Skip to main content

Python module for extracting optical physiology ROIs and traces for various file types and formats

Project description

PyPI version Full Tests Auto-release codecov documentation License

ROI Extractors

Python-based module for extracting from, converting between, and handling recorded and optical imaging data from several file formats. Inspired by SpikeExtractors.

Developed by CatalystNeuro.

Getting Started:

Installation:

pip install roiextractors

Usage:

Supported file types:

Imaging

  1. HDF5
  2. TIFF
  3. STK
  4. FLI
  5. SBX

Segmentation

  1. calciumImagingAnalysis (CNMF-E, EXTRACT)
  2. SIMA
  3. NWB
  4. suite2p
  5. Numpy (a data format for manual input of optical physiology data as various numpy datasets)

Functionality:

Interconversion amongst the various data formats as well as conversion to the NWB format and back.

Features:

  1. SegmentationExtractor object:
    • seg_obj.get_channel_names() : List of optical channel names
    • seg_obj.get_num_channels() : Number of channels
    • seg_obj.get_movie_framesize(): (height, width) of raw movie
    • seg_obj.get_movie_location(): Location of storage of movie/tiff images
    • seg_obj.get_image_masks(self, roi_ids=None): Image masks as (ht, wd, num_rois) with each value as the weight given during segmentation operation.
    • seg_obj.get_pixel_masks(roi_ids=None): Get pixel masks as (total_pixels(ht*wid), no_rois)
    • seg_obj.get_traces(self, roi_ids=None, start_frame=None, end_frame=None): df/F trace as (num_rois, num_frames)
    • seg_obj.get_sampling_frequency(): Sampling frequency of movie/df/F trace.
    • seg_obj.get_roi_locations(): Centroid pixel location of the ROI (Regions Of Interest) as (x,y).
    • seg_obj.get_num_rois(): Total number of ROIs after segmentation operation.
    • seg_obj.get_roi_ids(): Any integer tags associated with an ROI, defaults to 0:num_of_rois

SegmentationExtractor object creation:

import roiextractors
import numpy as np

seg_obj_cnmfe = roiextractors.CnmfeSegmentationExtractor('cnmfe_filename.mat') # cnmfe
seg_obj_extract = roiextractors.ExtractSegmentationExtractor('extract_filename.mat') # extract
seg_obj_sima = roiextractors.SimaSegmentationExtractor('sima_filename.sima') # SIMA
seg_obj_numpy = roiextractors.NumpySegmentationExtractor(
        filepath = 'path-to-file',
        masks=np.random.rand(movie_size[0],movie_size[1],no_rois),
        signal=np.random.randn(num_rois,num_frames),
        roi_idx=np.random.randint(no_rois,size=[1,no_rois]),
        no_of_channels=None,
        summary_image=None,
        channel_names=['Blue'],
) # Numpy object
seg_obj_nwb = roiextractors.NwbSegmentationExtractor(
                    filepath_of_nwb, optical_channel_name=None, # optical channel to extract and store info from
                    imaging_plane_name=None, image_series_name=None, # imaging plane to extract and store data from
                    processing_module_name=None,
                    neuron_roi_response_series_name=None, # roi_response_series name to extract and store data from
                    background_roi_response_series_name=None) # nwb object

Data format conversion: SegmentationExtractor to NWB:

roiextractors.NwbSegmentationExtractor.write_segmentation(seg_obj, saveloc,
                    propertydict=[{'name': 'ROI feature 1,
                                   'description': 'additional attribute of each ROI',
                                   'data': np.random.rand(1,no_rois),
                                   'id': seg_obj.get_roi_ids()},
                                  {'name': 'ROI feature 2,
                                   'description': 'additional attribute of each ROI',
                                   'data': np.random.rand(1,no_rois),
                                   'id': seg_obj.get_roi_ids()}],
                    nwbfile_kwargs={'session_description': 'nwbfiledesc',
                                    'experimenter': 'experimenter name',
                                    'lab': 'test lab',
                                    'session_id': 'test sess id'},
                    emission_lambda=400.0, excitation_lambda=500.0)

Example Datasets:

Example datasets are maintained at https://gin.g-node.org/CatalystNeuro/ophys_testing_data.

To download test data on your machine,

  1. Install the gin client (instructions here)
  2. Use gin to download data.
gin get CatalystNeuro/ophys_testing_data
cd ophys_testing_data
gin get-content
  1. Change the file at roiextractors/tests/gin_test_config.json to point to the path of this test data

To update data later, cd into the test directory and run gin get-content

Class descriptions:

  • SegmentationExtractor: An abstract class that contains all the meta-data and output data from the ROI segmentation operation when applied to the pre-processed data. It also contains methods to read from and write to various data formats ouput from the processing pipelines like SIMA, CaImAn, Suite2p, CNNM-E.

  • NumpySegmentationExtractor: Contains all data coming from a file format for which there is currently no support. To construct this, all data must be entered manually as arguments.

  • CnmfeSegmentationExtractor: This class inherits from the SegmentationExtractor class, having all its funtionality specifically applied to the dataset output from the 'CNMF-E' ROI segmentation method.

  • ExtractSegmentationExtractor: This class inherits from the SegmentationExtractor class, having all its funtionality specifically applied to the dataset output from the 'EXTRACT' ROI segmentation method.

  • SimaSegmentationExtractor: This class inherits from the SegmentationExtractor class, having all its funtionality specifically applied to the dataset output from the 'SIMA' ROI segmentation method.

  • NwbSegmentationExtractor: Extracts data from the NWB data format. Also implements a static method to write any format specific object to NWB.

  • Suite2PSegmentationExtractor: Extracts data from suite2p format.

Troubleshooting

Installing SIMA with python>=3.7:

Will need a manual installation for package dependency SIMA since it does not currently support python 3.7:

  1. Download SIMA wheels distribution here.
  2. pip install <download-path-to-wheels.whl>
  3. pip install roiextractors

Funded by

  • Stanford University as part of the Ripple U19 project (U19NS104590).
  • LBNL as part of the NWB U24 (U24NS120057).

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

roiextractors-0.5.5.tar.gz (66.9 kB view details)

Uploaded Source

Built Distribution

roiextractors-0.5.5-py3-none-any.whl (85.8 kB view details)

Uploaded Python 3

File details

Details for the file roiextractors-0.5.5.tar.gz.

File metadata

  • Download URL: roiextractors-0.5.5.tar.gz
  • Upload date:
  • Size: 66.9 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.9.18

File hashes

Hashes for roiextractors-0.5.5.tar.gz
Algorithm Hash digest
SHA256 4507c6aeb1e687bad39000c630e553767a897346c0f6a3bdf71011fac6104556
MD5 1d42ccc686c1f60a0af6b15ec1739179
BLAKE2b-256 5fcac3bad52bb74ec9ec3b2645bb6fee40c9e5cc854a7bf2d75b101f6c4e788a

See more details on using hashes here.

File details

Details for the file roiextractors-0.5.5-py3-none-any.whl.

File metadata

File hashes

Hashes for roiextractors-0.5.5-py3-none-any.whl
Algorithm Hash digest
SHA256 8dd40305593369642d52826252cfd747b4931b2c83a89a52d1d54956e82ef1f9
MD5 1b591d193bed86f3c85b1355c95ce242
BLAKE2b-256 bb1bc1b83ba0b001fb511c8e17001bca1dbf0bdd424df8c71bc554300b25efae

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page