We release six PyNWB containers as part of this extension (we currently only have a Python implementation, rather than both Python and a MATLAB ones -- this is why the matnwb
directory is empty):
- The
SpatialLightModulator
andLaser
containers store metadata about the spatial light modulator and laser used in the photostimulation, respectively. These containers are then stored within thePhotostimulationMethod
parent container, which stores the remaining photostimulation method-specifici metadata. HolographicPattern
stores the holographic pattern used in stimulation.PhotostimulationSeries
contains the time series data corresponding to the presentation of a given stimulus (where the stimulus is represented by aHolographicPattern
container linked to thePhotostimulationSeries
).- We group all time series & patterns for a given experiment together using the
PhotostimulationTable
container. This object is a dynamic table, where each row in the table corresponds to a singlePhotostimulationSeries
. Additionally, the table links to theStimulationDevice
used in the experiment.
To install the extension, first clone the ndx_photostim
repository to the desired folder using the command
git clone https://github.com/histedlab/ndx-photostim.git
Then, to install the requisite python packages and extension, run:
python -m pip install -r requirements.txt -r requirements-dev.txt
python setup.py install
The extension can then be imported into python scripts via import ndx_photostim
.
For full example usage, see tutorial.ipynb
Below is example code to:
- Create a device used in photostimulation
- Simulate and store photostimulation ROIs
- Store the time series corresponding to each stimulation
- Record all time series and patterns used in an experiment in a table
- Write the above to an NWB file and read it back
import numpy as np
from dateutil.tz import tzlocal
from datetime import datetime
from pynwb import NWBFile, NWBHDF5IO
from ndx_photostim import SpatialLightModulator, Laser, PhotostimulationMethod, HolographicPattern, \
PhotostimulationSeries, PhotostimulationTable
# create an example NWB file
nwbfile = NWBFile('ndx-photostim_example', 'EXAMPLE_ID', datetime.now(tzlocal()))
# store the spatial light modulator used
slm = SpatialLightModulator(name='slm',
model='Meadowlark',
size=np.array([512, 512]))
# store the laser used
laser = Laser(name='laser',
model='Coherent Monaco',
wavelength=1030,
power=8,
peak_pulse_energy=20,
pulse_rate=500)
# create a container for the method used for photostimulation, and link the SLM and laser to it
ps_method = PhotostimulationMethod(name="methodA",
stimulus_method="scanless",
sweep_pattern="none",
sweep_size=0,
time_per_sweep=0,
num_sweeps=0)
ps_method.add_slm(slm)
ps_method.add_laser(laser)
# define holographic pattern
hp = HolographicPattern(name='pattern1',
image_mask_roi=np.round(np.random.rand(5, 5)),
stim_duration=0.300,
power_per_target=8)
# show the mask
hp.show_mask()
# define stimulation time series using holographic pattern
ps_series = PhotostimulationSeries(name="series_1",
format='interval',
data=[1, -1, 1, -1],
timestamps=[0.5, 1, 2, 4],
pattern=hp,
method=ps_method)
# add the stimulus to the NWB file
nwbfile.add_stimulus(ps_series)
# create a table to store the time series/patterns for all stimuli together, along with experiment-specific
# parameters
stim_table = PhotostimulationTable(name='test', description='...')
stim_table.add_series(ps_series)
# plot the timestamps when the stimulus was presented
stim_table.plot_presentation_times()
# create a processing module and add the PresentationTable to it
module = nwbfile.create_processing_module(name="photostimulation", description="example photostimulation table")
module.add(stim_table)
# write to an NWB file and read it back
with NWBHDF5IO("example_file.nwb", "w") as io:
io.write(nwbfile)
with NWBHDF5IO("example_file.nwb", "r", load_namespaces=True) as io:
read_nwbfile = io.read()
# Check the file & processing module
print(read_nwbfile)
print(read_nwbfile.processing['photostimulation'])
if os.path.exists("example_file.nwb"):
os.remove("example_file.nwb")
Unit and integration
tests are implemented using pytest, and can be run via the command
pytest
from the root of the extension directory (i.e., inside ndx-photostim/src
). In addition, the
pytest
command will also run a test of the example code above.
Documentation for the extension's specification, which is based on the YAML files, is generated and stored in
the ./docs
folder. To create it, run the following from the home directory:
cd docs
make fulldoc
This will save documentation to the ./docs/build
folder, and can be accessed via the
./docs/build/html/index.html
file.
To generate documentation for the Python API (stores in ./api_docs
), we use Sphinx
and a template from ReadTheDocs. API documentation can
be created by running
sphinx-build -b html api_docs/source/ api_docs/build/
from the home folder. Similar to the specification docs, API documentation is stored in ./api_docs/build
. Select
./api_docs/build/index.html
to access the API documentation in a website format.
Code by Carl Harris and Paul LaFosse (equal contribution). Collaboration between the NIMH's Data Science and Sharing Team and Histed Lab.
This extension was created using ndx-template.