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AIOSA: An approach to the automatic identification of obstructive sleep apnea events based on deep learning

About

Obstructive Sleep Apnea Syndrome (OSAS) is the most common sleep-related breathing disorder. It is caused by an increased upper airway resistance during sleep, which determines episodes of partial or complete interruption of airflow. The detection and treatment of OSAS is particularly important in stroke patients, because the presence of severe OSAS is associated with higher mortality, worse neurological deficits, worse functional outcome after rehabilitation, and a higher likelihood of uncontrolled hypertension. The gold standard test for diagnosing OSAS is polysomnography (PSG). Unfortunately, performing a PSG in an electrically hostile environment, like a stroke unit, on neurologically impaired patients is a difficult task; also, the number of strokes per day outnumbers the availability of polysomnographs and dedicated healthcare professionals. Thus, a simple and automated recognition system to identify OSAS among acute stroke patients, relying on routinely recorded vital signs, is desirable. The majority of the work done so far focuses on data recorded in ideal conditions and highly selected patients, and thus it is hardly exploitable in real-life settings, where it would be of actual use. In this paper, we propose a convolutional deep learning architecture able to reduce the temporal resolution of raw waveform data, like physiological signals, extracting key features that can be used for further processing. We exploit models based on such an architecture to detect OSAS events in stroke unit recordings obtained from the monitoring of unselected patients. Unlike existing approaches, annotations are performed at one-second granularity, allowing physicians to better interpret the model outcome. Results are considered to be satisfactory by the domain experts. Moreover, based on a widely-used benchmark, we show that the proposed approach outperforms current state-of-the-art solutions.

Andrea Bernardini, Andrea Brunello, Gian Luigi Gigli, Angelo Montanari, Nicola Saccomanno• 2023

Related benchmarks

TaskDatasetResultRank
Per-segment sleep apnea detectionApnea-ECG
Sensitivity95.1
17
Per-patient sleep apnea classificationApnea-ECG AHI >= 5
Sensitivity100
12
Per-patient AHI Class PredictionStroke Unit 1.0 (All patients)
Acc@166.6
4
Per-patient AHI Class PredictionStroke Unit 1.0 (Without val patients)
Acc@160.9
4
Per-patient OSA Classification (AHI >= 5)Stroke Unit 1.0 (All patients)
Sensitivity100
4
Per-patient OSA Classification (AHI >= 5)Stroke Unit 1.0 (Without validation patients)
Sensitivity100
4
Per-second Sleep Apnea DetectionStroke Unit 1.0 (All patients)
Sensitivity67.2
4
Per-second Sleep Apnea DetectionStroke Unit 1.0 (Without val patients)
Sensitivity65.5
4
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