2014
DOI: 10.3389/fnagi.2014.00055
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The effects of automated artifact removal algorithms on electroencephalography-based Alzheimer's disease diagnosis

Abstract: Over the last decade, electroencephalography (EEG) has emerged as a reliable tool for the diagnosis of cortical disorders such as Alzheimer's disease (AD). EEG signals, however, are susceptible to several artifacts, such as ocular, muscular, movement, and environmental. To overcome this limitation, existing diagnostic systems commonly depend on experienced clinicians to manually select artifact-free epochs from the collected multi-channel EEG data. Manual selection, however, is a tedious and time-consuming pro… Show more

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Cited by 58 publications
(31 citation statements)
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“…Many attempts have been made to reject or mitigate eye movement artifacts, to reduce interobserver variability, and to improve efficiency in visible inspection of the data (Croft et al , 2000, Cassani et al , 2014. Blind source separation, such as independent component analysis, is increasingly used for the detection and removal of ocular artifacts (LeVan et al , 2006, Gao et al , 2010, although it is unknown to what extent these artifact reduction methods influence functional connectivity and network metrics.…”
Section: Artifact Handling and Filteringmentioning
confidence: 99%
“…Many attempts have been made to reject or mitigate eye movement artifacts, to reduce interobserver variability, and to improve efficiency in visible inspection of the data (Croft et al , 2000, Cassani et al , 2014. Blind source separation, such as independent component analysis, is increasingly used for the detection and removal of ocular artifacts (LeVan et al , 2006, Gao et al , 2010, although it is unknown to what extent these artifact reduction methods influence functional connectivity and network metrics.…”
Section: Artifact Handling and Filteringmentioning
confidence: 99%
“…It is the novel feature for AD diagnosis witch quantitatively monitors EEG amplitude modulation [22] [23]. The feature is termed as 'EEG spectro-temporal modulation energy'.…”
Section: A Spectro-temporal Eeg Amplitude Modulation Energymentioning
confidence: 99%
“…The following are the different steps involved in its computation. Firstly, the full-band EEG signal is decomposed into five wellknown sub-bands: delta (0.1 -4 Hz), theta (4 -8 Hz), alpha (8)(9)(10)(11)(12), beta (12)(13)(14)(15)(16)(17)(18)(19)(20)(21)(22)(23)(24)(25)(26)(27)(28)(29)(30) and gamma (30 -100 Hz). The Temporal envelope of each sub-band signal is computed by means of a Hilbert transform.…”
Section: A Spectro-temporal Eeg Amplitude Modulation Energymentioning
confidence: 99%
“…1), the raw EEG is further processed by a state-of-the-art AAR algorithm. Motived by our recent findings [27], we used the wavelet-enhanced independent component analysis (wICA) algorithm [28].…”
Section: B Eeg Acquisition Pre-processing and Aarmentioning
confidence: 99%