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Image readers and writers for image2image.

Project description

image2image-io

License PyPI Python Version CI codecov

Overview

This library provides reader/writer interface to several popular image formats. The main goal is to give a unified interface to access the image data (e.g. for specific channel or pyramid level).

Getting started

Currently supported formats:

  • Standard image formats (.png, .jpg, .jpeg)
  • TIFF (.tif, .tiff, .ome.tiff, .scn, .svs, .ndpi, .qptiff, .qptiff.raw, .qptiff.intermediate)
  • OME-Zarr (.ome.zarr, .zarr)
  • CZI (.czi)
  • Bruker (.tsf, .tdf, .d)
  • ImzML (.imzML, .ibd)
  • HDF5 (.h5, .hdf5) - specific schema required
  • Numpy (.npy, .npz) - expects 2D or 3D numpy array
  • GeoJSON (.geojson) - expects a dictionary with 'type' and 'features' keys (e.g. from QuPath or GeoPandas)
  • Points (.csv, .txt, .parquet) - specific schema required

If you want to open an image, you can use the get_simple_reader function. This function will automatically detect the image format and return the appropriate reader.

from image2image_io.readers import get_simple_reader

# Path to your image
path_to_image = "path/to/image.ome.tiff"

# Get instance of the reader.
reader = get_simple_reader(
    path_to_image, 
    init_pyramid=True  # initialize the pyramid upon loading the image
)

# Retrieve the pyramid stack. In this case 'pyramid' is a list of numpy or dask arrays.
pyramid = reader.pyramid

# Retrieve the first channel of the first pyramid level
channel_first = reader.get_channel(0, 0)  # channel_id, pyramid_level

# Retrieve the first channel of the last pyramid level
channel_last = reader.get_channel(0, -1)  # channel_id, pyramid_level

# Writing to file is relatively easy
reader.to_ome_tiff(
    'path/to/output.ome.tiff',
    as_uint8=True,  # will convert the data to uint8
    tile_size=1024,  # tile size for the output image
    channel_ids=[0, 2],  # channel ids - specify which channels to write
    channel_names=['Channel 1', 'Channel 3'],  # channel names - specify the names of the channels
)

Writing a numpy array to an OME-TIFF file is also possible:

import numpy as np
from image2image_io.writers import write_ome_tiff_from_array

# Create a numpy array
array = np.random.randint(0, 255, (100, 100, 3), dtype=np.uint8)  # RGB image  

# Write the numpy array to an OME-TIFF file
write_ome_tiff_from_array(
    "path/to/output.ome.tiff",
    None,
    array,
    tile_size=1024,  # tile size for the output image
    channel_names=["R", "G", "B"],  # for RGB images, this might now have any effect
    resolution=0.5,  # resolution of the image in microns
)

Writing and reading OME-Zarr stores is supported through the same reader interface:

from image2image_io.readers import get_simple_reader
from image2image_io.writers import write_ome_zarr_from_array

write_ome_zarr_from_array(
    "path/to/output.ome.zarr",
    None,
    array,
    channel_names=["C0", "C1", "C2"],
    resolution=0.5,
)

reader = get_simple_reader("path/to/output.ome.zarr")
channel_first = reader.get_channel(0, 0)

Merging multiple images is alsy fairly easy to do:

from image2image_io.writers import merge_images

# Paths to the images
paths = ["path/to/image1.ome.tiff", "path/to/image2.ome.tiff"]

# Merge the images
merge_images(
    "output.ome.tiff",  # filename
    paths,  # list of paths to the images
    output_dir="path/to/output/dir",  # output directory for the final image
    tile_size=1024,  # tile size for the output image
    metadata={  # metadata for the output image - this specifies which channels to use in the export
        "path/to/image1.ome.tiff": {
            0: {
                "name": "image-1",
                "channel_ids": [0, 2],
                "channel_names": ["Channel 1", "Channel 3"],
                }
        },
        "path/to/image2.ome.tiff": {
            0: {
                "name": "image-2",
                "channel_ids": [0, 1],
                "channel_names": ["Channel 1", "Channel 2"],
                }
        }
    }
)

Command-line interface

A command-line interface (CLI) is provided to perform common tasks without writing code. You can access the CLI using the image2image-io command after installing the package.

 i2io --help
Usage: i2io [OPTIONS] COMMAND [ARGS]...

  Convert, merge, and manipulate image files.

Options:
  --dev          Flat to indicate that CLI should run in development mode and catch all errors.
  --no_color     Flag to enable colored while doing tasks.
  --version      Show the version and exit.
  -v, --verbose  Verbose output. This is additive flag so `-vvv` will print `INFO` messages and -vvvv will print
                 `DEBUG` information.
  -q, --quiet    Minimal output
  --debug        Maximum output
  -h, --help     Show this message and exit.

OME:
  convert  Convert images to pyramidal OME-TIFF or OME-Zarr.
  merge    Export images.

CZI:
  cziinfo   Print information about the CZI file.
  czi2tiff  Convert CZI to OME-TIFF.

Utility:
  thumbnail  Create a thumbnail for image(s).
  transform  Transform command.

For instance, the i2io convert command let's you convert between a few file formats (e.g. CZI to OME-TIFF) or create a different representation of the image, for instance with different tiling or data type.

Contributing

Contributions are always welcome. Please feel free to submit PRs with new features, bug fixes, or documentation improvements.

git clone https://github.com/vandeplaslab/image2image-io.git

pip install -e .[dev]

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