OBJECTIVE To classify sleep states using electroencephalogram (EEG) that reliably works over a wide range of preterm ages, as well as term age. METHODS A convolutional neural network is developed… Click to show full abstract
OBJECTIVE To classify sleep states using electroencephalogram (EEG) that reliably works over a wide range of preterm ages, as well as term age. METHODS A convolutional neural network is developed to perform 2- and 4-class sleep classification in neonates. The network takes as input an 8-channel 30-second EEG segment and outputs the sleep state probabilities. Apart from simple downsampling of the input and smoothing of the output, the suggested network is an end-to-end algorithm that avoids the need for hand-crafted feature selection or complex pre/post processing steps. To train and test this method, 113 EEG recordings from 42 infants are used. RESULTS For quiet sleep detection (the 2-class problem), mean kappa between the network estimate and the ground truth annotated by EEG human experts is 0.76. The sensitivity and specificity are 90% and 88%, respectively. For 4-class classification, mean kappa is 0.64. The averaged sensitivity and specificity (1 vs. all) respectively equal 72% and 91%. The results outperform current state-of-the-art methods for which kappa ranges from 0.66 to 0.70 in preterm and from 0.51 to 0.61 in term infants, based on training and testing using the same database. SIGNIFICANCE The proposed method has the highest reported accuracy for EEG sleep state classification for both preterm and term age neonates.
               
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