Sleep spindles are neurophysiological phenomena that appear to be linked to memory formation and other functions of the central nervous system, and that can be observed in electroencephalographic recordings (EEG) during sleep. Manually identified spindle annotations in EEG recordings suffer from substantial intra- and inter-rater variability, even if raters have been highly trained, which reduces the reliability of spindle measures as a research and diagnostic tool. The Massive Online Data Annotation (MODA) project has recently addressed this problem by forming a consensus from multiple such rating experts, thus providing a corpus of spindle annotations of enhanced quality. Based on this dataset, we present a U-Net-type deep neural network model to automatically detect sleep spindles. Our model's performance exceeds that of the state-of-the-art detector and of most experts in the MODA dataset. We observed improved detection accuracy in subjects of all ages, including older individuals whose spindles are particularly challenging to detect reliably. Our results underline the potential of automated methods to do repetitive cumbersome tasks with super-human performance.
翻译:睡眠螺旋是神经生理学现象,似乎与中枢神经系统的记忆形成和其他功能有关,在睡眠时在电脑记录中可以观察到。EEEG记录中人工识别的脊椎说明具有重大的跨河和跨河间变化,即使定级器受过高度培训,这降低了作为研究与诊断工具的脊椎测量措施的可靠性。大规模在线数据注释项目最近通过由多个这类评级专家达成共识来解决这个问题,从而提供了一整套质量提高的脊椎说明。根据这一数据集,我们展示了一种U-Net型深线性神经网络模型,以自动检测睡眠螺旋。我们的模型的性能超过了最先进的探测器和多位专家在MODA数据集中的性能。我们观察到,在所有年龄的学科中,包括脊椎特别难以可靠检测的老年人,都提高了探测的准确性。我们的结果突出表明了自动化方法在超人类性能方面重复繁琐工作的潜力。