Improving data sharing and knowledge transfer via the Neuroelectrophysiology Analysis Ontology (NEAO)
Cristiano Andr\'e K\"ohler, Sonja Gr\"un, Michael Denker

TL;DR
The paper introduces the Neuroelectrophysiology Analysis Ontology (NEAO), a standardized vocabulary to improve clarity, reproducibility, and reuse of electrophysiology data analysis processes.
Contribution
It presents NEAO as a novel ontology to unify and standardize descriptions of electrophysiology data analysis workflows, enhancing reproducibility and knowledge sharing.
Findings
NEAO enables detailed annotation of analysis provenance.
Using NEAO improves clarity and reproducibility of electrophysiology studies.
Knowledge graphs built from NEAO annotations facilitate data reuse.
Abstract
Describing the processes involved in analyzing data from electrophysiology experiments to investigate the function of neural systems is inherently challenging. On the one hand, data can be analyzed by distinct methods that serve a similar purpose, such as different algorithms to estimate the spectral power content of a measured time series. On the other hand, different software codes can implement the same algorithm for the analysis while adopting different names to identify functions and parameters. Having reproducibility in mind, with these ambiguities the outcomes of the analysis are difficult to report, e.g., in the methods section of a manuscript or on a platform for scientific findings. Here, we illustrate how using an ontology to describe the analysis process can assist in improving clarity, rigour and comprehensibility by complementing, simplifying and classifying the details of…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies
MethodsOntology
