Functions to analyze single-cell
Project description
PyCellID
Functions to analyze Cell-ID single-cell cytometry data using python language.
Motivation
Microscopy-based cytometry provides a powerful means to study cells with high throughput. Single cell measurements can reveal information hidden in the population. Some commercial software packages, as well as some open source projects, provide tools for working with microscopy images. However, either they do not fit the problem posed by cell-to-cell analysis, or they do not deliver a complete pipeline.
Here, we present a set of tools that facilitate inspection and analysis of fluorescence microscopy images based on their segmentation data.
We hope to integrate tools for image segmentation in future releases. In that way we would be able to contribute to completing the routine from data sampling to already analyzed samples.
Requirements
Python 3.8+
Dependecies for this project.
- attrs(>=21.1.0) for building the backend.
- matplotlib(>=3.4.0) for plots management
- pandas(>=1.3.0) for panel and dashboard management.
- numpy(>=1.21.0) for numerical management.
Installation
PyCellID can be installed using pip
from PyPI. Using virtualenv is recommended -- for no specific reason other than it being good practice. Installing is simple:
$> pip install pycellid
For development, clone the official github repository instead and use:
$ git clone git@github.com:pyCellID/pyCellID.git
$ cd pyCellID
$ python3 -m venv venv
$ source venv/bin/activate
$ pip install -e .
$ pip install -r requirements/dev.txt
Run the tests with pytest:
$ pytest -v tests/
Or run the full checks with tox:
$ tox -r
Contact
You can contact us via email.
Issues
Please submit bug reports, suggestions for improvements and patches via the issue tracker.
Links
Credits
We propose using the open source software Cell-ID for the image segmentation task. We plan to integrate it into our code in the future.
Original source can be found at sourceforge (link) and in the original publication (link).
You can also visit the official repository ACL's Yeast Systems Biology Lab for further details.
We have got inspiration from rcell and rcell2.
License
This project is licensed under the MIT License (see the LICENSE file for details).
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