scholarly journals Estimation of the Heart Rate Variability Features via Recurrent Neural Networks

Author(s):  
Mihaela Porumb ◽  
Rossana Castaldo ◽  
Leandro Pecchia
SLEEP ◽  
2020 ◽  
Vol 43 (9) ◽  
Author(s):  
Pedro Fonseca ◽  
Merel M van Gilst ◽  
Mustafa Radha ◽  
Marco Ross ◽  
Arnaud Moreau ◽  
...  

Abstract Study Objectives To validate a previously developed sleep staging algorithm using heart rate variability (HRV) and body movements in an independent broad cohort of unselected sleep disordered patients. Methods We applied a previously designed algorithm for automatic sleep staging using long short-term memory recurrent neural networks to model sleep architecture. The classifier uses 132 HRV features computed from electrocardiography and activity counts from accelerometry. We retrained our algorithm using two public datasets containing both healthy sleepers and sleep disordered patients. We then tested the performance of the algorithm on an independent hold-out validation set of sleep recordings from a wide range of sleep disorders collected in a tertiary sleep medicine center. Results The classifier achieved substantial agreement on four-class sleep staging (wake/N1–N2/N3/rapid eye movement [REM]), with an average κ of 0.60 and accuracy of 75.9%. The performance of the sleep staging algorithm was significantly higher in insomnia patients (κ = 0.62, accuracy = 77.3%). Only in REM parasomnias, the performance was significantly lower (κ = 0.47, accuracy = 70.5%). For two-class wake/sleep classification, the classifier achieved a κ of 0.65, with a sensitivity (to wake) of 72.9% and specificity of 94.0%. Conclusions This study shows that the combination of HRV, body movements, and a state-of-the-art deep neural network can reach substantial agreement in automatic sleep staging compared with polysomnography, even in patients suffering from a multitude of sleep disorders. The physiological signals required can be obtained in various ways, including non-obtrusive wrist-worn sensors, opening up new avenues for clinical diagnostics.


2020 ◽  
Author(s):  
Jian Zhan ◽  
Zuo-xi Wu ◽  
Zhen-xin Duan ◽  
Gui-ying Yang ◽  
Zhi-yong Du ◽  
...  

Abstract Background: Estimating the depth of anaesthesia (DoA) is critical in clinical anaesthesiology. Electroencephalograms (EEGs) have been widely used for monitoring the DoA; however, they may be inaccurate under certain conditions. Methods: In this study, we propose a novel method to evaluate the DoA based on multiple heart rate variability (HRV)-derived features combined with a discrete wavelet transform and deep neural networks (DNNs). Four features were extracted from an electrocardiogram, including the HRV high-frequency power, low-frequency power, high-to-low-frequency power ratio, and sample entropy. Next, these features were used as inputs for the DNN, which used the expert assessment of consciousness level as the reference output. Finally, the DNN was compared with the logistic regression (LR), support vector machine (SVM), and decision tree (DT) models. The data of 23 anaesthesia patients were used to assess the proposed method. Results: The results demonstrated that the accuracies of the four models, in distinguishing the anaesthesia states, were 86.2% (LR),87.5% (SVM),87.2% (DT), and 90.1%(DNN). Our method outperformed the LR, SVM, and DT methods.Conclusions: The proposed method could accurately distinguish between different anaesthesia states, thus, providing an alternative or supplementary method to EEG monitoring for the assessment of DoA.


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