a plugin for mother machine image analysis
Project description
napari-mm3
A plugin for mother machine image analysis by the Jun Lab.
This napari plugin was generated with Cookiecutter using @napari's cookiecutter-napari-plugin template.
https://github.com/junlabucsd/napari-mm3/assets/40699438/1b3e6121-f5e1-475f-aca3-c6ed1b5bab3a
Installation
We describe installation with mamba, a faster version of conda which we recommend. Installation with conda is the exact same, except replace mamba
with conda
Run the following command:
mamba create -n napari-mm3 -c conda-forge conda-build tensorflow napari
Now, you need to install our code (please let us know if this causes problems -- it has been a pain point in the past). To do so, clone the repository:
git clone https://github.com/junlabucsd/napari-mm3.git
Then, run the following commands from within your conda environment:
cd napari-mm3
pip install -e .
This supplies you with the latest, most recent version of our code.
If you would like to have a more stable version, simply run pip install napari-mm3
. In general, we recommend going off of the github version.
napari-MM3 can use the python-bioformats library to import various image file formats. It can be installed with pip:
pip install python-bioformats
If your raw images are in the .nd2 format, they will be read in with the nd2reader package. In this case, Bio-Formats is not required.
NOTES:
Not running the conda command above and trying to install things in a different way may lead to difficult issues with PyQt5. We recommend following the above commands to simplify the situation.
Using pip -e .
instead of mamba develop .
is a deliberate choice, the former did not seem to register the plugin with napari.
Contributing
Contributions are very welcome. Tests can be run with tox, please ensure the coverage at least stays the same before you submit a pull request.
Usage guide
https://github.com/junlabucsd/napari-mm3/assets/8302475/68c726be-620e-4375-b1c9-3db56ac9a82a
Additional reference information is available below.
a. Preprocessing
-
TIFFConverter -- Turn your nd2 microscopy data, or other format via bioformats, into TIFFs. If your data is already exported as individual TIFF files, skip to the Compile widget. Take note of the input image guidelines.
-
Compile -- Locate traps, separate their timelapses into their own TIFFs, and return metadata.
-
PickChannels -- User guided selection of empty and full traps.
b. Segmentation
With Otsu's method:
-
Subtract -- Remove (via subtraction) empty traps from the background of traps that contain cells; run this on the phase contrast channel.
-
SegmentOtsu -- Use Otsu's method to segment cells.
With U-Net:
-
Annotate -- annotate images for ML (U-Net or similar) training purposes.
-
Train U-Net -- Train a U-Net model for cell segmentation.
-
SegmentUnet -- Run U-Net segmentation.
c. Tracking
- Track -- Acquire individual cell properties and track lineages.
d. Fluorescence data analysis
-
Subtract -- Remove (via subtraction) empty traps from the background of traps that contain cells. This time, run this on your fluorescence channels.
-
Colors -- Calculate fluorescence information.
e. Focus tracking
- Foci -- We use this to track
foci
(bright fluorescent spots) inside of cells.
f. Extracting data and plotting
- The notebook here demonstrates how to extract, filter and visualize the lineage data output by the Track widget.
g. Outputs, inputs, and file structure
Finally, to better understand the data formats, you may wish to refer to the following documents:
License
Distributed under the terms of the BSD-3 license, "napari-mm3" is free and open source software
Issues
If you encounter any problems, please file an issue along with a detailed description.
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