Diagnosis of Parkinson through Electroencephalogram Analysis
Publish place: 3National Conference on Development of Civil Engineering, Architecture, Electricity and Mechanical in Iran
Publish Year: 1395
نوع سند: مقاله کنفرانسی
زبان: English
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شناسه ملی سند علمی:
DCEAEM03_007
تاریخ نمایه سازی: 22 آبان 1395
Abstract:
Parkinson is an epidemical cerebral degenerative disease with the physical motion symptom and the second neurodegenerative disease after Alzheimer in the world. Nowadays, this disease round the world especially among non- young society is one of the main disability problems. If 80 percent of endocrine cells of Dopamine which are cerebral neurotransmitter demolish, Parkinson indications will be appeared. As soon as there are two or more symptom of tremor in resting and relaxed condition, calm or severe movement either in foot, hand, or the organs, any disturbance in the body balance, especially while the problem is observed in the half part of the body rather than the other, therefore Parkinson could be diagnosed. EEG signal shows electroencephalograph to that could contribute analyzing them in achieving Alfa, Beta, Theta, Delta, and Gama waves in line to consider their standard in time and frequencies domains in diagnosis of Parkinson signals. By analyzing linear and non-linear features of electroencephalogram and the neurotic plexus, the consequences have been deliberated for the normal person through Delta band it is 82.3 percent, for a mild in Theta band is 88.2 percent, and for the severe one in Gama band is 89.8 percent. In general and by considering the time domains, the most part has obtained in Delta band, so it has been called optimum state.
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Authors
Erfan mohamadi gohar
Biomedical engineering Azad university, tehran medical unit
Sussan rahimi bagha
Master degree from azad university of karaj
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