石墨烯纳米粉和神经网络提高脑电电极灵敏度用于精神分裂症诊断

Q3 Environmental Science
V. Divya, Dr. S. Sendil Kumar, S. Usha, S. Hemamalini, Gokula Krishnan
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引用次数: 1

摘要

幻觉和妄想是精神分裂症的症状。由于持续的幻听和幻视,精神分裂症患者无法清楚地处理现实。大脑活动异常是由妄想和幻觉引起的。在EEG信号的捕获过程中,异常行为被检测到。脑电图电极不能很好地检测大脑的电流分布。精神分裂症会导致脑电图信号扭曲和灵敏度降低,从而导致对大脑活动的错误解释。本文提出了一种由石墨烯纳米粉末构建的脑电图电极,该电极对大脑的微弱电活动敏感。冷喷涂方法创造了石墨烯脑电图电极,改善了材料的结合和化学特性。通过获得精神分裂症患者的脑电图读数,评估石墨烯电极的灵敏度。EEG信号是在受试者参加认知测试时收集的,如问题会话和数字问题。几种神经网络(NN)算法可以用于识别脑电图记录中的幻觉和妄想方面。NN提供了关于EEG信号中幻觉和妄想方面的进一步细节,显示了石墨烯电极。与其他神经网络模型相比,对几种神经网络模型的比较研究表明,BFGS准牛顿反向传播算法准确地识别了幻觉和妄想特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving EEG Electrode Sensitivity with Graphene Nano Powder and Neural Network for Schizophrenia Diagnosis
Hallucinations and delusions are symptoms of schizophrenia. Due to persistent auditory and visual hallucinations, a person with schizophrenia cannot process reality clearly. Abnormal brain activity results from delusion and hallucination. During the capture of EEG signals, aberrant behavior is detected. The EEG electrodes do not well detect the brain's current distribution. Schizophrenia causes the EEG signal to be warped and less sensitive, which results in incorrect interpretation of brain activity. In this paper, an EEG electrode constructed of graphene nanopowder is suggested that is sensitive to the brain's weak electrical activity. The cold spray approach created graphene EEG electrodes, improving the material bonding and chemical characteristics. By obtaining EEG readings from schizophrenic patients, the sensitivity of the graphene electrode was assessed. The EEG signal was collected from the subject when taking part in cognitive tests like question sessions and numerical problems. Several neural networks (NN) algorithms can be used to identify hallucination and delusion aspects in EEG recordings. Further details regarding the hallucination and delusion aspects in the EEG signal were provided by the NN, showing a Graphene electrode. As compared to other NN models, the comparative study of several NN models revealed that the BFGS quasi-Newtonian backpropagation algorithm accurately recognized hallucination and delusion features.
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来源期刊
CiteScore
1.50
自引率
0.00%
发文量
56
审稿时长
8 weeks
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