recruited for AI model training and testing, with 800 forming the training set, augmented by 9,200 simulated samples generated by ChatGPT, and 200 as the testing set. Data annotation will be performed by experienced physicians from the Department of Mental Health at Guangdong Second Provincial General Hospital. Subsequently, a randomized controlled trial (RCT) with 40 participants will be conducted to compare the AI-driven exercise prescriptions against standard care. Assessments will be scheduled at 6, 12, and 18 months to evaluate cognitive, physical, and psychological outcomes.
The AI-driven system is expected to demonstrate greater effectiveness in improving mental health outcomes compared to standard exercise prescriptions. Personalized exercise regimens, informed by comprehensive data analysis, are anticipated to enhance participant adherence and overall mental well-being. These outcomes could signify a paradigm shift in exercise prescription for mental health, paving the way for more personalized and effective treatment modalities.
This is approved by Human Experimental Ethics Inspection of Guangzhou Sport University, and the registration is under review by ChiCTR.
精神疾病是一项重大的全球健康挑战,影响着数百万人,具有深远的社会和经济影响。传统的心理健康运动处方通常采用一刀切的方法,忽视了心理健康和身体健康的个体差异。人工智能(AI)的最新进展为更有效地定制这些干预措施提供了机会。
本研究旨在开发和评估一种多模态数据驱动的人工智能系统,用于为患有精神疾病的个体制定个性化运动处方。通过利用人工智能,该研究旨在克服传统运动方案的局限性,提高依从性和心理健康结果。
该研究分两个阶段进行。最初,将招募1000名参与者进行人工智能模型训练和测试,其中800名组成训练集,并由ChatGPT生成的9200个模拟样本进行扩充,200名作为测试集。数据标注将由广东省第二人民医院精神卫生科的经验丰富的医生进行。随后,将对40名参与者进行随机对照试验(RCT),以比较人工智能驱动的运动处方与标准护理。评估将安排在6个月、12个月和18个月时进行,以评估认知、身体和心理结果。
与标准运动处方相比,预计人工智能驱动的系统在改善心理健康结果方面将表现出更高的有效性。通过全面数据分析得出的个性化运动方案有望提高参与者的依从性和整体心理健康水平。这些结果可能标志着心理健康运动处方的范式转变,为更个性化和有效的治疗方式铺平道路。
本研究已获得广州体育大学人体实验伦理审查批准,注册正在中国临床试验注册中心审核中。