Medical Applications of EEG Wave Classification
نویسندگان
چکیده
Did you know your brain continuously emits electric waves, even while you sleep? Based on a sample of wave measurements, physicians specializing in sleep medicine can use statistical tools to classify your sleep pattern as normal or problematic. Brain-computer interfaces (BCIs) now being developed can classify a disabled person’s thinking based on wave measurements and automatically execute necessary instructions. This type of research is exciting, but conducting it requires knowledge of medicine, biology, statistics, physics, and computer science. Electroencephalogram (EEG) is the recording of electrical activity through electrode sensors placed on the scalp. The electricity is recorded as waves that can be classified as normal or abnormal. Measuring EEG signals is not an intrusive procedure; it causes no pain and has been used routinely for several decades. Different types of normal waves can indicate various states or activity levels. Abnormal waves can indicate medical problems. Two important applications of EEG wave classification are diagnosis of sleep disorders and construction of BCIs to assist disabled people with daily living tasks. Medical Background
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تاریخ انتشار 2009