Detailed Information on Publication Record
2019
Intracerebral EEG Artifact Identification Using Convolutional Neural Networks
NEJEDLY, Petr, Jan CIMBALNIK, Petr KLIMES, Filip PLESINGER, Josef HALAMEK et. al.Basic information
Original name
Intracerebral EEG Artifact Identification Using Convolutional Neural Networks
Authors
NEJEDLY, Petr (203 Czech Republic, guarantor), Jan CIMBALNIK (203 Czech Republic), Petr KLIMES (203 Czech Republic), Filip PLESINGER (203 Czech Republic), Josef HALAMEK (203 Czech Republic), Vaclav KREMEN (203 Czech Republic), Ivo VISCOR (203 Czech Republic), Benjamin H. BRINKMANN (840 United States of America), Martin PAIL (203 Czech Republic, belonging to the institution), Milan BRÁZDIL (203 Czech Republic, belonging to the institution), Gregory WORRELL (840 United States of America) and Pavel JURAK (203 Czech Republic)
Edition
NEUROINFORMATICS, TOTOWA, HUMANA PRESS INC, 2019, 1539-2791
Other information
Language
English
Type of outcome
Článek v odborném periodiku
Field of Study
30103 Neurosciences
Country of publisher
United States of America
Confidentiality degree
není předmětem státního či obchodního tajemství
References:
Impact factor
Impact factor: 3.300
RIV identification code
RIV/00216224:14110/19:00107403
Organization unit
Faculty of Medicine
UT WoS
000464856900005
Keywords in English
Intracranial EEG (iEEG); Noise detection; Convolutional neural networks (CNN); Artifact probability matrix (APM)
Tags
International impact, Reviewed
Změněno: 3/3/2020 16:52, Mgr. Pavla Foltynová, Ph.D.
Abstract
V originále
Manual and semi-automatic identification of artifacts and unwanted physiological signals in large intracerebral electroencephalographic (iEEG) recordings is time consuming and inaccurate. To date, unsupervised methods to accurately detect iEEG artifacts are not available. This study introduces a novel machine-learning approach for detection of artifacts in iEEG signals in clinically controlled conditions using convolutional neural networks (CNN) and benchmarks the method's performance against expert annotations. The method was trained and tested on data obtained from St Anne's University Hospital (Brno, Czech Republic) and validated on data from Mayo Clinic (Rochester, Minnesota, U.S.A). We show that the proposed technique can be used as a generalized model for iEEG artifact detection. Moreover, a transfer learning process might be used for retraining of the generalized version to form a data-specific model. The generalized model can be efficiently retrained for use with different EEG acquisition systems and noise environments. The generalized and specialized model F1 scores on the testing dataset were 0.81 and 0.96, respectively. The CNN model provides faster, more objective, and more reproducible iEEG artifact detection compared to manual approaches.
Links
GAP103/11/0933, research and development project |
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NV16-33798A, research and development project |
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