Author:
Demuru Matteo,van Blooijs Dorien,Zweiphenning Willemiek,Hermes Dora,Leijten Frans,Zijlmans Maeike,
Abstract
AbstractThe neuroscience community increasingly uses the Brain Imaging Data Structure (BIDS) to organize data, extending from MRI to electrophysiology data. While automated tools and workflows are developed that help organize MRI data from the scanner to BIDS, these workflows are lacking for clinical intracranial EEG (iEEG data). We present a practical workflow on how to organize full clinical iEEG epilepsy data into BIDS. We present electrophysiological datasets recorded from twelve subjects who underwent intracranial monitoring followed by resective epilepsy surgery at the University Medical Center Utrecht, the Netherlands, and became seizure-free after surgery. These data include intraoperative electrocorticography recordings from six patients, long-term electrocorticography recordings from three patients and stereo-encephalography recordings from three patients. We describe the 6 steps in the pipeline that are essential to structure the data from these clinical iEEG recordings into BIDS and the challenges during this process. These proposed workflow enable centers performing clinical iEEG recordings to structure their data to improve accessibility, reusability and interoperability of clinical data.
Funder
Alexandre Suerman Stipendium 2015
TKI holland
FP7 Ideas: European Research Council
NEF
National Institutes of Health
Publisher
Springer Science and Business Media LLC
Subject
Information Systems,General Neuroscience,Software
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