At-home wireless sleep monitoring patches for the clinical assessment of sleep quality and sleep apnea.
Shinjae KwonHyeon Seok KimKangkyu KwonHodam KimYun-Soung KimSung Hoon LeeYoung-Tae KwonJae-Woong JeongLynn Marie TrottiAudrey DuarteWoon-Hong YeoPublished in: Science advances (2023)
Although many people suffer from sleep disorders, most are undiagnosed, leading to impairments in health. The existing polysomnography method is not easily accessible; it's costly, burdensome to patients, and requires specialized facilities and personnel. Here, we report an at-home portable system that includes wireless sleep sensors and wearable electronics with embedded machine learning. We also show its application for assessing sleep quality and detecting sleep apnea with multiple patients. Unlike the conventional system using numerous bulky sensors, the soft, all-integrated wearable platform offers natural sleep wherever the user prefers. In a clinical study, the face-mounted patches that detect brain, eye, and muscle signals show comparable performance with polysomnography. When comparing healthy controls to sleep apnea patients, the wearable system can detect obstructive sleep apnea with an accuracy of 88.5%. Furthermore, deep learning offers automated sleep scoring, demonstrating portability, and point-of-care usability. At-home wearable electronics could ensure a promising future supporting portable sleep monitoring and home healthcare.
Keyphrases
- sleep quality
- sleep apnea
- obstructive sleep apnea
- positive airway pressure
- healthcare
- end stage renal disease
- machine learning
- physical activity
- deep learning
- ejection fraction
- newly diagnosed
- chronic kidney disease
- prognostic factors
- peritoneal dialysis
- skeletal muscle
- high throughput
- public health
- multiple sclerosis
- artificial intelligence
- blood pressure
- clinical trial
- low cost
- patient reported
- palliative care
- electronic health record
- subarachnoid hemorrhage
- brain injury
- patient reported outcomes
- cerebral ischemia
- social media
- white matter
- convolutional neural network
- human health