| Literature DB >> 27014048 |
Nima Bigdely-Shamlo1, Scott Makeig2, Kay A Robbins3.
Abstract
Large-scale analysis of EEG and other physiological measures promises new insights into brain processes and more accurate and robust brain-computer interface models. However, the absence of standardized vocabularies for annotating events in a machine understandable manner, the welter of collection-specific data organizations, the difficulty in moving data across processing platforms, and the unavailability of agreed-upon standards for preprocessing have prevented large-scale analyses of EEG. Here we describe a "containerized" approach and freely available tools we have developed to facilitate the process of annotating, packaging, and preprocessing EEG data collections to enable data sharing, archiving, large-scale machine learning/data mining and (meta-)analysis. The EEG Study Schema (ESS) comprises three data "Levels," each with its own XML-document schema and file/folder convention, plus a standardized (PREP) pipeline to move raw (Data Level 1) data to a basic preprocessed state (Data Level 2) suitable for application of a large class of EEG analysis methods. Researchers can ship a study as a single unit and operate on its data using a standardized interface. ESS does not require a central database and provides all the metadata data necessary to execute a wide variety of EEG processing pipelines. The primary focus of ESS is automated in-depth analysis and meta-analysis EEG studies. However, ESS can also encapsulate meta-information for the other modalities such as eye tracking, that are increasingly used in both laboratory and real-world neuroimaging. ESS schema and tools are freely available at www.eegstudy.org and a central catalog of over 850 GB of existing data in ESS format is available at studycatalog.org. These tools and resources are part of a larger effort to enable data sharing at sufficient scale for researchers to engage in truly large-scale EEG analysis and data mining (BigEEG.org).Entities:
Keywords: BCI; EEG; large scale analysis; neuroinformatics
Year: 2016 PMID: 27014048 PMCID: PMC4782059 DOI: 10.3389/fninf.2016.00007
Source DB: PubMed Journal: Front Neuroinform ISSN: 1662-5196 Impact factor: 4.081
Overview of EEG data technologies.
| Effort | Focus | A/O | Mul | Meta | Event |
|---|---|---|---|---|---|
| BigEEG (ESS & HED) | EEG | Yes | Yes | ESS | HED |
| EEG | No | No | odML OWL, RDF | No | |
| G-NODE | Cellular and systems neurophysiology | odML | Yes | odML | No |
| PhysioNet | ECG | No | Yes | No | No |
| EEG/ERP portal | Raw EEG, ERP | Yes | Yes | odML | No |
| NEMO | Raw EEG, ERP | No | No | No | NEMO |
| INCF Dataspace | General | No | Yes | No | No |
| NITRC | General Neuroscience | No | Yes | No | No |
| CARMEN | Electrophysiology (cells) | No | Yes | MINI | No |
| BIDS | fMRI | Yes | Yes | NIDM-Experiment | No |
| XNAT | fMRI, MRI | No | Yes | Yes | No |
| COINS | fMRI, MRI | No | Yes | COINS DB | No |
| SeedMe | General | No | Yes | No | No |
| FigShare | General | No | YES | No | No |
| Dryad | General | No | YES | No | No |