behapy: A behavioural neuroscience analysis package for Python
Chris Nolan
No response
Brainhack Aus
Studies using optic fibres to record real-time fluorescent biosensors in-vivo are now commonplace, yet despite an increasing literature on best practices for analysing such data, there is a surprising lack of fit-for-purpose API-level tooling. This project is a continuing effort to fill this gap by providing flexible Python-based implementations of common normalisation and artefact correction procedures for fluorescent biosensors, along with useful event-based analyses.
The goals of this project will extend beyond Brainhack Global 2024, but all are in an effort to create an open-source API and workbench for analysing fibre photometry data in a behavioural neuroscience context. Since Brainhack Global 2022, we have created a basic artefact-rejection workbench, a preprocessing stage and implemented simple linear regression for event-level analysis. This year the goal is to create a method to benchmark normalisation methods by creating data simulation functionality under different assumptions about the sources of recording noise. We are also aiming to generalise second-level linear mixed model testing for events of interest.
https://github.com/crnolan/behapy
https://mattermost.brainhack.org/brainhack/channels/behapy
Primarily, some knowledge of fluorescent biosensor normalisation and analysis procedures will be useful. We’ll be predominantly working in Python, but there will be tasks for all levels of Python competency.
Bonus useful skills:
No response
BYO fibre & behavioural data - we’ll create a repository of useful examples.
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Project contributors will be listed on the project README (hosted on github).
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data_management, pipeline_development, visualization
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data_visualisation, systems_neuroscience
BIDS, other
Python
behavioral, other
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No response
Hi @brainhackorg/project-monitors my project is ready!