Chen Yun-Hsuan, Sawan Mohamad
CenBRAIN Lab., School of Engineering, Westlake University, Hangzhou 310024, China.
Institute of Advanced Study, Westlake Institute for Advanced Study, Hangzhou 310024, China.
Sensors (Basel). 2021 Jan 11;21(2):460. doi: 10.3390/s21020460.
We review in this paper the wearable-based technologies intended for real-time monitoring of stroke-related physiological parameters. These measurements are undertaken to prevent death and disability due to stroke. We compare the various characteristics, such as weight, accessibility, frequency of use, data continuity, and response time of these wearables. It was found that the most user-friendly wearables can have limitations in reporting high-precision prediction outcomes. Therefore, we report also the trend of integrating these wearables into the internet of things (IoT) and combining electronic health records (EHRs) and machine learning (ML) algorithms to establish a stroke risk prediction system. Due to different characteristics, such as accessibility, time, and spatial resolution of various wearable-based technologies, strategies of applying different types of wearables to maximize the efficacy of stroke risk prediction are also reported. In addition, based on the various applications of multimodal electroencephalography-functional near-infrared spectroscopy (EEG-fNIRS) on stroke patients, the perspective of using this technique to improve the prediction performance is elaborated. Expected prediction has to be dynamically delivered with high-precision outcomes. There is a need for stroke risk stratification and management to reduce the resulting social and economic burden.
我们在本文中回顾了旨在实时监测中风相关生理参数的可穿戴技术。进行这些测量是为了预防中风导致的死亡和残疾。我们比较了这些可穿戴设备的各种特性,如重量、可及性、使用频率、数据连续性和响应时间。结果发现,最用户友好的可穿戴设备在报告高精度预测结果方面可能存在局限性。因此,我们还报告了将这些可穿戴设备集成到物联网(IoT)中,并结合电子健康记录(EHRs)和机器学习(ML)算法以建立中风风险预测系统的趋势。由于各种基于可穿戴设备的技术具有不同的特性,如可及性、时间和空间分辨率,本文还报告了应用不同类型可穿戴设备以最大化中风风险预测效果的策略。此外,基于多模态脑电图 - 功能近红外光谱(EEG - fNIRS)在中风患者身上的各种应用,阐述了使用该技术提高预测性能的前景。预期预测必须以高精度结果动态提供。需要进行中风风险分层和管理以减轻由此产生的社会和经济负担。