Preliminary study on the impact of EEG density on TMS-EEG classification in Alzheimer's disease

2022 44th Annual International Conference of the IEEE Engineering in Medicine & Biology Society (EMBC)(2022)

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摘要
Transcranial magnetic stimulation co-registered with electroencephalographic (TMS-EEG) has previously proven a helpful tool in the study of Alzheimer's disease (AD). In this work, we investigate the use of TMS-evoked EEG responses to classify AD patients from healthy controls (HC). By using a dataset containing 17AD and 17HC, we extract various time domain features from individual TMS responses and average them over a low, medium and high density EEG electrode set. Within a leave-one-subject-out validation scenario, the best classification performance for AD vs. HC was obtained using a high-density electrode with a Random Forest classifier. The accuracy, sensitivity and specificity were of 92.7%, 96.58% and 88.82% respectively. Clinical relevance— TMS-EEG responses were successfully used to identify Alzheimer's disease patients from healthy controls
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关键词
Alzheimer Disease,Diagnosis, Differential,Electroencephalography,Humans,Sensitivity and Specificity,Transcranial Magnetic Stimulation
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