An End-to-End Sleep Staging Simulator Based on Mixed Deep Neural Networks

Author(s):  
Zheng Chen ◽  
Ziwei Yang ◽  
Dong Wang ◽  
Ming Huang ◽  
Naoaki Ono ◽  
...  
2017 ◽  
Vol 11 (8) ◽  
pp. 1301-1309 ◽  
Author(s):  
Panagiotis Tzirakis ◽  
George Trigeorgis ◽  
Mihalis A. Nicolaou ◽  
Bjorn W. Schuller ◽  
Stefanos Zafeiriou

2021 ◽  
Vol 48 (8) ◽  
pp. 940-946
Author(s):  
Daniela N. Rim ◽  
Inseon Jang ◽  
Heeyoul Choi

2018 ◽  
Vol 25 (12) ◽  
pp. 1643-1650 ◽  
Author(s):  
Siddharth Biswal ◽  
Haoqi Sun ◽  
Balaji Goparaju ◽  
M Brandon Westover ◽  
Jimeng Sun ◽  
...  

Abstract Objectives Scoring laboratory polysomnography (PSG) data remains a manual task of visually annotating 3 primary categories: sleep stages, sleep disordered breathing, and limb movements. Attempts to automate this process have been hampered by the complexity of PSG signals and physiological heterogeneity between patients. Deep neural networks, which have recently achieved expert-level performance for other complex medical tasks, are ideally suited to PSG scoring, given sufficient training data. Methods We used a combination of deep recurrent and convolutional neural networks (RCNN) for supervised learning of clinical labels designating sleep stages, sleep apnea events, and limb movements. The data for testing and training were derived from 10 000 clinical PSGs and 5804 research PSGs. Results When trained on the clinical dataset, the RCNN reproduces PSG diagnostic scoring for sleep staging, sleep apnea, and limb movements with accuracies of 87.6%, 88.2% and 84.7% on held-out test data, a level of performance comparable to human experts. The RCNN model performs equally well when tested on the independent research PSG database. Only small reductions in accuracy were noted when training on limited channels to mimic at-home monitoring devices: frontal leads only for sleep staging, and thoracic belt signals only for the apnea-hypopnea index. Conclusions By creating accurate deep learning models for sleep scoring, our work opens the path toward broader and more timely access to sleep diagnostics. Accurate scoring automation can improve the utility and efficiency of in-lab and at-home approaches to sleep diagnostics, potentially extending the reach of sleep expertise beyond specialty clinics.


Author(s):  
Jinjing Shi ◽  
Zhenhuan Li ◽  
Wei Lai ◽  
Fangfang Li ◽  
Ronghua Shi ◽  
...  

Author(s):  
Zhijun Chen ◽  
Huimin Wang ◽  
Hailong Sun ◽  
Pengpeng Chen ◽  
Tao Han ◽  
...  

End-to-end learning from crowds has recently been introduced as an EM-free approach to training deep neural networks directly from noisy crowdsourced annotations. It models the relationship between true labels and annotations with a specific type of neural layer, termed as the crowd layer, which can be trained using pure backpropagation. Parameters of the crowd layer, however, can hardly be interpreted as annotator reliability, as compared with the more principled probabilistic approach. The lack of probabilistic interpretation further prevents extensions of the approach to account for important factors of annotation processes, e.g., instance difficulty. This paper presents SpeeLFC, a structured probabilistic model that incorporates the constraints of probability axioms for parameters of the crowd layer, which allows to explicitly model annotator reliability while benefiting from the end-to-end training of neural networks. Moreover, we propose SpeeLFC-D, which further takes into account instance difficulty. Extensive validation on real-world datasets shows that our methods improve the state-of-the-art.


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