一个用于睡眠和健身指导的个人健康大语言模型

IF 50 1区 医学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Justin Khasentino, Anastasiya Belyaeva, Xin Liu, Zhun Yang, Nicholas A. Furlotte, Chace Lee, Erik Schenck, Yojan Patel, Jian Cui, Logan Douglas Schneider, Robby Bryant, Ryan G. Gomes, Allen Jiang, Roy Lee, Yun Liu, Javier Perez, Jameson K. Rogers, Cathy Speed, Shyam Tailor, Megan Walker, Jeffrey Yu, Tim Althoff, Conor Heneghan, John Hernandez, Mark Malhotra, Leor Stern, Yossi Matias, Greg S. Corrado, Shwetak Patel, Shravya Shetty, Jiening Zhan, Shruthi Prabhakara, Daniel McDuff, Cory Y. McLean
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引用次数: 0

摘要

尽管大型语言模型(llm)在临床医疗保健应用中显示出前景,但它们在使用可穿戴设备数据进行个性化健康监测方面的效用仍未得到充分探索。在这里,我们介绍了个人健康大语言模型(PH-LLM),专为睡眠和健身应用而设计。PH-LLM是Gemini LLM的一个版本,在应用于聚合的日分辨率数值传感器数据时,对文本理解和推理进行了微调。我们创建了三个基准数据集来评估睡眠和健康的多个互补方面:专家领域知识、个性化见解和建议的生成以及从纵向数据中预测自我报告的睡眠质量。在睡眠医学(79%对76%)和健身(88%对71%)的多项选择题考试中,PH-LLM的得分超过了人类专家样本。在一项涉及857个真实案例研究的综合评估中,PH-LLM在健身相关任务上的表现与人类专家相似,并在提供个性化睡眠见解方面优于Gemini基本模型。最后,PH-LLM利用可穿戴传感器数据的多模态编码有效地预测了自我报告的睡眠质量,进一步证明了其有效情境化可穿戴模式的能力。这项工作突出了LLM的潜力,通过定制的见解和可穿戴数据的预测来彻底改变个人健康监测,并提供数据集、规则和基准性能,以进一步加速个人健康相关的LLM研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A personal health large language model for sleep and fitness coaching

A personal health large language model for sleep and fitness coaching

Although large language models (LLMs) show promise for clinical healthcare applications, their utility for personalized health monitoring using wearable device data remains underexplored. Here we introduce the Personal Health Large Language Model (PH-LLM), designed for applications in sleep and fitness. PH-LLM is a version of the Gemini LLM that was finetuned for text understanding and reasoning when applied to aggregated daily-resolution numerical sensor data. We created three benchmark datasets to assess multiple complementary aspects of sleep and fitness: expert domain knowledge, generation of personalized insights and recommendations and prediction of self-reported sleep quality from longitudinal data. PH-LLM achieved scores that exceeded a sample of human experts on multiple-choice examinations in sleep medicine (79% versus 76%) and fitness (88% versus 71%). In a comprehensive evaluation involving 857 real-world case studies, PH-LLM performed similarly to human experts for fitness-related tasks and improved over the base Gemini model in providing personalized sleep insights. Finally, PH-LLM effectively predicted self-reported sleep quality using a multimodal encoding of wearable sensor data, further demonstrating its ability to effectively contextualize wearable modalities. This work highlights the potential of LLMs to revolutionize personal health monitoring via tailored insights and predictions from wearable data and provides datasets, rubrics and benchmark performance to further accelerate personal health-related LLM research.

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来源期刊
Nature Medicine
Nature Medicine 医学-生化与分子生物学
CiteScore
100.90
自引率
0.70%
发文量
525
审稿时长
1 months
期刊介绍: Nature Medicine is a monthly journal publishing original peer-reviewed research in all areas of medicine. The publication focuses on originality, timeliness, interdisciplinary interest, and the impact on improving human health. In addition to research articles, Nature Medicine also publishes commissioned content such as News, Reviews, and Perspectives. This content aims to provide context for the latest advances in translational and clinical research, reaching a wide audience of M.D. and Ph.D. readers. All editorial decisions for the journal are made by a team of full-time professional editors. Nature Medicine consider all types of clinical research, including: -Case-reports and small case series -Clinical trials, whether phase 1, 2, 3 or 4 -Observational studies -Meta-analyses -Biomarker studies -Public and global health studies Nature Medicine is also committed to facilitating communication between translational and clinical researchers. As such, we consider “hybrid” studies with preclinical and translational findings reported alongside data from clinical studies.
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