2018
DOI: 10.3389/fncom.2018.00085
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Recurrent Deep Neural Networks for Real-Time Sleep Stage Classification From Single Channel EEG

Abstract: Objective: We investigate the design of deep recurrent neural networks for detecting sleep stages from single channel EEG signals recorded at home by non-expert users. We report the effect of data set size, architecture choices, regularization, and personalization on the classification performance.Methods: We evaluated 58 different architectures and training configurations using three-fold cross validation.Results: A network consisting of convolutional (CONV) layers and long short term memory (LSTM) layers can… Show more

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Cited by 72 publications
(57 citation statements)
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“…Surprisingly enough, new works keep appearing in scientific journals claiming "good generalization performance", nevertheless missing the proper experimental design to support such statement. To our knowledge, the few exceptions to this reporting trend are the very recent works of [19] [20] [21], which have included performance generalization tests using independent external databases as part of their experimentation. In [21] a clear downgrade in performance is noticeable when comparing the results from their local database validation (Tables S1 and S2, test dataset, in [21]) with the corresponding generalization results using an external dataset (Tables S4 and S5 in [21]), hence confirming our findings.…”
Section: Discussionmentioning
confidence: 99%
“…Surprisingly enough, new works keep appearing in scientific journals claiming "good generalization performance", nevertheless missing the proper experimental design to support such statement. To our knowledge, the few exceptions to this reporting trend are the very recent works of [19] [20] [21], which have included performance generalization tests using independent external databases as part of their experimentation. In [21] a clear downgrade in performance is noticeable when comparing the results from their local database validation (Tables S1 and S2, test dataset, in [21]) with the corresponding generalization results using an external dataset (Tables S4 and S5 in [21]), hence confirming our findings.…”
Section: Discussionmentioning
confidence: 99%
“…Zhang and Wu (2017) subsequently improved the CCNN and proposed the Fast Discriminate CCNN. Bresch et al (2018) and Supratak et al (2017) both proposed a sleep stage classification method which combines a convolutional neural network (CNN) and a long short-term memory (LSTM) network. Bresch et al (2018) used a CNN to extract features every 30 s from a single-channel EEG signal and used an LSTM network to perform the classification with the extracted features as the input.…”
Section: Introductionmentioning
confidence: 99%
“…A network containing hybrid of CNN-RNN provided a classification accuracy of 80%. An important advantage of this system is that, this can be used at home for consumer usage [27].…”
Section: Fig 3: Cnn-rnn Hybrid [26]mentioning
confidence: 99%