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Neurophysiological analytics for all! Free open-source software tools for documenting, analyzing, visualizing, and sharing using electronic notebooks.

Submitted by karopka on Tue, 2016/06/28 - 19:32
TitleNeurophysiological analytics for all! Free open-source software tools for documenting, analyzing, visualizing, and sharing using electronic notebooks.
Publication TypeJournal Article
Year of Publication2016
AuthorsRosenberg, DM, Horn, CC
JournalJ Neurophysiol
Paginationjn.00137.2016
Date Published2016 Apr 20
ISSN1522-1598
Abstract

Neurophysiology requires an extensive workflow of information analysis routines, which often includes incompatible proprietary software, introducing limitations based on financial costs, transfer of data between platforms, and the ability to share. An ecosystem of free open-source software exists to fill these gaps, including 1000's of analysis and plotting packages written in Python and R, which can be implemented in a sharable and reproducible format, such as the Jupyter electronic notebook. This tool chain can largely replace current routines by importing data, producing analyses, and generating publication quality graphics. An electronic notebook, like Jupyter, allows these analyses, along with documentation of procedures, to display locally or remotely in an internet browser, which can be saved as an HTML, PDF, or other file format for sharing with team members and the scientific community. The current report illustrates these methods using data from electrophysiological recordings of the musk shrew vagus - a model system to investigate gut-brain communication, for example, cancer chemotherapy-induced emesis. We show methods for spike sorting (including statistical validation), spike train analysis, and analysis of compound action potentials in notebooks. Raw data and code are available from notebooks in Data Supplements or from an executable online version, which replicates all analyses without installing software - an implementation of reproducible research. This demonstrates the promise of combining disparate analyses into one platform, along with the ease of sharing this work. In an age of diverse, high-throughput computational workflows, this methodology can increase efficiency, transparency, and the collaborative potential of neurophysiological research.

DOI10.1152/jn.00137.2016
Alternate JournalJ. Neurophysiol.
PubMed ID27098025
Grant ListP30 CA047904 / CA / NCI NIH HHS / United States
U18 EB021772 / EB / NIBIB NIH HHS / United States
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