所有人的透视-纵向睡眠监测:回报、挑战和展望

Trisha L. Andrew, Soha Rostaminia, S. Z. Homayounfar, Deepak Ganesan
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引用次数: 4

摘要

睡眠指标的纵向跟踪对于检测和管理从心肺疾病到痴呆症的各种疾病很重要。然而,目前,睡眠监测主要发生在不利于长期研究的专业医疗机构。家庭解决方案在跟踪睡眠变量时要么损害用户舒适度,要么损害信号准确性,并且尚未提供可靠的纵向数据。在这里,我们调查了睡眠追踪器的现状,并强调了主要缺点,为改进传感器系统设计提供了指导原则。我们认为,在人类健康监测这一日益重要的领域,需要以人为中心设计多模式、低形状因子、舒适的传感系统。©2022作者。由IOP出版有限公司代表电化学学会出版。这是一篇根据知识共享署名4.0许可证(CC BY,http://creativecommons.org/licenses/通过/4.0/),允许在任何介质中不受限制地重复使用作品,前提是正确引用了原始作品。[DOI:10.1149/2754-2726/ac59c1]
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Perspective—Longitudinal Sleep Monitoring for All: Payoffs, Challenges and Outlook
Longitudinal tracking of sleep metrics is important for detecting and managing various diseases, spanning cardiorespiratory disorders to dementia. However, at present, sleep monitoring primarily occurs in specialized medical facilities that are not conducive to long-term studies. In-home solutions either compromise user comfort or signal accuracy in tracking sleep variables and have not yet provided reliable longitudinal data. Here, we survey the current state of sleep trackers and highlight key shortcomings to provide guiding principles for improved sensor system design. We believe that human-centered design of multimodal, low-form-factor, comfortable sensing systems is needed for this increasingly-important area of human health monitoring.©2022The Author(s). Published on behalf of The Electrochemical Society by IOP Publishing Limited. This is an open access article distributed under the terms of the Creative Commons Attribution 4.0 License (CC BY, http://creativecommons.org/licenses/ by/4.0/), which permits unrestricted reuse of the work in any medium, provided the original work is properly cited. [DOI: 10.1149/ 2754-2726/ac59c1]
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