利用灰色区域模型对自动睡眠分析进行回顾性验证,以实现人在回路中的评分方法。

IF 3.4 3区 医学 Q2 CLINICAL NEUROLOGY
Matias Rusanen, Gabriel Jouan, Riku Huttunen, Sami Nikkonen, Sigríður Sigurðardóttir, Juha Töyräs, Brett Duce, Sami Myllymaa, Erna Sif Arnardottir, Timo Leppänen, Anna Sigridur Islind, Samu Kainulainen, Henri Korkalainen
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引用次数: 0

摘要

最先进的自动睡眠分期方法与人工睡眠分期相比,可靠性相当,时间效率更高。然而,由于决策过程缺乏透明度,全自动黑盒子解决方案很难适应临床工作流程。透明度对于自动方法与睡眠专家工作之间的互动(即在人在环应用中)至关重要。为了应对这些挑战,我们提出了一种自动睡眠分期模型(aSAGA),它能有效利用脑电图和脑电波通道,同时将不确定性的透明度纳入决策过程。我们通过使用一系列数据集(包括开放存取、临床和研究驱动的数据源)进行广泛的回顾性测试,验证了该模型。我们在脑电图和脑电波图信号上训练出的通道集合模型表现出了稳健性,并能在各种类型的睡眠记录(包括新型的自我应用家庭多导睡眠图)中进行推广。此外,我们还比较了睡眠分期中模型的不确定性和人类的不确定性,并研究了各种不确定性映射指标,以确定可能需要人工重新评估的模糊区域或 "灰色区域"。对这一灰色区域概念的验证表明,它具有提高睡眠分期准确性的潜力,并能突出睡眠专家可能难以达成共识的记录区域。总之,这项研究为自动睡眠分期的不确定性提供了技术基础和理解。我们的方法有可能改善自动睡眠分期与临床实践的结合;但是,还需要进一步的研究,在真实的临床环境和人类在环评分应用中对模型进行前瞻性测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Retrospective validation of automatic sleep analysis with grey areas model for human-in-the-loop scoring approach.

State-of-the-art automatic sleep staging methods have demonstrated comparable reliability and superior time efficiency to manual sleep staging. However, fully automatic black-box solutions are difficult to adapt into clinical workflow due to the lack of transparency in decision-making processes. Transparency would be crucial for interaction between automatic methods and the work of sleep experts, i.e., in human-in-the-loop applications. To address these challenges, we propose an automatic sleep staging model (aSAGA) that effectively utilises both electroencephalography and electro-oculography channels while incorporating transparency of uncertainty in the decision-making process. We validated the model through extensive retrospective testing using a range of datasets, including open-access, clinical, and research-driven sources. Our channel-wise ensemble model, trained on both electroencephalography and electro-oculography signals, demonstrated robustness and the ability to generalise across various types of sleep recordings, including novel self-applied home polysomnography. Additionally, we compared model uncertainty with human uncertainty in sleep staging and studied various uncertainty mapping metrics to identify ambiguous regions, or "grey areas", that may require manual re-evaluation. The validation of this grey area concept revealed its potential to enhance sleep staging accuracy and to highlight regions in the recordings where sleep experts may struggle to reach a consensus. In conclusion, this study provides a technical basis and understanding of automatic sleep staging uncertainty. Our approach has the potential to improve the integration of automatic sleep staging into clinical practice; however, further studies are needed to test the model prospectively in real-world clinical settings and human-in-the-loop scoring applications.

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来源期刊
Journal of Sleep Research
Journal of Sleep Research 医学-临床神经学
CiteScore
9.00
自引率
6.80%
发文量
234
审稿时长
6-12 weeks
期刊介绍: The Journal of Sleep Research is dedicated to basic and clinical sleep research. The Journal publishes original research papers and invited reviews in all areas of sleep research (including biological rhythms). The Journal aims to promote the exchange of ideas between basic and clinical sleep researchers coming from a wide range of backgrounds and disciplines. The Journal will achieve this by publishing papers which use multidisciplinary and novel approaches to answer important questions about sleep, as well as its disorders and the treatment thereof.
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