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Capturing the nature of events and event context using hierarchical event descriptors (HED)

Authors :
Stefan Appelhoff
Scott Makeig
Dung Truong
Kay A. Robbins
Arnaud Delorme
Source :
NeuroImage, Vol 245, Iss, Pp 118766-(2021), NeuroImage
Publication Year :
2021
Publisher :
Elsevier, 2021.

Abstract

Event-related data analysis plays a central role in EEG and MEG (MEEG) and other neuroimaging modalities such as fMRI. Choices about which events to report and how to annotate their full natures significantly influence the value, reliability, and reproducibility of neuroimaging datasets for further analysis and meta- or mega-analysis. A powerful annotation strategy using the new third-generation formulation of the Hierarchical Event Descriptors (HED) framework and tools (hedtags.org) combines robust event description with details of experiment design and metadata in a human-readable as well as machine-actionable form, making event annotation relevant to the full range of neuroimaging and other time series data. This paper considers the event design and annotation process using as a case study the well-known multi-subject, multimodal dataset of Wakeman and Henson made available by its authors as a Brain Imaging Data Structure (BIDS) dataset (bids.neuroimaging.io). We propose a set of best practices and guidelines for event annotation integrated in a natural way into the BIDS metadata file architecture, examine the impact of event design decisions, and provide a working example of organizing events in MEEG and other neuroimaging data. We demonstrate how annotations using HED can document events occurring during neuroimaging experiments as well as their interrelationships, providing machine-actionable annotation enabling automated within- and across-experiment analysis and comparisons. We discuss the evolution of HED software tools and have made an accompanying HED-annotated BIDS-formatted edition of the MEEG data of the Wakeman and Henson dataset (openneuro.org, ds003645).

Details

Language :
English
ISSN :
10959572
Volume :
245
Database :
OpenAIRE
Journal :
NeuroImage
Accession number :
edsair.doi.dedup.....4f46cf0d257633384fbab8b2678e234b