Workflows used for morphology processing.
Project description
Morphology Workflows
This project contains several workflows for processing morphologies:
- Fetch: download morphologies from online database (like Allen, NeuroMorpho or MouseLight).
- Placeholders: compute the place holders for a given region and mtype set.
- Curate: from raw morphologies, ensures that morphologies can be used with the rest of BBP codes.
- Annotate: create various annotations on morphologies needed by specific BBP codes.
- Repair: process morphologies to correct for artifacts of in-vitro reconstruction.
In a nutshell, the user provides a list of morphologies in a .csv
file, with their names and
paths and a luigi.cfg
configuration file. Each workflow is run independently and creates an
output folder, with one subfolder per task. In each, there will be a report.csv
and a data
folder containing the output files of the task if any. In the report.csv
file, columns contain
paths to these files, additional information, error messages if the task failed on that
morphologies, as well as a flag is_valid
, used in subsequent tasks to filter valid morphologies.
At the end of each workflow, another report.csv
file is created, with the main output columns of
each tasks, and a report.pdf
containing a human readable summary of the result of the workflow.
Usually, the user should run the Curate
workflow, then the Annotate
workflow and finally the
Repair
workflow.
The complete documentation can be found here:
- stable: https://morphology-workflows.readthedocs.io/en/stable/
- latest: https://morphology-workflows.readthedocs.io/en/latest/
Installation
This should be installed using pip:
pip install morphology-workflows
Usage
Create inputs for the Fetch workflow
This workflow helps fetching morphologies from online databases. This workflow only needs a configuration file, which depends on the source from which the morphologies are fetched.
The possible sources are:
- NeuroMorpho
- MouseLight
- Allen
For each of them, the configuration file should be a JSON file containing a list of objects like the following examples:
-
NeuroMorpho:
[ { "species": "mouse", "brain_region": "neocortex", "cell_type": "interneuron", "nb_morphologies": 10 } ]
-
MouseLight:
[ { "brain_region": "neocortex", "nb_morphologies": 10, "seed": 0 } ]
-
Allen:
[ { "species": "Mus musculus", "brain_region": "VISli", "cell_type": "pyramidal", "nb_morphologies": 10, "seed": 0 } ]
In these examples, the seed
attribute is optional and is only used to sample which morphologies
are fetched among those which pass the filter.
Each JSON
object in the list will give a set of morphologies to fetch, depending on the given
filters.
Note that all attributes are optional, so it's possible to pass an empty object to fetch all the
morphologies from the database, though it is not recommended.
Create inputs for the Curate, Annotate and Repair workflow
The Annotate and Repair workflows should usually be run after the Curate workflow since their inputs should be the outputs of the Curate workflow. But it is still possible to run them on arbitrary inputs (though the morphologies must be valid, as the ones processed by the Curate workflow).
The inputs should consist in:
- a directory containing the input morphologies.
- a CSV file with the following columns:
morph_path
: the path to the morphology file.morph_name
: the name of the morphology.- any other column is kept into the results but not used in the workflows.
- a
luigi.cfg
file containing the configuration for all the tasks of the workflow. - an optional
logging.conf
file containing the logging configuration. If you prefer default logging behavior, remove this file and comment line inlogging_conf_file = logging.conf
inluigi.cfg
.
The examples folder contains
examples for the luigi.cfg
and logging.conf
files.
Run the workflows
These workflows are based on the luigi
library but can be run via the command line interface.
For example, you can run the Curate
workflow with the following command:
morphology_workflows Curate
NOTE: This command must be executed from a directory containing a
luigi.cfg
file. An example of such file is given in theexamples
directory.
By default, a local scheduler is used but it is also possible to use a Luigi's master scheduler
using the -m / --master-scheduler
trigger:
morphology_workflows -m Curate
More details can be found in the command line interface section of the documentation or by running the command:
morphology_workflows <workflow> --help
Examples
The examples folder contains
a simple example that will fetch and process a set of morphologies.
A dataset.csv
file is provided which is taken as input for the workflows. A luigi.cfg
file
is also provided to give a default configuration for the workflows.
This example can simply be run using the following command:
./run_curation.sh
This script will create a new directory out_curated
which will contain the report and all the
results.
Funding & Acknowledgment
The development of this software was supported by funding to the Blue Brain Project, a research center of the École polytechnique fédérale de Lausanne (EPFL), from the Swiss government’s ETH Board of the Swiss Federal Institutes of Technology.
For license and authors, see LICENSE.txt
and AUTHORS.md
respectively.
Copyright © 2021-2022 Blue Brain Project/EPFL
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