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CytoCensus

Software repository for CytoCensus, formerly QBrain, machine learning software for identifying cells in 3-D tissue.

Corresponding software publication:

MS ID#: BIORXIV/2017/137406

MS TITLE: CytoCensus: mapping cell identity and division in tissues and organs using machine learning

Authors: Martin Hailstone, Dominic Waithe, Tamsin J Samuels, Lu Yang, Ita Costello, Yoav Arava, Elizabeth J Robertson, Richard M Parton, Ilan Davis

https://www.biorxiv.org/content/10.1101/137406v4

Installation instructions:

Download compiled software:

The latest compiled releases can be found here: https://github.com/hailstonem/CytoCensus/releases/ Simply download the version for your operating system and run the software directly.

Run from Source

If you are a capable Python(3) user then you can clone the above repository and run from source. Using git:

git clone https://github.com/hailstonem/CytoCensus.git

Clone the repository, install requirements using pip:

pip install -r requirements.txt

or create a new environment with conda:

conda env create --file environment.yml

conda activate cytocensus

Run "python v2_release.py" for the training interface to be loaded. Run "python v2_evaluate.py" to load the interface for the bulk running of files.

FAQ

  • Q: Where do I download CytoCensus from?

    A: https://github.com/hailstonem/CytoCensus/releases/

  • Q: How do I use CytoCensus?

    A: A manual is included in the download

  • Q: The software is slow to load

    A: It should only be slow the first time you run it on a particular computer. Subsequent usage should be much faster.

  • Q: Which executable should I run first?

    A: The train software should be run first as this software allows you to train the software and produce models which can than be applied in bulk. The bulk software allows you to apply your previously trained model to one or more datasets.

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CytoCensus, machine learning software for identifying cells in 3/4-D tissue.

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