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Predicting the Effects of Repetitive Transcranial Magnetic Stimulation on Cognitive Functions in Patients With Alzheimer's Disease by Automated EEG Analysis
by
Hanoglu, Lutfu
, Kayasandik, Cihan Bilge
, Velioglu, Halil Aziz
in
Algorithms
/ Alzheimer's disease
/ Brain research
/ Classification
/ Cognitive ability
/ Data analysis
/ Dementia
/ Drug therapy
/ EEG
/ Electroencephalography
/ Feature selection
/ Magnetic fields
/ Mental depression
/ Neurodegenerative diseases
/ Patients
/ Pharmaceuticals
/ Sample size
/ Schizophrenia
/ Transcranial magnetic stimulation
2022
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Predicting the Effects of Repetitive Transcranial Magnetic Stimulation on Cognitive Functions in Patients With Alzheimer's Disease by Automated EEG Analysis
by
Hanoglu, Lutfu
, Kayasandik, Cihan Bilge
, Velioglu, Halil Aziz
in
Algorithms
/ Alzheimer's disease
/ Brain research
/ Classification
/ Cognitive ability
/ Data analysis
/ Dementia
/ Drug therapy
/ EEG
/ Electroencephalography
/ Feature selection
/ Magnetic fields
/ Mental depression
/ Neurodegenerative diseases
/ Patients
/ Pharmaceuticals
/ Sample size
/ Schizophrenia
/ Transcranial magnetic stimulation
2022
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Do you wish to request the book?
Predicting the Effects of Repetitive Transcranial Magnetic Stimulation on Cognitive Functions in Patients With Alzheimer's Disease by Automated EEG Analysis
by
Hanoglu, Lutfu
, Kayasandik, Cihan Bilge
, Velioglu, Halil Aziz
in
Algorithms
/ Alzheimer's disease
/ Brain research
/ Classification
/ Cognitive ability
/ Data analysis
/ Dementia
/ Drug therapy
/ EEG
/ Electroencephalography
/ Feature selection
/ Magnetic fields
/ Mental depression
/ Neurodegenerative diseases
/ Patients
/ Pharmaceuticals
/ Sample size
/ Schizophrenia
/ Transcranial magnetic stimulation
2022
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Predicting the Effects of Repetitive Transcranial Magnetic Stimulation on Cognitive Functions in Patients With Alzheimer's Disease by Automated EEG Analysis
Journal Article
Predicting the Effects of Repetitive Transcranial Magnetic Stimulation on Cognitive Functions in Patients With Alzheimer's Disease by Automated EEG Analysis
2022
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Overview
Alzheimer’s disease (AD) is a progressive, neurodegenerative brain disorder that generally affects the elderly. Today, after the limited benefit of the pharmacological treatment strategies, numerous non-invasive brain stimulation techniques have been developed. Transcranial magnetic stimulation (TMS), based on electromagnetic stimulation, is one of the most widely used methods. The main problem in the use of TMS is the existence of large individual variability in the results. This causes a waste of money, time, and more importantly, a burden for delicate patients. Hence, it is a necessity to form an efficient and personalized TMS application protocol. We performed a machine learning analysis to predict AD patients’ responses to TMS by analyzing their Electroencephalography (EEG) signals. For that purpose, we analyzed both the EEG signals collected before and after the TMS application (EEG1 and EEG2 respectively). Through correlating EEG1 and rTMS outcomes, we tried to predict patients’ responses before the treatment application. On the other hand, by EEG2 analysis, we investigated TMS impacts on EEG and more importantly if this impact is correlated with patients’ response to the treatment. We used the Support Vector Machines (SVM) classifier due to its multiple advantages for the current task with feature selection processes by Stepwise Linear Discriminant Analysis (SWLDA) and SVM. However, to justify our numerical analysis framework, we examined and compared the performances of different feature selection and classification techniques. Since we have a limited sample number, we used the leave-one-out method for the validation with the Monte Carlo technique to eliminate bias by small sample size. In the conclusion, we observed that the correlation between rTMS outcomes and EEG2 is stronger than EEG1, since we observed respectively %93 and %79 accuracies during our data analysis. Besides the informative features of EEG2 are focused on theta band. That indicates that TMS is characterizing the theta band signals in Alzheimer’s patients in direct relation to patients’ response to rTMS. This shows that it is more possible to determine patients’ benefit from the TMS at the early stages of the treatment, which would increase the efficiency of rTMS applications on Alzheimer’s disease patients.
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