2016
DOI: 10.1371/journal.pone.0158276
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RIPPLELAB: A Comprehensive Application for the Detection, Analysis and Classification of High Frequency Oscillations in Electroencephalographic Signals

Abstract: High Frequency Oscillations (HFOs) in the brain have been associated with different physiological and pathological processes. In epilepsy, HFOs might reflect a mechanism of epileptic phenomena, serving as a biomarker of epileptogenesis and epileptogenicity. Despite the valuable information provided by HFOs, their correct identification is a challenging task. A comprehensive application, RIPPLELAB, was developed to facilitate the analysis of HFOs. RIPPLELAB provides a wide range of tools for HFOs manual and aut… Show more

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Cited by 94 publications
(129 citation statements)
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“…The selected data were later imported to the EEGLAB for preprocessing. HFOs (100‐500 Hz) were detected based on the method suggested by Staba et al and performed in a MATLAB (MathWorks, Natick, MA, USA) toolbox RIPPLELAB (see Appendix for details). The HFO data that were within the same group were combined into larger files, and the HFO events were detected based on onset of the oscillations.…”
Section: Methodsmentioning
confidence: 99%
“…The selected data were later imported to the EEGLAB for preprocessing. HFOs (100‐500 Hz) were detected based on the method suggested by Staba et al and performed in a MATLAB (MathWorks, Natick, MA, USA) toolbox RIPPLELAB (see Appendix for details). The HFO data that were within the same group were combined into larger files, and the HFO events were detected based on onset of the oscillations.…”
Section: Methodsmentioning
confidence: 99%
“…First, the application of the filter results in oscillatory patterns not only for oscillations buried in the low-frequency background but also for all kinds of sharp transients (spikes, artifacts). 71 It contains a wide range of tools for visual and automatic HFO annotation and validation. 14,67 Time-frequency transformations form a starting point for feature extraction (power or power ratios, separation of high-frequency activity from lower frequency activity by a trough, identification of blobs, or computer vision).…”
Section: Magnetoencephalographymentioning
confidence: 99%
“…68,69 RIPPLELAB is a MATLAB toolbox that is available to the research community (https:// github.com/BSP-Uniandes/RIPPLELAB) under terms of the GNU General Public License. 71 It contains a wide range of tools for visual and automatic HFO annotation and validation. The standard EEG software programs are starting to offer HFO-reviewing toolboxes in which automatic detectors may eventually be integrated.…”
Section: Magnetoencephalographymentioning
confidence: 99%
“…28 Briefly, after filtering (80-500 Hz) and timefrequency analysis with the wavelet transform, HFOs were either visually detected or automatically detected using Hilbert method. 28 Briefly, after filtering (80-500 Hz) and timefrequency analysis with the wavelet transform, HFOs were either visually detected or automatically detected using Hilbert method.…”
Section: Electrophysiological Analysis and Statisticsmentioning
confidence: 99%
“…High-frequency oscillations (HFOs) were analyzed with Ripple Lab according to previously described methodology. 28 Briefly, after filtering (80-500 Hz) and timefrequency analysis with the wavelet transform, HFOs were either visually detected or automatically detected using Hilbert method. Duration and mean frequency of the HFO events were then noted for IIDs and preictal discharges (PIDs), respectively.…”
Section: Electrophysiological Analysis and Statisticsmentioning
confidence: 99%