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Human ECoG speaking consonant-vowel syllables ...
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Abstract:
The enclosed data is collected using a high-density 256-channel electrocorticography array implanted in a human patient during treatment for epilepsy. The subjects are reading aloud consonant-vowel syllables from a list. The data was collected by Dr. Edward Chang and Dr. Kristofer Bouchard at the University of California, San Francisco, and curated by Dr. Kristofer Bouchard and Dr. Benjamin Dichter. Data is organized by subject ID, and each file is a continuous recording session in Neurodata Without Borders: Neurophysiology (NWB:N) 2.0 format. Voltage traces are included for each of the recorded 256 channels. Microphone signal was recorded at the time but is removed for HIPAA compliance. Detailed hand-marked annotations are provided which mark what syllable was said, and the times of the start, consonant-vowel transition, and end of each syllable. A rest-period time is also included when the subject was silent, which can be used as a baseline. Hand-marked anatomical labels are included for electrodes in the ...
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Keyword:
FOS Languages and literature; Linguistics; Neuroscience
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URL: https://dx.doi.org/10.6084/m9.figshare.c.4617263.v4 https://figshare.com/collections/Human_ECoG_speaking_consonant-vowel_syllables/4617263/4
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Deep learning as a tool for neural data analysis: Speech classification and cross-frequency coupling in human sensorimotor cortex.
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In: PLoS computational biology, vol 15, iss 9 (2019)
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Human Sensorimotor Cortex Control of Directly Measured Vocal Tract Movements during Vowel Production.
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In: The Journal of neuroscience : the official journal of the Society for Neuroscience, vol 38, iss 12 (2018)
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Deep learning as a tool for neural data analysis: speech classification and cross-frequency coupling in human sensorimotor cortex ...
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Human Sensorimotor Cortex Control of Directly Measured Vocal Tract Movements during Vowel Production
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Timing during transitions in Bengalese finch song: implications for motor sequencing.
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In: Journal of neurophysiology, vol 118, iss 3 (2017)
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Timing during transitions in Bengalese finch song: implications for motor sequencing.
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In: Journal of neurophysiology, vol 118, iss 3 (2017)
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Spatial resolution dependence on spectral frequency in human speech cortex electrocorticography.
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In: Journal of neural engineering, vol 13, iss 5 (2016)
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Dynamic Structure of Neural Variability in the Cortical Representation of Speech Sounds.
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In: The Journal of neuroscience : the official journal of the Society for Neuroscience, vol 36, iss 28 (2016)
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Spatial resolution dependence on spectral frequency in human speech cortex electrocorticography.
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In: Journal of neural engineering, vol 13, iss 5 (2016)
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Auditory-induced neural dynamics in sensory-motor circuitry predict learned temporal and sequential statistics of birdsong.
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In: Proceedings of the National Academy of Sciences of the United States of America, vol 113, iss 34 (2016)
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Auditory-induced neural dynamics in sensory-motor circuitry predict learned temporal and sequential statistics of birdsong.
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In: Proceedings of the National Academy of Sciences of the United States of America, vol 113, iss 34 (2016)
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High-Resolution, Non-Invasive Imaging of Upper Vocal Tract Articulators Compatible with Human Brain Recordings.
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In: PloS one, vol 11, iss 3 (2016)
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Dynamic Structure of Neural Variability in the Cortical Representation of Speech Sounds
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High-Resolution, Non-Invasive Imaging of Upper Vocal Tract Articulators Compatible with Human Brain Recordings
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An Adapting Auditory-motor Feedback Loop Can Contribute to Generating Vocal Repetition.
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In: PLoS computational biology, vol 11, iss 10 (2015)
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