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biomemsLAB/README.md

BioMEMS Laboratory @ University of Applied Sciences Aschaffenburg

Welcome to the official GitHub page of the BioMEMS Laboratory at the University of Applied Sciences Aschaffenburg. This repository serves as a hub for sharing the algorithms, scripts, and tools developed by our lab for analyzing data from in vitro neuronal networks cultivated on microelectrode array (MEA) chips.


About Us

The BioMEMS Lab is dedicated to advancing the field of bio-microelectromechanical systems with a focus on neuroscience. Our research includes the development of tools and methodologies for studying neuronal behavior and interactions using cutting-edge technology.

Here, you will find resources to explore, analyze, and process neuronal network data with an emphasis on reproducibility and accessibility.


Associated Repositories

In addition to the resources hosted here, the following repositories are associated with the BioMEMS Lab and maintained on other GitHub pages:

A Python-based tool for organizing and storing data from neuronal recordings in a format that is both human- and machine-readable. This ensures efficient data handling and analysis workflows.

This repository contains Python scripts for applying machine learning techniques and complex network measures to an EEG dataset from ayahuasca experiments, providing insights into altered states of consciousness.

A machine learning workflow developed to diagnose autism spectrum disorder based on functional brain networks derived from fMRI data.

Python scripts for analyzing the effects of drugs, such as bicuculline, on spike trains from neuronal networks using machine learning workflows. This repository specializes in paired sample analysis (e.g., before vs. after drug application).


Get Involved

We encourage collaboration and welcome contributions from researchers and developers. If you have any questions, feedback, or suggestions, feel free to open an issue or submit a pull request.


Thank you for visiting our GitHub page. We hope you find these resources helpful for your research and projects!

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  1. TSPE TSPE Public

    Total Spiking Probability Edges is a Cross-Correlation based method for effective connectivity estimation of cortical spiking neurons.

    MATLAB 3 2

  2. Spike-Contrast Spike-Contrast Public

    Spike-contrast: A spike train synchrony measure

    MATLAB 1 1

  3. SynchronyMeasures-Robustness SynchronyMeasures-Robustness Public

    Scripts and data used for the publication "Comparison of different spike train synchrony measures regarding their robustness to erroneous data from bicuculline induced epileptiform activity"

    MATLAB 1 1

  4. DrCell DrCell Public

    DrCell is a Matlab based tool to analyze electrophysiological data recorded with microelectrode array (MEA) chips.

    MATLAB

  5. ManuelCiba/spike-train-ml-bic ManuelCiba/spike-train-ml-bic Public

    Codebase for the publication "Machine learning and complex network analysis of drug effects on neuronal microelectrode biosensor data"

    Python