Gao Tianxiang, Li Jiayi, Watanabe Yuji, Hung Chijung, Yamanaka Akihiro, Horie Kazumasa, Yanagisawa Masashi, Ohsawa Masahiro, Kume Kazuhiko
Department of Neuropharmacology, Graduate School of Pharmaceutical Sciences, Nagoya City University, Nagoya 467-8603, Japan.
Graduate School of Science, Nagoya City University, Nagoya 467-8501, Japan.
Clocks Sleep. 2021 Nov 1;3(4):581-597. doi: 10.3390/clockssleep3040041.
Sleep-stage classification is essential for sleep research. Various automatic judgment programs, including deep learning algorithms using artificial intelligence (AI), have been developed, but have limitations with regard to data format compatibility, human interpretability, cost, and technical requirements. We developed a novel program called GI-SleepNet, generative adversarial network (GAN)-assisted image-based sleep staging for mice that is accurate, versatile, compact, and easy to use. In this program, electroencephalogram and electromyography data are first visualized as images, and then classified into three stages (wake, NREM, and REM) by a supervised image learning algorithm. To increase its accuracy, we adopted GAN and artificially generated fake REM sleep data to equalize the number of stages. This resulted in improved accuracy, and as little as one mouse's data yielded significant accuracy. Due to its image-based nature, the program is easy to apply to data of different formats, different species of animals, and even outside sleep research. Image data can be easily understood; thus, confirmation by experts is easily obtained, even when there are prediction anomalies. As deep learning in image processing is one of the leading fields in AI, numerous algorithms are also available.
睡眠阶段分类对于睡眠研究至关重要。已经开发了各种自动判断程序,包括使用人工智能(AI)的深度学习算法,但在数据格式兼容性、人类可解释性、成本和技术要求方面存在局限性。我们开发了一种名为GI-SleepNet的新型程序,即用于小鼠的生成对抗网络(GAN)辅助基于图像的睡眠分期,该程序准确、通用、紧凑且易于使用。在这个程序中,脑电图和肌电图数据首先被可视化为图像,然后通过监督图像学习算法分为三个阶段(清醒、非快速眼动和快速眼动)。为了提高其准确性,我们采用了GAN并人工生成虚假快速眼动睡眠数据以平衡各阶段数量。这提高了准确性,并且仅一只小鼠的数据就能产生显著的准确性。由于其基于图像的特性,该程序易于应用于不同格式的数据、不同种类的动物,甚至睡眠研究之外的领域。图像数据易于理解;因此,即使存在预测异常,也很容易获得专家的确认。由于图像处理中的深度学习是人工智能的领先领域之一,所以也有许多算法可供使用。