4.6 Article

Ensemble Computational Intelligent for Insomnia Sleep Stage Detection via the Sleep ECG Signal

Journal

IEEE ACCESS
Volume 10, Issue -, Pages 108710-108721

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2022.3212120

Keywords

Artificial intelligence; Sleep apnea; Sleep; Cardiovascular system; Biomedical signal processing; Heart rate variability; Electrocardiography; Random forests; Hybrid power systems; Linear discriminant analysis; Classification algorithms; Sleep disorder; cardiovascular syndromes; ECG sleep signals; AI-based insomnia detection; 27 machine learning; CAP sleep database; hybrid classification scenarios

Funding

  1. National Research Foundation of Korea (NRF) - Korea Government [Ministry of Science and ICT (MSIT)] [RS-2022-00166402]
  2. Sejong University Industry-University Cooperation Foundation [20220224]

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This paper proposes a hybrid artificial intelligence approach based on power spectral density of heart rate variability to automatically detect insomnia disorders. The approach achieves accurate diagnosis of insomnia through three different classification scenarios, enabling timely detection and treatment.
Insomnia is a common sleep disorder in which patients cannot sleep properly. Accurate detection of insomnia disorder is a crucial step for mental disease analysis in the early stages. The disruption in getting quality sleep is one of the big sources of cardiovascular syndromes such as blood pressure and stroke. The traditional insomnia detection methods are time-consuming, cumbersome, and more expensive because they demand a long time from a trained neurophysiologist, and they are prone to human error, hence, the accuracy of diagnosis gets compromised. Therefore, the automatic insomnia diagnosis from the electrocardiogram (ECG) records is vital for timely detection and cure. In this paper, a novel hybrid artificial intelligence (AI) approach is proposed based on the power spectral density (PSD) of the heart rate variability (HRV) to detect insomnia in three classification scenarios: (1) subject-based classification scenario (normal Vs. insomnia), (2) sleep stage-based classification (REM Vs. W. stage), and (3) the combined classification scenario using both subject-based and sleep stage-based deep features. The ensemble learning of random forest (RF) and decision tree (DT) classifiers are used to perform the first and second classification scenarios, while the linear discriminant analysis (LDA) classifier is used to perform the third combined scenario. The proposed framework includes data collection, investigation of the ECG signals, extraction of the signal HRV, estimation of the PSD, and AI-based classification via hybrid machine learning classifiers. The proposed framework is fine-tuned and evaluated using the free public PhysioNet dataset over fivefold trails cross-validation. For the subject-based classification scenario, the detection performance in terms of sensitivity, specificity, and accuracy is recorded to be 96.0%, 94.0%, and 96.0%, respectively. For the sleep stage-based classification scenario, the detection evaluation results are recorded equally with 96.0% for ceiling level accuracy, sensitivity, and specificity. For the combined classification scenario, the LDA classifier has achieved the best insomnia detection accuracy with 99.0%. In the future, the proposed hybrid AI approach could be applicable for mobile observation schemes to automatically detect insomnia disorders.

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