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Automating the Detection of REM Sleep Behaviour Disorder

机译:自动检测REM睡眠行为障碍

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摘要

This study aims to develop automated diagnostic tools to aid in the identification of rapid-eye-movement (REM) sleep behaviour disorder (RBD). Those diagnosed with RBD enact their dreams and therefore present an abnormal characteristic of movement during REM sleep. Several methods have been proposed for RBD detection that use electromyogram (EMG) recordings and manually annotated sleep stages to objectively quantify abnormal REM movement. In this work we further develop these proven techniques with additional features that incorporate the relationship of muscle movement between sleep stages and general sleep architecture. Performance is evaluated using polysomnography (PSG) recordings from 43 aged-matched healthy controls and subjects diagnosed with RBD obtained from multiple institutions and publicly available resources. Using a random forest classifier with established and additional features, the performance of RBD detection was shown to improve upon established metrics (achieving 88% accuracy, 91% sensitivity, and 86% specificity).
机译:这项研究旨在开发自动诊断工具,以帮助识别快速眼动(REM)睡眠行为障碍(RBD)。那些被诊断患有RBD的人实现了自己的梦想,因此在REM睡眠期间表现出异常的运动特征。已经提出了几种用于RBD检测的方法,这些方法使用肌电图(EMG)记录和手动注释的睡眠阶段来客观地量化REM异常运动。在这项工作中,我们进一步开发了这些经过验证的技术,并具有其他功能,这些功能整合了睡眠阶段与一般睡眠结构之间的肌肉运动关系。使用来自43个年龄匹配的健康对照者和多机构和可公开获得的资源诊断为RBD的受试者的多导睡眠监测(PSG)记录来评估表现。使用具有确定的和附加功能的随机森林分类器,RBD检测的性能被证明可以改善确定的指标(达到88%的准确度,91%的灵敏度和86%的特异性)。

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