IEEE J Biomed Health Inform. 2020 Aug;24(8):2199-2207. doi: 10.1109/JBHI.2019.2963048. Epub 2019 Dec 31.
This study aims to understand breathing patterns during daily activities by developing a wearable respiratory and activity monitoring (WRAM) system.
A novel multimodal fusion architecture is proposed to calculate the respiratory and exercise parameters and simultaneously identify human actions. A hybrid hierarchical classification (HHC) algorithm combining deep learning and threshold-based methods is presented to distinguish 15 complex activities for accuracy enhancement and fast computation. A series of signal processing algorithms are utilized and integrated to calculate breathing and motion indices. The designed wireless communication structure achieves the interactions among chest bands, mobile devices, and the data processing center.
The advantage of the proposed HHC method is evaluated by comparing the average accuracy (97.22%) and predictive time (0.0094 s) with machine learning and deep learning approaches. The nine breathing patterns during 15 activities were analyzed by investigating the data from 12 subjects. With 12 hours of naturalistic data collected from one participant, the WRAM system reports the breathing and exercise performance within the identified motions. The demonstration shows the ability of the WRAM system to monitor multiple users breathing and exercise status in real-time.
The present system demonstrates the usefulness of the framework of breathing pattern monitoring during daily activities, which may be potentially used in healthcare.
The proposed multimodal based WRAM system offers new insights into the breathing function of exercise in action and presents a novel approach for precision medicine and health state monitoring.
本研究旨在通过开发一种可穿戴式呼吸和活动监测(WRAM)系统来了解日常活动中的呼吸模式。
提出了一种新的多模态融合架构,用于计算呼吸和运动参数,并同时识别人体动作。提出了一种结合深度学习和基于阈值方法的混合分层分类(HHC)算法,以提高准确性和快速计算来区分 15 种复杂活动。利用了一系列信号处理算法并将其集成,以计算呼吸和运动指数。设计的无线通信结构实现了胸带、移动设备和数据处理中心之间的交互。
通过与机器学习和深度学习方法比较,评估了所提出的 HHC 方法的优势,其平均准确率(97.22%)和预测时间(0.0094s)。通过对 12 名受试者的数据进行分析,研究了 15 种活动中的 9 种呼吸模式。通过从一名参与者收集 12 小时的自然数据,WRAM 系统报告了所识别运动中的呼吸和运动表现。演示表明,WRAM 系统能够实时监测多个用户的呼吸和运动状态。
本系统展示了在日常活动中监测呼吸模式的框架的有用性,这可能在医疗保健中具有潜在的应用价值。
所提出的基于多模态的 WRAM 系统为运动中的呼吸功能提供了新的见解,并为精准医学和健康状态监测提供了一种新方法。