Abstract

Sleep apnea is a common sleep disorder that causes repeated breathing interruption during sleep. The performance of automated apnea detection methods based on respiratory signals depend on the signals considered and feature extraction methods. Moreover, feature engineering techniques are highly dependent on the experts’ experience and their prior knowledge about different physiological signals and conditions of the subjects. To overcome these problems, a novel deep recurrent neural network (RNN) framework is developed for automated feature extraction and detection of apnea events from single respiratory channel inputs. Long short-term memory (LSTM) and bidirectional long short-term memory (BiLSTM) are investigated to develop the proposed deep RNN model. The proposed framework is evaluated over three respiration signals: Oronasal thermal airflow (FlowTh), nasal pressure (NPRE), and abdominal respiratory inductance plethysmography (ABD). To demonstrate our results, we use polysomnography (PSG) data of 17 patients with obstructive, central, and mixed apnea events. Our results indicate the effectiveness of the proposed framework in automatic extraction for temporal features and automated detection of apneic events over the different respiratory signals considered in this study. Using a deep BiLSTM-based detection model, the NPRE signal achieved the highest overall detection results with true positive rate (sensitivity) = 90.3%, true negative rate (specificity) = 83.7%, and area under receiver operator characteristic curve = 92.4%. The present results contribute a new deep learning approach for automated detection of sleep apnea events from single channel respiration signals that can potentially serve as a helpful and alternative tool for the traditional PSG method.

Highlights

  • The American Academy of Sleep Medicine (AASM) defines sleep apnea as the most common sleep-related breathing disorder [1]

  • We demonstrated the use of deep recurrent neural network (RNN) models in automatic detection of apneic events using a single channel respiratory signal

  • The proposed framework was evaluated on 3 different respiration signals including the oronasal thermal airflow sensor, the nasal pressure sensor, and the abdominal respiratory inductance plethysmography sensor

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Summary

Introduction

The American Academy of Sleep Medicine (AASM) defines sleep apnea as the most common sleep-related breathing disorder [1]. The American Academy of Sleep Medicine (AASM) specifies the use of two respiration signal channels in order to detect respiratory events during PSG diagnostic studies. The first one is obtained through an oronasal airflow sensor and the second one is obtained through a nasal pressure sensor [25,26]. The oronasal airflow sensor is a thermal-based sensor in which its measuring principle is based on detecting the change in temperature between inhaled and exhaled gas. Unlike oronasal thermal airflow sensors that can detect both nasal and oral airflow, nasal pressure sensors can not detect oral airflow [28,29]

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