Graduate School of Systems and Information Engineering, University of Tsukuba, Tsukuba, Japan.
Center for Computational Sciences, University of Tsukuba, Tsukuba, Japan.
Sci Rep. 2019 Oct 31;9(1):15793. doi: 10.1038/s41598-019-51269-8.
Automated sleep stage scoring for mice is in high demand for sleep research, since manual scoring requires considerable human expertise and efforts. The existing automated scoring methods do not provide the scoring accuracy required for practical use. In addition, the performance of such methods has generally been evaluated using rather small-scale datasets, and their robustness against individual differences and noise has not been adequately verified. This research proposes a novel automated scoring method named "MC-SleepNet", which combines two types of deep neural networks. Then, we evaluate its performance using a large-scale dataset that contains 4,200 biological signal records of mice. The experimental results show that MC-SleepNet can automatically score sleep stages with an accuracy of 96.6% and kappa statistic of 0.94. In addition, we confirm that the scoring accuracy does not significantly decrease even if the target biological signals are noisy. These results suggest that MC-SleepNet is very robust against individual differences and noise. To the best of our knowledge, evaluations using such a large-scale dataset (containing 4,200 records) and high scoring accuracy (96.6%) have not been reported in previous related studies.
自动化的小鼠睡眠分期评分在睡眠研究中需求很高,因为手动评分需要相当多的人力和精力。现有的自动化评分方法无法提供实际应用所需的评分准确性。此外,这些方法的性能通常使用相当小规模的数据集进行评估,并且它们对个体差异和噪声的鲁棒性尚未得到充分验证。本研究提出了一种名为“MC-SleepNet”的新型自动化评分方法,该方法结合了两种类型的深度神经网络。然后,我们使用包含 4200 只小鼠生物信号记录的大规模数据集来评估其性能。实验结果表明,MC-SleepNet 可以以 96.6%的准确率和 0.94 的kappa 统计量自动评分睡眠阶段。此外,我们确认即使目标生物信号存在噪声,评分准确性也不会显著降低。这些结果表明 MC-SleepNet 对个体差异和噪声非常稳健。据我们所知,以前的相关研究中没有使用如此大规模的数据集(包含 4200 条记录)和如此高的评分准确性(96.6%)进行评估。