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Deep-Learning based Sleep Apnea Detection using SpO2 and Pulse Rate

Pragya Sharma, Ali Jalali, Maulik D. Majmudar, Kuldeep Singh Rajput, Nandakumar Selvaraj

20222022 44th Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC)26 citationsDOIOpen Access PDF

Abstract

This work presents automated apnea event de-tection using blood oxygen saturation (SpO2) and pulse rate (PR), conveniently recorded with a pulse oximeter. A large, diverse cohort of patients (n=8068, age≥40 years) from the sleep heart health study dataset with annotated sleep events have been employed in this study. A deep-learning model is trained to detect apnea in successive 30 s epochs and performances are assessed on two independent sub-cohorts of test data. The proposed algorithm showcases the highest test performance of 90.4 % area under the receiver operating characteristic curve and 58.9% area under the precision-recall curve for epoch-based apnea detection. Additionally, the model consistently performs well across various apnea subtypes, with the highest sensitivity of 93.4 % for obstructive apnea detection followed by 90.5 % for central apnea and 89.1 % for desaturation associated hypopnea. Overall, the proposed algorithm provides a robust and sensitive approach for sleep apnea event detection using a noninvasive pulse oximeter sensor. Clinical Relevance - The study establishes high sensitivity for automated epoch-based apnea detection across a diverse study cohort with various comorbidities using simply a pulse oximeter. This highly cost-effective approach could also enable convenient sleep and health monitoring over long-term.

Topics & Concepts

Sleep apneaApneaMedicineReceiver operating characteristicPolysomnographyPulse oximetryCohortHypopneaPulse (music)Oxygen saturationPulse rateCardiologyArtificial intelligenceComputer scienceInternal medicineAnesthesiaBlood pressureTelecommunicationsChemistryDetectorOxygenOrganic chemistryObstructive Sleep Apnea ResearchNon-Invasive Vital Sign MonitoringNeuroscience of respiration and sleep
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