Wireless Wearable Multisensory Suite and Real-Time Prediction of Obstructive Sleep Apnea Episodes

IEEE J Transl Eng Health Med. 2013 Jul 18:1:2700109. doi: 10.1109/JTEHM.2013.2273354. eCollection 2013.

Abstract

Obstructive sleep apnea (OSA) is a common sleep disorder found in 24% of adult men and 9% of adult women. Although continuous positive airway pressure (CPAP) has emerged as a standard therapy for OSA, a majority of patients are not tolerant to this treatment, largely because of the uncomfortable nasal air delivery during their sleep. Recent advances in wireless communication and advanced ("bigdata") preditive analytics technologies offer radically new point-of-care treatment approaches for OSA episodes with unprecedented comfort and afforadability. We introduce a Dirichlet process-based mixture Gaussian process (DPMG) model to predict the onset of sleep apnea episodes based on analyzing complex cardiorespiratory signals gathered from a custom-designed wireless wearable multisensory suite. Extensive testing with signals from the multisensory suite as well as PhysioNet's OSA database suggests that the accuracy of offline OSA classification is 88%, and accuracy for predicting an OSA episode 1-min ahead is 83% and 3-min ahead is 77%. Such accurate prediction of an impending OSA episode can be used to adaptively adjust CPAP airflow (toward improving the patient's adherence) or the torso posture (e.g., minor chin adjustments to maintain steady levels of the airflow).

Keywords: Biomedical telemetry; Gaussian mixture model; Nonlinear dynamical systems; Sleep apnea.

Grants and funding

This work was supported in part by the National Science Foundation under Grants (CMMI-0700680, 0830023, and 1000978), a grant from the Vietnam Education Foundation, and AT&T Professorship. This article is dedicated to the fond memory of our colleague, advisor and mentor Dr. Ranga Komanduri.