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Benchmark on a large cohort for sleep-wake classification with machine learning techniques

机译:使用机器学习技术进行睡眠-唤醒分类的大型队列的基​​准

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摘要

Accurately measuring sleep and its quality with polysomnography (PSG) is an expensive task. Actigraphy, an alternative, has been proven cheap and relatively accurate. However, the largest experiments conducted to date, have had only hundreds of participants. In this work, we processed the data of the recently published Multi-Ethnic Study of Atherosclerosis (MESA) Sleep study to have both PSG and actigraphy data synchronized. We propose the adoption of this publicly available large dataset, which is at least one order of magnitude larger than any other dataset, to systematically compare existing methods for the detection of sleep-wake stages, thus fostering the creation of new algorithms. We also implemented and compared state-of-the-art methods to score sleep-wake stages, which range from the widely used traditional algorithms to recent machine learning approaches. We identified among the traditional algorithms, two approaches that perform better than the algorithm implemented by the actigraphy device used in the MESA Sleep experiments. The performance, in regards to accuracy and F1 score of the machine learning algorithms, was also superior to the device’s native algorithm and comparable to human annotation. Future research in developing new sleep-wake scoring algorithms, in particular, machine learning approaches, will be highly facilitated by the cohort used here. We exemplify this potential by showing that two particular deep-learning architectures, CNN and LSTM, among the many recently created, can achieve accuracy scores significantly higher than other methods for the same tasks.
机译:使用多导睡眠图(PSG)准确测量睡眠及其质量是一项昂贵的任务。书法术已被证明是便宜且相对准确的。但是,迄今为止进行的最大规模的实验只有数百名参与者。在这项工作中,我们处理了最近发表的多民族动脉粥样硬化研究(MESA)睡眠研究的数据,以使PSG和书法数据同步。我们建议采用此公开可用的大型数据集,该数据集比任何其他数据集至少大一个数量级,以系统比较现有的检测睡眠-觉醒阶段的方法,从而促进新算法的创建。我们还实施并比较了最先进的方法来对睡眠-觉醒阶段进行评分,范围从广泛使用的传统算法到最新的机器学习方法。我们在传统算法中确定了两种方法,它们的效果比MESA睡眠实验中使用的书法设备所实现的算法更好。机器学习算法在准确性和F1分数方面的性能也优于设备的本机算法,可与人工标注相媲美。此处使用的同类群组将极大地促进未来开发新的睡眠-唤醒计分算法的研究,尤其是机器学习方法。我们通过展示在最近创建的许多特定的深度学习体系结构中,两种特殊的深度学习体系结构CNN和LSTM可以实现比相同方法明显高于其他方法的准确性得分来例证这种潜力。

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