Using interictal seizure-free EEG data to recognise patients with epilepsy based on machine learning of brain functional connectivity

التفاصيل البيبلوغرافية
العنوان: Using interictal seizure-free EEG data to recognise patients with epilepsy based on machine learning of brain functional connectivity
المؤلفون: Liangyu Chen, Matteo De Marco, Daniel Blackburn, Zhiqing Li, Jun Cao, Zoe C. Unwin, Panagiotis Zis, Xiaocai Shan, Jiaru Zou, Yifan Zhao, Kacper Grajcar, Richard A. Grünewald, Ptolemaios G. Sarrigiannis
بيانات النشر: Elsevier, 2021.
سنة النشر: 2021
مصطلحات موضوعية: medicine.medical_specialty, 0206 medical engineering, Biomedical Engineering, Health Informatics, 02 engineering and technology, Audiology, Electroencephalography, 03 medical and health sciences, Epilepsy, 0302 clinical medicine, Eeg data, Medicine, Psychogenic disease, Ictal, qEEG, Seizure activity, medicine.diagnostic_test, business.industry, Functional connectivity, brain connectivity, medicine.disease, 020601 biomedical engineering, coherence, classification, correlation, Signal Processing, Observational study, business, 030217 neurology & neurosurgery
الوصف: Most seizures in adults with epilepsy occur rather infrequently and as a result, the interictal EEG plays a crucial role in the diagnosis and classification of epilepsy. However, empirical interpretation, of a first EEG in adult patients, has a very low sensitivity ranging between 29–55 %. Useful EEG information remains buried within the signals in seizure-free EEG epochs, far beyond the observational capabilities of any specialised physician in this field. Unlike most of the existing works focusing on either seizure data or single-variate method, we introduce a multi-variate method to characterise sensor level brain functional connectivity from interictal EEG data to identify patients with generalised epilepsy. A total of 9 connectivity features based on 5 different measures in time, frequency and time-frequency domains have been tested. The solution has been validated by the K-Nearest Neighbour algorithm, classifying an epilepsy group (EG) vs healthy controls (HC) and subsequently with another cohort of patients characterised by non-epileptic attacks (NEAD), a psychogenic type of disorder. A high classification accuracy (97 %) was achieved for EG vs HC while revealing significant spatio-temporal deficits in the frontocentral areas in the beta frequency band. For EG vs NEAD, the classification accuracy was only about 73 %, which might be a reflection of the well-described coexistence of NEAD with epileptic attacks. Our work demonstrates that seizure-free interictal EEG data can be used to accurately classify patients with generalised epilepsy from HC and that more systematic work is required in this direction aiming to produce a clinically useful diagnostic method.
اللغة: English
URL الوصول: https://explore.openaire.eu/search/publication?articleId=doi_dedup___::311ddaeccfc47cf1134a684d4cf33848
https://dspace.lib.cranfield.ac.uk/handle/1826/19743
حقوق: OPEN
رقم الأكسشن: edsair.doi.dedup.....311ddaeccfc47cf1134a684d4cf33848
قاعدة البيانات: OpenAIRE