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使用深度生成学习模型来模拟睡眠统计数据中评分者间差异的影响。

Modeling the Impact of Inter-Rater Disagreement on Sleep Statistics Using Deep Generative Learning.

出版信息

IEEE J Biomed Health Inform. 2023 Nov;27(11):5599-5609. doi: 10.1109/JBHI.2023.3304010. Epub 2023 Nov 7.

Abstract

Sleep staging is the process by which an overnight polysomnographic measurement is segmented into epochs of 30 seconds, each of which is annotated as belonging to one of five discrete sleep stages. The resulting scoring is graphically depicted as a hypnogram, and several overnight sleep statistics are derived, such as total sleep time and sleep onset latency. Gold standard sleep staging as performed by human technicians is time-consuming, costly, and comes with imperfect inter-scorer agreement, which also results in inter-scorer disagreement about the overnight statistics. Deep learning algorithms have shown promise in automating sleep scoring, but struggle to model inter-scorer disagreement in sleep statistics. To that end, we introduce a novel technique using conditional generative models based on Normalizing Flows that permits the modeling of the inter-rater disagreement of overnight sleep statistics, termed U-Flow. We compare U-Flow to other automatic scoring methods on a hold-out test set of 70 subjects, each scored by six independent scorers. The proposed method achieves similar sleep staging performance in terms of accuracy and Cohen's kappa on the majority-voted hypnograms. At the same time, U-Flow outperforms the other methods in terms of modeling the inter-rater disagreement of overnight sleep statistics. The consequences of inter-rater disagreement about overnight sleep statistics may be great, and the disagreement potentially carries diagnostic and scientifically relevant information about sleep structure. U-Flow is able to model this disagreement efficiently and can support further investigations into the impact inter-rater disagreement has on sleep medicine and basic sleep research.

摘要

睡眠分期是将整夜多导睡眠图测量结果分割为 30 秒一段的过程,每一段都被注释为属于五个离散睡眠阶段之一。由此产生的评分以睡眠图的形式直观地呈现出来,并且可以得出几个整夜睡眠统计数据,例如总睡眠时间和睡眠潜伏期。由人类技术人员进行的金标准睡眠分期既耗时、昂贵,又存在评分者之间的不一致性,这也导致了对整夜统计数据的评分者之间的不一致性。深度学习算法在自动睡眠评分方面显示出了希望,但在睡眠统计数据的评分者之间的不一致性建模方面存在困难。为此,我们引入了一种使用基于归一化流的条件生成模型的新技术,该技术允许对整夜睡眠统计数据的评分者之间的不一致性进行建模,称为 U-Flow。我们在 70 名受试者的预留测试集中将 U-Flow 与其他自动评分方法进行了比较,每位受试者都由六位独立的评分者进行评分。该方法在基于多数投票的睡眠图的准确性和 Cohen's kappa 方面实现了类似的睡眠分期性能。同时,U-Flow 在建模整夜睡眠统计数据的评分者之间的不一致性方面优于其他方法。关于整夜睡眠统计数据的评分者之间的不一致性可能会产生重大影响,并且这种不一致性可能携带有关睡眠结构的诊断和具有科学相关性的信息。U-Flow 能够有效地对这种不一致性进行建模,并支持进一步研究评分者之间的不一致性对睡眠医学和基础睡眠研究的影响。

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