| Literature DB >> 34970709 |
Kay Robbins1, Dung Truong2, Alexander Jones1, Ian Callanan1, Scott Makeig3.
Abstract
Human electrophysiological and related time series data are often acquired in complex, event-rich environments. However, the resulting recorded brain or other dynamics are often interpreted in relation to more sparsely recorded or subsequently-noted events. Currently a substantial gap exists between the level of event description required by current digital data archiving standards and the level of annotation required for successful analysis of event-related data across studies, environments, and laboratories. Manifold challenges must be addressed, most prominently ontological clarity, vocabulary extensibility, annotation tool availability, and overall usability, to allow and promote sharing of data with an effective level of descriptive detail for labeled events. Motivating data authors to perform the work needed to adequately annotate their data is a key challenge. This paper describes new developments in the Hierarchical Event Descriptor (HED) system for addressing these issues. We recap the evolution of HED and its acceptance by the Brain Imaging Data Structure (BIDS) movement, describe the recent release of HED-3G, a third generation HED tools and design framework, and discuss directions for future development. Given consistent, sufficiently detailed, tool-enabled, field-relevant annotation of the nature of recorded events, prospects are bright for large-scale analysis and modeling of aggregated time series data, both in behavioral and brain imaging sciences and beyond.Entities:
Keywords: BIDS; EEG; Event annotation; FAIR; HED; HED-3G; Hierarchical Event Descriptors; Neuroimaging
Mesh:
Year: 2021 PMID: 34970709 PMCID: PMC9546996 DOI: 10.1007/s12021-021-09537-4
Source DB: PubMed Journal: Neuroinformatics ISSN: 1539-2791
Fig. 1The HED schema browser provides an expandable HTML view of the schemas that are available in the official hedxml repository. Users can expand or collapse the view for ease in navigation. The schema trees are on the left. The right box shows the details of the entry over which the viewer’s cursor is hovering. HED-3G and previous generations of HED are available at (https://github.com/hed-standard/hed-specification). This figure is a screenshot of the HED-3G expandable viewer (https://www.hedtags.org/display_hed.html?version=8.0.0)
Fig. 2A schematic of the three experiment designs described in Example 5. In Design 1 (left) the participant performs a single Task under a single Condition-variable in the recording. The recording includes two Time-block elements, each containing multiple experimental trials. The Design 2 (center) recording period also has two Time-blocks. Each participant performs one experiment Task under a single Condition-variable in each Time-block, counter-balanced by Time-block. The Design 3 (right) recording has a single Task and Time-block, but here the Condition-variable is varied for each Experimental-trial
Fig. 3Mock-up of an experiment timeline automatically extracted from an event file annotated with Task, Time-block, and Condition-variable tags using a representation-dependent metadata extraction tool. Here ViewImage and TakeSurvey are user-defined Time-block defined names, while SlowPresentation and FastPresentation are user-defined Condition-variable type names. These defined terms are combined with Onset and Offset tags, enabling tools to automatically determine their placement on the visualized experiment timeline. The gaps in the timeline correspond to portions of the recording that are outside the temporal scope of an Condition-variable or a Time-block enduring event. Experiments typically have periods corresponding to relief breaks or changes in setup that are not annotated
Fig. 4CTagger GUI. Users select event types on the left-side panel and compose HED strings on the right. The tool displays tags suggested by user inputs and provides a schema view from which users can browse and select tags to add to the event HED string