{"title":"A Proposal for Sleep Scoring Analysis Designed by Computer Assisted using Physiological Signals","authors":"Hemu Farooq, Anuj Jain, V. K. Sharma","doi":"10.35940/ijeat.e2609.0610521","DOIUrl":null,"url":null,"abstract":"Sleep is utterly regarded as compulsory component\nfor a person’s prosperity and is an exceedingly important element\nfor wellbeing of a healthy person. It is a condition in which an\nindividual is physically and mentally at rest. The conception of\nsleep is considered extremely peculiar and is a topic of discussion\nand researchers all over the world has been attracted by this\nconcept. Sleep analysis and its stages is analyzed to be useful in\nsleep research and sleep medicine area. By properly analyzing\nthe sleep scoring system and its different stages has proven\nhelpful for diagnosing sleep disorders. As it’s seen, sleep stage\nclassification by manual process is a hectic procedure as it takes\nsufficient time for sleep experts to perform data analysis. Besides,\nmistakes and irregularities in between classification of same data\ncan be recurrent. Therefore, the use of automatic scoring system\nin order to support reliable classification is highly in greater use.\nThe scheduled work provides an insight to use the automatic\nscheme which is based on real time EMG signals and Artificial\nneural network. EMG is an electro neurological diagnostic tool\nwhich evaluates and records the electrical activity generated by\nmuscle cells. The sleep scoring analysis can be applied by\nrecording Electroencephalogram (EEG), Electromyogram\n(EMG), and Electrooculogram (EOG) based on epoch and this\nmethod is termed as PSG test or polysomnography test. The\nepoch measured has length segments for a period of 30 seconds.\nThe standard database of EMG records was gathered from\nvarious hospitals in sleep laboratory which gives the different\nstages of sleep. These are Waking, Non-REM1 (stage-1), NonREM2 (stage-2), Non-REM3 (stage-3), REM. The collection of\ndata was done for the period of 30 second known as epoch, for\nseven hours. The dataset obtained from the biological signal was\nmanaged so that necessary data is to be extracted from\ndegenerated signal utilized for the purpose of study. As a matter\nof fact, it is known electrical signals are distributed throughout\nthe body and is needed to be removed. These unwanted signals\nare termed as artifacts and they are removed with the help of\nfilters. In this proposed work, the signal is filtered by making use\nof low-pass filter called Butterworth. The withdrawn\ncharacteristics were instructed and categorized by utilizing\nArtificial Neural Network (ANN). ANN, on the other hand is\nhighly complicated network and utilizing same in the field of\nbiomedical when contracted with electrical signals, acquired\nfrom human body is itself a novel. The precision obtained by the\nhelp of the procedure was discovered to be satisfactory and hence\nthe process is very useful in clinics of sleep, especially helpful for\nneuro-scientists for discovering the disturbance in sleep.","PeriodicalId":23601,"journal":{"name":"VOLUME-8 ISSUE-10, AUGUST 2019, REGULAR ISSUE","volume":"49 1","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2021-06-30","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"VOLUME-8 ISSUE-10, AUGUST 2019, REGULAR ISSUE","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.35940/ijeat.e2609.0610521","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
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.