LIANG Jiuxing, ZHANG Xiangmin, HUANG Shaoxiong, et al. Classification of sleep respiratory events based on heart rate variability and machine learning[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2018,57(3):128-134.
LIANG Jiuxing, ZHANG Xiangmin, HUANG Shaoxiong, et al. Classification of sleep respiratory events based on heart rate variability and machine learning[J]. Acta Scientiarum Naturalium Universitatis SunYatseni, 2018,57(3):128-134.DOI:
PNN)对HRV各特征值进行有无异常睡眠呼吸事件的判别,以期实现对该病征进行初步筛查的目的。首先,对标注的有无呼吸事件的多导睡眠监测数据提取其心电的HRV特征值,再经过归一化后作为特征向量;其次采用PNN分类算法对特征向量进行训练及分类输出;最后,对模型的预测分类性能进行评价。对于准确率、灵敏度、特异性、受试者工作特性曲线下面积(area under the receiver operating characteristic curve
To provide a method for screening patients with sleep apnea hypopnea syndrome (SAHS)
the heart rate variability (HRV) was applied to the classification of sleep respiratory events. The probabilistic neural network (PNN) was proposed to classify the normal and abnormal sleep respiratory events according to the HRV features to achieve the purpose of preliminary screening of the disease. In this classification process
the HRV features of ECG were firstly extracted from the polysomnographic monitoring data related to the normal and abnormal sleep respiratory events
and then normalized as the features. Then
PNN classification algorithm was used to train and classify the features. The prediction and classification performance of the model was finally evaluated. The results of the PNN classifier for the accuracy
sensitivity
specificity
area under the receiver operating characteristic curve (AUC) of the subjects and time consumption for classification were respectively: 75.97%
82.51%
76.22%
0.7936 and 0.63 s. Compared with generalized regression neural network (GRNN) and extreme learning machine (ELM) classification algorithms
PNN classification algorithm is optimal in sensitivity
specificity
AUC and time-consumptions. In this study
HRV and PNN classification algorithm were used to classify the presence or absence of abnormal sleep respiratory events
thus providing a low physiological load SAHS screening method. The study has a certain practical significance for the initial screening of the disease.