Classifier Implementation for Spontaneous EEG Activity During Schizophrenic Psychosis



Título del documento: Classifier Implementation for Spontaneous EEG Activity During Schizophrenic Psychosis
Revista: Computación y sistemas
Base de datos:
Número de sistema: 000560603
ISSN: 1405-5546
Autores: 1
2
3
4
5
Instituciones: 1KIIT University, School of Computer Engineering, Orissa. India
2KIIT University, School of Computer Application, Orissa. India
3Sultan Zainal Abidin University, Faculty of Health Science, Terengganu. Malasia
4Sultan Zainal Abidin University, Faculty of Informatics and Computing, Terengganu. Malasia
5Idiap Research Institute, Martigny. Suiza
Año:
Periodo: Jul-Sep
Volumen: 25
Número: 3
Paginación: 493-514
País: México
Idioma: Inglés
Tipo de documento: Artículo
Resumen en inglés The mental illness or abnormal brain is recorded with EEG, and it records corollary discharge, which helps to identify the schizophrenia spontaneous situation of a patient. The recordings are in a time interval that shows the brain’s different nodes normal and abnormal activities. The spiking neural network procedure can be applied here to detect the abnormalities of patients. The abnormal spikes are detected using the temporal contrast method, and Poisson probability has been used to find the probability of abnormality discharge of each channel. Then recurrent neural network advance version long short-term memory trained with nine channels of probability values to generate the probability of spontaneous EEG activity during schizophrenia. On learning of a long short-term memory trainer, Adam gradient optimization technique is implemented. Finally, using decoded temporal contrast method schizophrenia patients predicted by the above procedure accuracy using cross-validation method predicted as 97% whereas actual positive rate showing computes the area under the receiver operating characteristic curve as 100% area. Again, after a threshold implement of the temporal contrast method, it is predicted 100% accuracy with the testing dataset. The novelty and robotic of a spiking neural network model called probabilistic spiking neuron model are shown after the mathematical formulation of input data set to generate the spikes carefully and intelligently like Hz value of EEG should be fixed accurately for the schizophrenia patients and selection of suitable recurrent supervised classifier.
Disciplinas: Ciencias de la computación
Palabras clave: Procesamiento de datos
Keyword: EEG,
Spiking neural network,
Long short-term memory,
Temporal contrast,
Poisson probability distribution,
Schizophrenia,
Probabilistic spiking neuron model,
Electroencephalography spikes,
Data processing
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