Literature DB >> 29029305

Large-Scale Automated Sleep Staging.

Haoqi Sun1,2, Jian Jia3, Balaji Goparaju4, Guang-Bin Huang5, Olga Sourina2, Matt Travis Bianchi4, M Brandon Westover4.   

Abstract

Study
Objectives: Automated sleep staging has been previously limited by a combination of clinical and physiological heterogeneity. Both factors are in principle addressable with large data sets that enable robust calibration. However, the impact of sample size remains uncertain. The objectives are to investigate the extent to which machine learning methods can approximate the performance of human scorers when supplied with sufficient training cases and to investigate how staging performance depends on the number of training patients, contextual information, model complexity, and imbalance between sleep stage proportions.
Methods: A total of 102 features were extracted from six electroencephalography (EEG) channels in routine polysomnography. Two thousand nights were partitioned into equal (n = 1000) training and testing sets for validation. We used epoch-by-epoch Cohen's kappa statistics to measure the agreement between classifier output and human scorer according to American Academy of Sleep Medicine scoring criteria.
Results: Epoch-by-epoch Cohen's kappa improved with increasing training EEG recordings until saturation occurred (n = ~300). The kappa value was further improved by accounting for contextual (temporal) information, increasing model complexity, and adjusting the model training procedure to account for the imbalance of stage proportions. The final kappa on the testing set was 0.68. Testing on more EEG recordings leads to kappa estimates with lower variance.
Conclusion: Training with a large data set enables automated sleep staging that compares favorably with human scorers. Because testing was performed on a large and heterogeneous data set, the performance estimate has low variance and is likely to generalize broadly. © Sleep Research Society 2017. Published by Oxford University Press on behalf of the Sleep Research Society. All rights reserved. For permissions, please e-mail journals.permissions@oup.com.

Entities:  

Keywords:  EEG; big data; machine learning; sleep stages

Mesh:

Year:  2017        PMID: 29029305      PMCID: PMC6251659          DOI: 10.1093/sleep/zsx139

Source DB:  PubMed          Journal:  Sleep        ISSN: 0161-8105            Impact factor:   5.849


  23 in total

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3.  Excess brain age in the sleep electroencephalogram predicts reduced life expectancy.

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5.  A novel sleep stage scoring system: Combining expert-based features with the generalized linear model.

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6.  Automatic Sleep Staging in Patients With Obstructive Sleep Apnea Using Single-Channel Frontal EEG.

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7.  Sleep staging from single-channel EEG with multi-scale feature and contextual information.

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8.  Artificial intelligence in sleep medicine: background and implications for clinicians.

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9.  Detecting abnormal electroencephalograms using deep convolutional networks.

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