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Estimating actigraphy from motion artifacts in ECG and respiratory effort signals

机译:根据心电图和呼吸努力信号中的运动伪影估算书画

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Recent work in unobtrusive sleep/wake classification has shown that cardiac and respiratory features can help improve classification performance. Nevertheless, actigraphy remains the single most discriminative modality for this task. Unfortunately, it requires the use of dedicated devices in addition to the sensors used to measure electrocardiogram (ECG) or respiratory effort. This paper proposes a method to estimate actigraphy from the body movement artifacts present in the ECG and respiratory inductance plethysmography (RIP) based on the time-frequency analysis of those signals. Using a continuous wavelet transform to analyze RIP, and ECG and RIP combined, it provides a surrogate measure of actigraphy with moderate correlation (for ECG+ RIP, rho = 0.74, p < 0.001) and agreement (mean bias ratio of 0.94 and 95% agreement ratios of 0.11 and 8.45) with reference actigraphy. More important, it can be used as a replacement of actigraphy in sleep/wake classification: after cross-validation with a data set comprising polysomnographic (PSG) recordings of 15 healthy subjects and 25 insomniacs annotated by an external sleep technician, it achieves a statistically non-inferior classification performance when used together with respiratory features (average kappa of 0.64 for 15 healthy subjects, and 0.50 for a dataset with 40 healthy and insomniac subjects), and when used together with respiratory and cardiac features (average kappa of 0.66 for 15 healthy subjects, and 0.56 for 40 healthy and insomniac subjects). Since this method eliminates the need for a dedicated actigraphy device, it reduces the number of sensors needed for sleep/wake classification to a single sensor when using respiratory features, and to two sensors when using respiratory and cardiac features without any loss in performance. It offers a major benefit in terms of comfort for long-term home monitoring and is immediately applicable for legacy ECG and RIP monitoring devices already used in clinical practice and which do not have an accelerometer built-in.
机译:近期对睡眠/苏醒分类的研究表明,心脏和呼吸功能可以帮助改善分类性能。尽管如此,书法仍然是这项任务唯一最具区别性的方式。不幸的是,除了用于测量心电图(ECG)或呼吸作用的传感器之外,它还需要使用专用设备。本文提出了一种基于时频分析对心电图和呼吸感应体积描记法(RIP)中存在的人体运动伪影进行估计活动记录的方法。使用连续小波变换分析RIP,并将ECG和RIP结合使用,它提供了具有适度相关性(对于ECG + RIP,rho = 0.74,p <0.001)和一致(平均偏差比为0.94和95%一致)的笔迹替代指标比值为0.11和8.45)。更重要的是,它可以代替睡眠/唤醒分类中的动作描记法:与包含15位健康受试者和25位失眠症的多导睡眠图(PSG)记录进行交叉验证的数据集后,外部睡眠技术员对其进行了注释,与呼吸功能一起使用时的非劣等分类表现(15名健康受试者的平均kappa为0.64,对于40位健康和失眠受试者的数据集的平均kappa为0.50),以及与呼吸系统和心脏特征(15的0.66的平均kappa健康受试者,而40名健康和失眠受试者则为0.56)。由于此方法无需专用的书法设备,因此将呼吸/睡眠分类所需的传感器数量减少到使用呼吸功能时的单个传感器,减少到使用呼吸和心脏功能时的两个传感器,而不会造成性能损失。它在长期家庭监控的舒适性方面具有主要优势,可立即用于临床实践中已使用且未内置加速度计的传统ECG和RIP监控设备。

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