Kargarandehkordi Ali, Slade Christopher, Washington Peter
Department of Information and Computer Sciences, University of Hawaii at Manoa, Honolulu, HI, United States.
JMIR Res Protoc. 2024 Mar 25;13:e55615. doi: 10.2196/55615.
Referred to as the "silent killer," elevated blood pressure (BP) often goes unnoticed due to the absence of apparent symptoms, resulting in cumulative harm over time. Chronic stress has been consistently linked to increased BP. Prior studies have found that elevated BP often arises due to a stressful lifestyle, although the effect of exact stressors varies drastically between individuals. The heterogeneous nature of both the stress and BP response to a multitude of lifestyle decisions can make it difficult if not impossible to pinpoint the most deleterious behaviors using the traditional mechanism of clinical interviews.
The aim of this study is to leverage machine learning (ML) algorithms for real-time predictions of stress-induced BP spikes using consumer wearable devices such as Fitbit, providing actionable insights to both patients and clinicians to improve diagnostics and enable proactive health monitoring. This study also seeks to address the significant challenges in identifying specific deleterious behaviors associated with stress-induced hypertension through the development of personalized artificial intelligence models for individual patients, departing from the conventional approach of using generalized models.
The study proposes the development of ML algorithms to analyze biosignals obtained from these wearable devices, aiming to make real-time predictions about BP spikes. Given the longitudinal nature of the data set comprising time-series data from wearables (eg, Fitbit) and corresponding time-stamped labels representing stress levels from Ecological Momentary Assessment reports, the adoption of self-supervised learning for pretraining the network and using transformer models for fine-tuning the model on a personalized prediction task is proposed. Transformer models, with their self-attention mechanisms, dynamically weigh the importance of different time steps, enabling the model to focus on relevant temporal features and dependencies, facilitating accurate prediction.
Supported as a pilot project from the Robert C Perry Fund of the Hawaii Community Foundation, the study team has developed the core study app, CardioMate. CardioMate not only reminds participants to initiate BP readings using an Omron HeartGuide wearable monitor but also prompts them multiple times a day to report stress levels. Additionally, it collects other useful information including medications, environmental conditions, and daily interactions. Through the app's messaging system, efficient contact and interaction between users and study admins ensure smooth progress.
Personalized ML when applied to biosignals offers the potential for real-time digital health interventions for chronic stress and its symptoms. The project's clinical use for Hawaiians with stress-induced high BP combined with its methodological innovation of personalized artificial intelligence models highlights its significance in advancing health care interventions. Through iterative refinement and optimization, the aim is to develop a personalized deep-learning framework capable of accurately predicting stress-induced BP spikes, thereby promoting individual well-being and health outcomes.
INTERNATIONAL REGISTERED REPORT IDENTIFIER (IRRID): DERR1-10.2196/55615.
高血压被称为“无声杀手”,由于没有明显症状,常常不被察觉,随着时间的推移会造成累积性伤害。慢性压力一直与血压升高有关。先前的研究发现,血压升高通常是由压力大的生活方式引起的,尽管具体压力源对个体的影响差异很大。压力和血压对多种生活方式决策的反应具有异质性,这使得使用传统的临床访谈机制很难甚至不可能确定最有害的行为。
本研究的目的是利用机器学习(ML)算法,通过Fitbit等消费级可穿戴设备实时预测压力引起的血压飙升,为患者和临床医生提供可采取行动的见解,以改善诊断并实现主动健康监测。本研究还试图通过为个体患者开发个性化人工智能模型来应对识别与压力性高血压相关的特定有害行为方面的重大挑战,这与使用通用模型的传统方法不同。
该研究提出开发ML算法来分析从这些可穿戴设备获得的生物信号,旨在对血压飙升进行实时预测。鉴于数据集的纵向性质,该数据集包含来自可穿戴设备(如Fitbit)的时间序列数据以及代表生态瞬时评估报告中压力水平的相应时间戳标签,建议采用自监督学习对网络进行预训练,并使用Transformer模型在个性化预测任务上对模型进行微调。Transformer模型具有自注意力机制,能够动态权衡不同时间步长的重要性,使模型能够关注相关的时间特征和依赖性,从而促进准确预测。
作为夏威夷社区基金会罗伯特·C·佩里基金的试点项目,研究团队开发了核心研究应用程序CardioMate。CardioMate不仅提醒参与者使用欧姆龙HeartGuide可穿戴监测器进行血压读数,还每天多次提示他们报告压力水平。此外,它还收集其他有用信息,包括药物、环境状况和日常互动。通过应用程序的消息系统,用户与研究管理员之间的高效联系和互动确保了进展顺利。
将个性化ML应用于生物信号可为慢性压力及其症状提供实时数字健康干预的潜力。该项目在夏威夷压力性高血压患者中的临床应用及其个性化人工智能模型的方法创新突出了其在推进医疗保健干预方面的重要性。通过迭代改进和优化,目标是开发一个能够准确预测压力引起的血压飙升的个性化深度学习框架,从而促进个体福祉和健康结果。
国际注册报告识别码(IRRID):DERR1-10.2196/55615。