A Proposal for Sleep Scoring Analysis Designed by Computer Assisted using Physiological Signals

Hemu Farooq, Anuj Jain, V. K. Sharma
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Abstract

Sleep is utterly regarded as compulsory component for a person’s prosperity and is an exceedingly important element for wellbeing of a healthy person. It is a condition in which an individual is physically and mentally at rest. The conception of sleep is considered extremely peculiar and is a topic of discussion and researchers all over the world has been attracted by this concept. Sleep analysis and its stages is analyzed to be useful in sleep research and sleep medicine area. By properly analyzing the sleep scoring system and its different stages has proven helpful for diagnosing sleep disorders. As it’s seen, sleep stage classification by manual process is a hectic procedure as it takes sufficient time for sleep experts to perform data analysis. Besides, mistakes and irregularities in between classification of same data can be recurrent. Therefore, the use of automatic scoring system in order to support reliable classification is highly in greater use. The scheduled work provides an insight to use the automatic scheme which is based on real time EMG signals and Artificial neural network. EMG is an electro neurological diagnostic tool which evaluates and records the electrical activity generated by muscle cells. The sleep scoring analysis can be applied by recording Electroencephalogram (EEG), Electromyogram (EMG), and Electrooculogram (EOG) based on epoch and this method is termed as PSG test or polysomnography test. The epoch measured has length segments for a period of 30 seconds. The standard database of EMG records was gathered from various hospitals in sleep laboratory which gives the different stages of sleep. These are Waking, Non-REM1 (stage-1), NonREM2 (stage-2), Non-REM3 (stage-3), REM. The collection of data was done for the period of 30 second known as epoch, for seven hours. The dataset obtained from the biological signal was managed so that necessary data is to be extracted from degenerated signal utilized for the purpose of study. As a matter of fact, it is known electrical signals are distributed throughout the body and is needed to be removed. These unwanted signals are termed as artifacts and they are removed with the help of filters. In this proposed work, the signal is filtered by making use of low-pass filter called Butterworth. The withdrawn characteristics were instructed and categorized by utilizing Artificial Neural Network (ANN). ANN, on the other hand is highly complicated network and utilizing same in the field of biomedical when contracted with electrical signals, acquired from human body is itself a novel. The precision obtained by the help of the procedure was discovered to be satisfactory and hence the process is very useful in clinics of sleep, especially helpful for neuro-scientists for discovering the disturbance in sleep.
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基于生理信号的计算机辅助睡眠评分分析方法研究
睡眠完全被认为是一个人的繁荣的必要组成部分,是一个健康的人的幸福的一个极其重要的因素。这是一种状态,在这种状态下,一个人的身体和精神都处于休息状态。睡眠的概念被认为是非常奇特的,是一个讨论的话题,全世界的研究人员都被这个概念所吸引。对睡眠分析及其阶段进行了分析,以期对睡眠研究和睡眠医学领域有所帮助。通过正确分析睡眠评分系统及其不同阶段已被证明有助于诊断睡眠障碍。正如我们所看到的,人工进行睡眠阶段分类是一个忙乱的过程,因为睡眠专家需要足够的时间来进行数据分析。此外,同一数据分类之间的错误和不规则可能会反复出现。因此,使用自动评分系统以支持可靠的分类是在很大程度上使用的。计划的工作为使用基于实时肌电信号和人工神经网络的自动化方案提供了见解。肌电图是一种电神经诊断工具,用于评估和记录肌肉细胞产生的电活动。睡眠评分分析可以通过记录脑电图(EEG)、肌电图(EMG)和眼电图(EOG)来进行,这种方法被称为PSG测试或多导睡眠图测试。所测历元的长度段为30秒。从各医院的睡眠实验室收集了标准的肌电记录数据库,给出了睡眠的不同阶段。这些阶段分别是清醒、非rem1(阶段1)、非rem2(阶段2)、非rem3(阶段3)、REM。数据收集在30秒的时间内完成,称为epoch,共7小时。对从生物信号中获得的数据集进行管理,以便从退化的信号中提取必要的数据用于研究目的。事实上,众所周知,电信号分布在全身各处,需要去除。这些不需要的信号被称为伪影,它们被帮助滤波器去除。在本工作中,利用巴特沃斯低通滤波器对信号进行滤波。利用人工神经网络(ANN)对提取特征进行指示和分类。另一方面,人工神经网络是一种高度复杂的网络,与人体电信号相结合,将其应用于生物医学领域,这本身就是一种新颖的方法。在此过程的帮助下获得的精度是令人满意的,因此该过程在睡眠临床中非常有用,特别是对神经科学家发现睡眠障碍很有帮助。
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