Machine learning-based automatic sleep apnoea and severity level classification using ECG and SpO2 signals

被引:2
|
作者
Simegn G.L. [1 ]
Nemomssa H.D. [1 ]
Ayalew M.P. [1 ,2 ]
机构
[1] School of Biomedical Engineering, Jimma Institute of Technology, Jimma University, Jimma
[2] Ethiopian Food and Drug Authority, Addis Ababa
来源
关键词
Classification; ECG; PSG; severity; sleep apnoea; SpO[!sub]2[!/sub; SVM;
D O I
10.1080/03091902.2022.2026503
中图分类号
学科分类号
摘要
Sleep apnoea is a potentially serious sleep disorder that is characterised by repetitive episodes of breathing interruptions. Traditionally, sleep apnoea is commonly diagnosed in an attended sleep laboratory setting using polysomnography (PSG). The manual diagnosis of sleep apnoea using PSG is, however complex, and time-consuming, as many physiological variables are usually measured overnight using numerous sensors attached to patients. In PSG sleep laboratories, an expert human observer is required to work overnight, and the diagnosis accuracy is dependent on the physician’s experience. A quantitative and objective method is required to improve the diagnosis efficacy, decrease the complexity and diagnosis time and to ensure a more accurate diagnosis. The purpose of this study was then to develop an automatic sleep apnoea and severity classification using a simultaneously recorded electrocardiograph (ECG) and saturation of oxygen (SpO2) signals based on a machine learning algorithm. Different ECG and SpO2 time domain and frequency domain features were extracted for training different machine learning algorithms. For sleep apnoea classification, an accuracy of 99.1%, specificity of 98.1% and sensitivity of 100% were achieved using a support vector machine (SVM) based on combined ECG and SpO2 features. Similarly, for severity classification, an 88.9% accuracy, 90.9% specificity and 85.7% sensitivity have been obtained. For both apnoea and severity classification, using the combined features was found to be more accurate, and this is typically important when either channel is poor quality, the system can make an analysis based on the other channel and achieve good accuracy. © 2022 Informa UK Limited, trading as Taylor & Francis Group.
引用
收藏
页码:148 / 157
页数:9
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