Package for exrtacting, processing and analyzing Intan and OpenEphys data
Project description
See the full documentation here.
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blechpy
This is a package to extract, process and analyze electrophysiology data recorded with Intan or OpenEphys recording systems. This package is customized to store experiment and analysis metadata for the BLECh Lab (Katz lab) @ Brandeis University, but can readily be used and customized for other labs.
Installation
If is set this up correctly you can install with pip:
pip install blechpy
If you are setting up from source you can create a compatible conda environment with:
conda env create --name blech -f=conda_environment.yml
Can then handle all data from within an ipython terminal
conda activate blech
ipython
import blechpy
Usage
blechpy handles experimental metadata using data_objects which are tied to a directory encompassing some level of data. Existing types of data_objects include:
- dataset
- object for a single recording session
- experiment
- object encompasing an ordered set of recordings from a single animal
- individual recordings must first be processes as datasets
- project
- object that can encompass multiple experiments & data groups and allow analysis or group differences
Datasets
Right now this pipeline is only compatible with recordings done with Intan's 'one file per channel' or 'one file per signal type' recordings settings.
Starting wit a raw dataset
Create dataset
With a brand new shiny recording you can initilize a dataset with:
dat = blechpy.dataset('path/to/recording/directory')
# or
dat = blechpy.dataset() # for user interface to select directory
This will create a new dataset object and setup basic file paths.
If you're working via SSH or just want a command-line interface instead of a GUI you can use the keyword argument shell=True
Initialize Parameters
dat.initParams()
# or
dat.initParams(shell=True)
Initalizes all analysis parameters with a series of prompts. See prompts for optional keyword params. Primarily setups parameters for:
- Flattening Port & Channel in Electrode designations
- Common average referencing
- Labelling areas of electrodes
- Labelling digital inputs & outputs
- Labelling dead electrodes
- Clustering parameters
- Spike array creation
- PSTH creation
- Palatability/Identity Responsiveness calculations
Initial parameters are pulled from default json files in the dio subpackage. Parameters for a dataset are written to json files in a parameters folder in the recording directory
Basic Processing
dat.processing_status
Can provide an overview of basic data extraction and processing steps that need to be taken.
An example data extraction workflow would be:
dat = blechpy.dataset('/path/to/data/dir/')
dat.initParams()
dat.extract_data() # Extracts raw data into HDF5 store
dat.create_trial_list() # Creates table of digital input triggers
dat.mark_dead_channels() # View traces and label electrodes as dead
dat.common_average_reference() # Use common average referencing on data.
# Repalces raw with referenced data in HDF5 store
dat.blech_clust_run() # Cluster data using GMM
dat.blech_clust_run(data_quality='noisy') # re-run clustering with less strict parameters
dat.sort_units() # Split, merge and label clusters as units
Viewing a Dataset
Experiments can be easily viewed wih: print(dat)
A summary can also be exported to a text with: dat.export_to_text()
Loading an existing dataset
dat = blechpy.load_dataset() # load an existing dataset from .p file
# or
dat = blechpy.load_dataset('path/to/recording/directory')
# or
dat = blechpy.load_dataset('path/to/dataset/save/file.p')
Import processed dataset into dataset framework
dat = blechpy.port_in_dataset()
# or
dat = blechpy.port_in_dataset('/path/to/recording/directory')
Experiments
Creating an experiment
exp = blechpy.experiment('/path/to/dir/encasing/recordings')
# or
exp = blechpy.experiment()
This will initalize an experiment with all recording folders within the chosen directory.
Editing recordings
exp.add_recording('/path/to/new/recording/dir/') # Add recording
exp.remove_recording('rec_label') # remove a recording dir
Recordings are assigned labels when added to the experiment that can be used to easily reference exerpiments.
Held unit detection
exp.detect_held_units()
Uses raw waveforms from sorted units to determine if units can be confidently classified as "held". Results are stored in exp.held_units as a pandas DataFrame. This also creates plots and exports data to a created directory: /path/to/experiment/experiment-name_analysis
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