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      Intracerebral EEG Artifact Identification Using Convolutional Neural Networks

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          Abstract

          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.

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          Most cited references17

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          Real-Time Patient-Specific ECG Classification by 1-D Convolutional Neural Networks.

          This paper presents a fast and accurate patient-specific electrocardiogram (ECG) classification and monitoring system.
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            DeepSleepNet: A Model for Automatic Sleep Stage Scoring Based on Raw Single-Channel EEG

            This paper proposes a deep learning model, named DeepSleepNet, for automatic sleep stage scoring based on raw single-channel EEG. Most of the existing methods rely on hand-engineered features, which require prior knowledge of sleep analysis. Only a few of them encode the temporal information, such as transition rules, which is important for identifying the next sleep stages, into the extracted features. In the proposed model, we utilize convolutional neural networks to extract time-invariant features, and bidirectional-long short-term memory to learn transition rules among sleep stages automatically from EEG epochs. We implement a two-step training algorithm to train our model efficiently. We evaluated our model using different single-channel EEGs (F4-EOG (left), Fpz-Cz, and Pz-Oz) from two public sleep data sets, that have different properties (e.g., sampling rate) and scoring standards (AASM and R&K). The results showed that our model achieved similar overall accuracy and macro F1-score (MASS: 86.2%-81.7, Sleep-EDF: 82.0%-76.9) compared with the state-of-the-art methods (MASS: 85.9%-80.5, Sleep-EDF: 78.9%-73.7) on both data sets. This demonstrated that, without changing the model architecture and the training algorithm, our model could automatically learn features for sleep stage scoring from different raw single-channel EEGs from different data sets without utilizing any hand-engineered features.
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              Signal quality of simultaneously recorded invasive and non-invasive EEG.

              Both invasive and non-invasive electroencephalographic (EEG) recordings from the human brain have an increasingly important role in neuroscience research and are candidate modalities for medical brain-machine interfacing. It is often assumed that the major artifacts that compromise non-invasive EEG, such as caused by blinks and eye movement, are absent in invasive EEG recordings. Quantitative investigations on the signal quality of simultaneously recorded invasive and non-invasive EEG in terms of artifact contamination are, however, lacking. Here we compared blink related artifacts in non-invasive and invasive EEG, simultaneously recorded from prefrontal and motor cortical regions using an approach suitable for detection of small artifact contamination. As expected, we find blinks to cause pronounced artifacts in non-invasive EEG both above prefrontal and motor cortical regions. Unexpectedly, significant blink related artifacts were also found in the invasive recordings, in particular in the prefrontal region. Computing a ratio of artifact amplitude to the amplitude of ongoing brain activity, we find that the signal quality of invasive EEG is 20 to above 100 times better than that of simultaneously obtained non-invasive EEG. Thus, while our findings indicate that ocular artifacts do exist in invasive recordings, they also highlight the much better signal quality of invasive compared to non-invasive EEG data. Our findings suggest that blinks should be taken into account in the experimental design of ECoG studies, particularly when event related potentials in fronto-anterior brain regions are analyzed. Moreover, our results encourage the application of techniques for reducing ocular artifacts to further optimize the signal quality of invasive EEG.
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                Author and article information

                Contributors
                nejedly@isibrno.cz
                Journal
                Neuroinformatics
                Neuroinformatics
                Neuroinformatics
                Springer US (New York )
                1539-2791
                1559-0089
                13 August 2018
                13 August 2018
                2019
                : 17
                : 2
                : 225-234
                Affiliations
                [1 ]ISNI 0000 0004 0608 7557, GRID grid.412752.7, International Clinical Research Center, , St. Anne’s University Hospital, ; Brno, Czech Republic
                [2 ]ISNI 0000 0004 0428 7459, GRID grid.438850.2, The Czech Academy of Sciences, , Institute of Scientific Instruments, ; Brno, Czech Republic
                [3 ]Department of Neurology, Mayo Clinic, Mayo Systems Electrophysiology Laboratory, Rochester, MN USA
                [4 ]ISNI 0000 0004 0608 7557, GRID grid.412752.7, Brno Epilepsy Center, Department of Neurology, , St. Anne’s University Hospital and Medical Faculty of Masaryk University, ; Brno, Czech Republic
                [5 ]ISNI 0000 0001 2194 0956, GRID grid.10267.32, CEITEC – Central European Institute of Technology, , Masaryk University, ; Brno, Czech Republic
                [6 ]ISNI 0000 0004 0459 167X, GRID grid.66875.3a, Department of Physiology and Biomedical Engineering, , Mayo Clinic, ; Rochester, MN USA
                Author information
                http://orcid.org/0000-0002-5382-2134
                Article
                9397
                10.1007/s12021-018-9397-6
                6459786
                30105544
                0fd8e42d-5874-40e7-a166-34b4a74a9bad
                © The Author(s) 2018

                Open Access This article is distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made.

                History
                Funding
                Funded by: AZV CR
                Award ID: 16-33798A
                Funded by: MEYS CR
                Award ID: LO1212
                Award ID: LQ1605
                Funded by: FundRef http://dx.doi.org/10.13039/100000002, National Institutes of Health;
                Award ID: UH2-NS095495
                Award ID: R01-NS063039
                Funded by: FundRef http://dx.doi.org/10.13039/501100001824, Grantová Agentura České Republiky;
                Award ID: P103/11/0933),
                Funded by: FundRef http://dx.doi.org/10.13039/501100008530, European Regional Development Fund;
                Award ID: CZ.1.05/ 1.1.00/02.0123
                Funded by: Faculty of Medicine MU
                Categories
                Original Article
                Custom metadata
                © Springer Science+Business Media, LLC, part of Springer Nature 2019

                Neurosciences
                intracranial eeg (ieeg),noise detection,convolutional neural networks (cnn),artifact probability matrix (apm)

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