IN-DEPTH METADATA ANNOTATION WORKFLOW FOR FAIR SCIENCE AND MACHINE-ACTIONABLE ANALYSES OF COMPLEX EXPERIMENTAL NEUROSCIENCE DATA
Institut des Neurosciences Paris-Saclay, CNRS, Université Paris-Saclay
Presentation
Date TBA
Event Information
Poster Board
PS05-09AM-032
Poster
View posterAbstract
To meet this need, we have developed a streamlined workflow for annotating data with machine-actionable metadata, accessible to AI through linked data systems. This approach relies on technique-specific in-depth metadata relationship diagrams for electrophysiology, neuroimaging and microscopy data.
While applicable to any data management system, we have implemented this workflow for the EBRAINS2 Knowledge Graph3 using the openMINDS4 metadata framework, and demonstrated how the in-depth metadata enable machine-actionable reuse, including model building, and data analysis.
Here we present the workflow, focusing on its user-friendly interface for in-depth metadata annotation of previously published datasets. We also show how this approach can be adapted to other data sharing services.
In-depth metadata annotation workflows are crucial to deliver machine-actionable metadata for complex experimental neuroscience data. This is essential for data reuse through novel analyses, meta-analysis, model building, etc., fostering new discoveries and accelerated by new technologies such as AI.
[1] Wilkinson.,et al 2016 (DOI:10.1038/sdata.2016.18)
[2] https://doi.org/10.25504/FAIRsharing.XO6ppp
[3] EBRAINS Knowledge Graph (RRID:SCR_017612)
[4] https://doi.org/10.25504/FAIRsharing.6ac6aa
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