Institute for Information Systems and Networking, University of Applied Sciences and Arts of Southern Switzerland, Manno, Switzerland; Institute of Informatics, University of Bern, Bern, Switzerland.
Institute for Information Systems and Networking, University of Applied Sciences and Arts of Southern Switzerland, Manno, Switzerland.
Sleep Med Rev. 2019 Dec;48:101204. doi: 10.1016/j.smrv.2019.07.007. Epub 2019 Aug 9.
Clinical sleep scoring involves a tedious visual review of overnight polysomnograms by a human expert, according to official standards. It could appear then a suitable task for modern artificial intelligence algorithms. Indeed, machine learning algorithms have been applied to sleep scoring for many years. As a result, several software products offer nowadays automated or semi-automated scoring services. However, the vast majority of the sleep physicians do not use them. Very recently, thanks to the increased computational power, deep learning has also been employed with promising results. Machine learning algorithms can undoubtedly reach a high accuracy in specific situations, but there are many difficulties in their introduction in the daily routine. In this review, the latest approaches that are applying deep learning for facilitating and accelerating sleep scoring are thoroughly analyzed and compared with the state of the art methods. Then the obstacles in introducing automated sleep scoring in the clinical practice are examined. Deep learning algorithm capabilities of learning from a highly heterogeneous dataset, in terms both of human data and of scorers, are very promising and should be further investigated.
临床睡眠评分根据官方标准,涉及由人类专家对整夜多导睡眠图进行繁琐的视觉审查。 那么对于现代人工智能算法来说,这似乎是一个合适的任务。 实际上,机器学习算法已经应用于睡眠评分多年。 结果,如今有几种软件产品提供自动化或半自动化评分服务。 但是,绝大多数睡眠医师并未使用它们。 最近,由于计算能力的提高,深度学习也得到了应用,并取得了令人鼓舞的结果。 机器学习算法在某些特定情况下无疑可以达到很高的准确性,但是在日常工作中引入它们存在许多困难。 在这篇综述中,深入分析了最新的应用深度学习来促进和加速睡眠评分的方法,并将其与最新方法进行了比较。 然后检查了在临床实践中引入自动睡眠评分的障碍。 深度学习算法从高度异构的数据集(包括人类数据和评分者)中学习的能力非常有前途,应该进一步研究。