ECG, EEG, Breathing Signals, and Machine Learning: Computer-Aided Detection of Obstructive Sleep Apnea Syndrome and Depression

Mostafa M. Moussa, Yahya Alzaabi, Ahsan H. Khandoker
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Abstract

Obstructive Sleep Apnea Syndrome (OSAS) and Major Depressive Disorder (MDD) are both common conditions associated with poor quality of life. We seek to classify OSAS and depression in OSAS patients, as well as sleep stages using multiple machine learning techniques. We have extracted features from 5-minute intervals of electrocardiograms (ECG), breathing signals, and electroen-cephalograms (EEG) recorded from a total of 118 subjects, of which 89 are used for training and 10-fold cross-validation and 29 are used for testing or a 75/25% split. The best classification performance of OSAS was obtained with light sleep and deep sleep with ReliefF using random forest and boosted trees, respectively. It has yielded an accuracy of 100.00%, F1-Score of 100.00%, Cohen's k Coefficient of 1.00, and a Matthews correlation coefficient (MCC) of 1.00. All sleep stages with 10 principal components using random forest yielded an accuracy of 77.50%, F1-Score of 78.05%, Cohen's k of 0.571, and an MCC of 0.632 for classification of depression in OSAS patients. Sleep staging was best done using bagged trees with features selected via sequential backward feature selection, yielding an accuracy of 76.90%, F1-Score of 75.90%, Cohen's k of 0.480, and an MCC of 0.634. These results show promise in detecting OSAS and depression in OSAS patients, particularly using light and deep sleep data.
心电图、脑电图、呼吸信号和机器学习:阻塞性睡眠呼吸暂停综合征和抑郁症的计算机辅助检测
阻塞性睡眠呼吸暂停综合征(OSAS)和重度抑郁症(MDD)都是与生活质量低下相关的常见疾病。我们试图使用多种机器学习技术对OSAS患者的OSAS和抑郁症以及睡眠阶段进行分类。我们从总共118名受试者记录的5分钟间隔的心电图(ECG)、呼吸信号和脑电图(EEG)中提取了特征,其中89名用于训练和10倍交叉验证,29名用于测试或75/25%分割。使用随机森林和增强树分别在轻度睡眠和深度睡眠时获得最佳的OSAS分类性能。其准确度为100.00%,F1-Score为100.00%,Cohen的k系数为1.00,Matthews相关系数(MCC)为1.00。采用随机森林方法对10个主成分的所有睡眠阶段进行osa患者抑郁分类,准确率为77.50%,F1-Score为78.05%,Cohen’s k为0.571,MCC为0.632。睡眠分期最好使用袋装树,通过顺序向后特征选择选择特征,准确度为76.90%,F1-Score为75.90%,Cohen's k为0.480,MCC为0.634。这些结果显示了在检测OSAS患者和抑郁方面的前景,特别是使用浅睡眠和深睡眠数据。
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