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Sleep stages classification using vital signals recordings

机译:使用重要信号录制睡眠阶段分类

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To evaluate the quality of a person's sleep it is essential to identify the sleep stages and their durations. Currently, the gold standard in terms of sleep analysis is overnight polysomnography (PSG), during which several techniques like EEG (eletroencephalogram), EOG (electrooculogram), EMG (electromyogram), ECG (electrocardiogram), SpO2 (blood oxygen saturation) and for example respiratory airflow and respiratory effort are recorded. These expensive and complex procedures, applied in sleep laboratories, are invasive and unfamiliar for the subjects and it is a reason why it might have an impact on the recorded data. These are the main reasons why low-cost home diagnostic systems are likely to be advantageous. Their aim is to reach a larger population by reducing the number of parameters recorded. Nowadays, many wearable devices promise to measure sleep quality using only the ECG and body-movement signals. This work presents an android application developed in order to proof the accuracy of an algorithm published in the sleep literature. The algorithm uses ECG and body movement recordings to estimate sleep stages. The pre-recorded signals fed into the algorithm have been taken from physionet1 online database. The obtained results have been compared with those of the standard method used in PSG. The mean agreement ratios between the sleep stages REM, Wake, NREM-1, NREM-2 and NREM-3 were 38.1%, 14%, 16%, 75% and 54.3%.
机译:为了评估一个人睡眠的质量,必须识别睡眠阶段及其持续时间至关重要。目前,在睡眠分析方面的黄金标准是隔夜多面体摄影(PSG),在此期间,eEG(ELETROUCEPHalographicaprace),EOG(电胶),EMG(电谱),ECG(心电图),SPO2(血氧饱和度)等技术等技术记录示例呼吸气流和呼吸努力。这些昂贵且复杂的程序应用于睡眠实验室,对受试者来说是侵入性和不熟悉的,这是它可能对记录数据产生影响的原因。这些是为什么低成本的家庭诊断系统可能是有利的主要原因。他们的目标是通过减少记录的参数的数量来达到更大的人口。如今,许多可穿戴设备承诺仅使用ECG和车身移动信号来测量睡眠质量。这项工作提出了一个开发的Android应用程序,以证明在睡眠文献中发表的算法的准确性。该算法使用ECG和身体运动录制来估计睡眠阶段。已从PhysooneT1在线数据库中取出算法的预先记录的信号。将得到的结果与PSG中使用的标准方法进行了比较。睡眠阶段REM,WAKE,NREM-1,NREM-2和NREM-3之间的平均协议比率为38.1%,14%,16%,75%和54.3%。

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