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Automatic Sleep Stage Scoring Using Time-Frequency Analysis and Stacked Sparse Autoencoders

机译:使用时频分析和堆叠式稀疏自动编码器进行自动睡眠阶段计分

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摘要

We developed a machine learning methodology for automatic sleep stage scoring. Our time-frequency analysis-based feature extraction is fine-tuned to capture sleep stage-specific signal features as described in the American Academy of Sleep Medicine manual that the human experts follow. We used ensemble learning with an ensemble of stacked sparse autoencoders for classifying the sleep stages. We used class-balanced random sampling across sleep stages for each model in the ensemble to avoid skewed performance in favor of the most represented sleep stages, and addressed the problem of misclassification errors due to class imbalance while significantly improving worst-stage classification. We used an openly available dataset from 20 healthy young adults for evaluation. We used a single channel of EEG from this dataset, which makes our method a suitable candidate for longitudinal monitoring using wearable EEG in real-world settings. Our method has both high overall accuracy (78%, range 75–80%), and high mean F1-score (84%, range 82–86%) and mean accuracy across individual sleep stages (86%, range 84–88%) over all subjects. The performance of our method appears to be uncorrelated with the sleep efficiency and percentage of transitional epochs in each recording.
机译:我们开发了一种用于自动睡眠阶段评分的机器学习方法。我们的基于时频分析的特征提取经过微调,可以捕获人类专家遵循的《美国睡眠医学学会手册》中所述的特定于睡眠阶段的信号特征。我们使用集成学习和一组堆叠的稀疏自动编码器对睡眠阶段进行分类。我们针对整个模型中的每个模型,在整个睡眠阶段使用了类均衡随机抽样,以避免性能偏向于代表最多的睡眠阶段,并解决了由于类不平衡导致的误分类错误,同时显着改善了最差阶段的分类。我们使用来自20个健康年轻人的公开数据集进行评估。我们使用了该数据集中的单个EEG通道,这使我们的方法成为在实际环境中使用可穿戴EEG进行纵向监测的合适候选者。我们的方法既具有较高的总体准确性(78%,范围为75–80%),也具有较高的平均F1得分(84%,范围为82–86%)和各个睡眠阶段的平均准确性(86%,范围为84–88%) )所有科目。我们的方法的性能似乎与睡眠效率和每个记录中过渡时期的百分比无关。

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