History#
1.3.1 (2022-12-20)#
Major Updates and Feature Improvements#
Changes to API#
Adds a sample SVS loading function
tiatoolbox.data.small_svs()to the data module #517
Bug Fixes and Other Changes#
Simplifies example notebook for image reading for better readability
Restricts Shapely version to <2.0.0 for compatibility
1.3.0 (2022-10-20)#
Major Updates and Feature Improvements#
Adds an AnnotationTileGenerator and AnnotationRenderer which allows serving of tiles rendered directly from an annotation store.
Adds DFBR registration model and jupyter notebook example
Adds DICE metric
Adds SCCNN architecture. [read the docs]
Adds MapDe architecture. [read the docs]
Adds support for reading MPP metadata from NGFF v0.4
Adds enhancements to tiatoolbox.annotation.storage that are useful when using an AnnotationStore for visualization purposes.
Changes to API#
None
Bug Fixes and Other Changes#
Fixes colorbar_params #410
Fixes Jupyter notebooks for better read the docs rendering
Fixes typos, metadata and links
Fixes nucleus_segmentor_engine for boundary artefacts
Fixes the colorbar cropping in tests
Adds citation in README.md and CITATION.cff to Nature Communications Medicine paper
Fixes a bug #452 raised by @rogertrullo where only the numerator of the TIFF resolution tags was being read.
Fixes HoVer-Net+ post-processing to be inline with original work.
Fixes a bug where an exception would be raised if the OME XML is missing objective power.
Development related changes#
Uses Furo theme for readthedocs
Replaces nbgallery and nbsphinx with myst-nb for jupyter notebook rendering
Uses myst for markdown parsing
Uses requirements.txt to define dependencies for requirements consistency
Adds notebook AST pre-commit hook
Adds check to validate python examples in the code
Adds check to resolve imports
Fixes an error in a docstring which triggered the failing test.
Adds pre-commit hooks to format markdown and notebook markdown
Adds pip install workflow to resolve dependencies when requirements file is updated
Improves tiatoolbox import using LazyLoader
1.2.1 (2022-07-07)#
Major Updates and Feature Improvements#
None
Changes to API#
None
Bug Fixes and Other Changes#
Fixes issues with dependencies.
Adds flask to dependencies.
Fixes missing file in the python package.
Clarifies help string for show-wsi option.
Development related changes#
Removes Travis CI.
GitHub Actions will be used instead.
Adds pre-commit hooks to check requirements consistency.
Adds GitHub Action to resolve conda environment checks on Windows and Ubuntu.
1.2.0 (2022-07-05)#
Major Updates and Feature Improvements#
Adds support for Python 3.10
Adds short description for IDARS algorithm #383
Adds support for NGFF v0.4 OME-ZARR.
Adds CLI for launching tile server.
Changes to API#
Renames
stainnorm_target()function tostain_norm_target().Removes
get_wsireaderReplaces the custom PlattScaler in
tools/scale.pywith the regular Scikit-Learn LogisticRegression.
Bug Fixes and Other Changes#
Fixes bugs in UNET architecture.
Number of channels in Batchnorm argument in the decoding path to match with the input channels.
Padding
0creates feature maps in the decoder part with the same size as encoder.
Fixes linter issues and typos
Fixes incorrect output with overlap in
predictor.merge_predictions()andreturn_raw=TrueThanks to @paulhacosta for raising #356, Fixed by #358.
Fixes errors with JP2 read. Checks input path exists.
Fixes errors with torch upgrade to 1.12.
Development related changes#
Adds pre-commit hooks for consistency across the repo.
Sets up GitHub Actions Workflow.
Travis CI will be removed in future release.
1.1.0 (2022-05-07)#
Major Updates and Feature Improvements#
Adds DICOM Support.
Updates license to more permissive BSD 3-clause.
Adds
micronetmodel.Improves support for
tifffiles.Adds a check for tiles in a TIFF file when opening.
Uses OpenSlide to read a TIFF if it has tiles instead of OpenCV (VirtualWSIReader).
Adds a fallback to tifffile if it is tiled but openslide cannot read it (e.g. jp2k or jpegxl tiles).
Adds support for multi-channel images (HxWxC).
Fixes performance issues in
semantic_segmentor.py.Performance gain measurement: 21.67s (new) vs 45.564 (old) using a 4k x 4k WSI.
External Contribution from @ByteHexler.
Adds benchmark for Annotations Store.
Changes to API#
None
Bug Fixes and Other Changes#
Enhances the error messages to be more informative.
Fixes Flake8 Errors, typos.
Fixes patch predictor models based after fixing a typo.
Bug fixes in Graph functions.
Adds documentation for docker support.
General tidying up of docstrings.
Adds metrics to readthedocs/docstrings for pretrained models.
Development related changes#
Adds
pydicomandwsidicomas dependency.Updates dependencies.
Fixes Travis detection and makes improvements to run tests faster on Travis.
Adds Dependabot to automatically update dependencies.
Improves CLI definitions to make it easier to integrate new functions.
Fixes compile options for test_annotation_stores.py
1.0.1 (2022-01-31)#
Major Updates and Feature Improvements#
Updates dependencies for conda recipe #262
Changes to API#
None
Bug Fixes and Other Changes#
Adds User Warning For Missing SQLite Functions
Fixes Pixman version check errors
Fixes empty query in instance segmentor
Development related changes#
Fixes flake8 linting issues and typos
Conditional pytest.skipif to skip GPU tests on travis while running them locally or elsewhere
1.0.0 (2021-12-23)#
Major Updates and Feature Improvements#
Adds nucleus instance segmentation base class
Adds HoVerNet architecture
Adds multi-task segmentor HoVerNet+ model
Adds IDaRS pipeline
Adds SlideGraph pipeline
Adds PCam patch classification models
Adds support for stain augmentation feature
Adds classes and functions under
tiatoolbox.tools.graphto enable construction of graphs in a format which can be used with PyG (PyTorch Geometric).Add classes which act as a mutable mapping (dictionary like) structure and enables efficient management of annotations. (#135)
Adds example notebook for adding advanced models
Adds classes which can generate zoomify tiles from a WSIReader object.
Adds WSI viewer using Zoomify/WSIReader API (#212)
Adds README to example page for clarity
Adds support to override or specify mpp and power
Changes to API#
Replaces
models.controllerAPI withmodels.engineReplaces
CNNPatchPredictorwithPatchPredictor
Bug Fixes and Other Changes#
Fixes Fix
filter_coordinatesread wrong resolutions for patch extractionFor
PatchPredictorioconfigwill supersede everythingif
ioconfigis not providedIf
modelis pretrained (defined inpretrained_model.yaml)Use the yaml ioconfig
Any other input patch reading arguments will overwrite the yaml ioconfig (at the same keyword).
If
modelis not defined, all input patch reading arguments must be provided else exception will be thrown.
Improves performance of mask based patch extraction
Development related changes#
Improve tests performance for Travis runs
Adds feature detection mechanism to detect the platform and installed packages etc.
On demand imports for some libraries for performance
Improves performance of mask based patch extraction
0.8.0 (2021-10-27)#
Major Updates and Feature Improvements#
Adds
SemanticSegmentorwhich is Predictor equivalent for semantic segmentation.Add
TIFFWSIReaderclass to support OMETiff reading.Adds
FeatureExtractorAPI to controller.Adds WSI Serialization Dataset which support changing parallel workers on the fly. This would reduce the time spent to create new worker for every WSI/Tile (costly).
Adds IOState data class to contain IO information for loading input to model and assembling model output back to WSI/Tile.
Minor updates for
get_coordinatesto pave the way for getting patch IO for segmentation.Migrates old code to new variable names (patch extraction, patch wsi model).
Change in API from
pretrained_weighttopretrained_weights.Adds cli for semantic segmentation.
Update python notebooks to add
read_rectandread_boundsexamples withmppread.
Changes to API#
Adds
WSIReader.open.get_wsireaderwill deprecate in the next release. Please useWSIReader.openinstead.CLI is now POSIX compatible
Replaces underscores in variable names with hyphens
Models API updated to use
pretrained_weightsinstead ofpretrained_weight.Move string_to_tuple to tiatoolbox/utils/misc.py
Bug Fixes and Other Changes#
Fixes README git clone instructions.
Fixes stain normalisation due to changes in sklearn.
Fixes a test in tests/test_slide_info
Fixes readthedocs documentation issues
Development related changes#
Adds dependencies for tiffile, imagecodecs, zarr.
Adds more stringent pre-commit checks
Moved local test files into
tiatoolbox/data.Fixed
Manifest.iniand addedtiatoolbox/data. This means that this directory will be downloaded with the package.Using
pkg_resourcesto properly load bundled resources (e.g.target_image.png) intiatoolbox.data.Removed duplicate code in
conftest.pyfor downloading remote files. This is now intiatoolbox.data._fetch_remote_file.Fixes errors raised by new flake8 rules.
Remove leading underscores from fixtures.
Rename some remote sample files to make more sense.
Moves all cli commands/options from cli.py to cli_commands to make it clean and easier to add new commands
Removes redundant tests
Updates to new GitHub organisation name in the repo
Fixes related links
0.7.0 (2021-09-16)#
Major and Feature Improvements#
Drops support for python 3.6
Update minimum requirement to python 3.7
Adds support for python 3.9
Adds
modelsbase to the repository. Currently, PyTorch models are supported. New custom models can be added. The tiatoolbox also supports using custom weights to pre-existing built-in models.Adds
classificationpackage and CNNPatchPredictor which takes predefined model architecture and pre-trained weights as input. The pre-trained weights for classification using kather100k data set is automatically downloaded if no weights are provided as input.
Adds mask-based patch extraction functionality to extract patches based on the regions that are highlighted in the
input_mask. If'auto'option is selected, a tissue mask is automatically generated for theinput_imageusing tiatoolboxTissueMaskerfunctionality.Adds visualisation module to overlay the results of an algorithm.
Changes to API#
Command line interface for stain normalisation can be called using the keyword
stain-norminstead ofstainnormReplaces
FixedWindowPatchExtractorwithSlidingWindowPatchExtractor.get_patchextractor takes the
slidingwindowas an argument.Depreciates
VariableWindowPatchExtractor
Bug Fixes and Other Changes#
Significantly improved python notebook documentation for clarity, consistency and ease of use for non-experts.
Adds detailed installation instructions for Windows, Linux and Mac
Development related changes#
Moves flake8 above pytest in the
travis.ymlscript stage.Adds
set -eat the start of the script stage intravis.ymlto cause it to exit on error and (hopefully) not run later parts of the stage.Readthedocs related changes
Uses
requirements.txtin.readthedocs.ymlUses apt-get installation for openjpeg and openslide
Removes conda build on readthedocs build
Adds extra checks to pre-commit, e.g., import sorting, spellcheck etc. Detailed list can be found on this commit.
0.6.0 (2021-05-11)#
Major and Feature Improvements#
Add
TissueMaskerclass to allow tissue masking usingOtsuandMorphologicalprocessing.Add helper/convenience method to WSIReader(s) to produce a mask. Add reader object to allow reading a mask conveniently as if it were a WSI i.e., use same location and resolution to read tissue area and mask area.
Add
PointsPatchExtractorreturns patches that can be used by classification models. Takescsv,jsonorpd.DataFrameand returns patches corresponding to each pixel location.Add feature
FixedWindowPatchExtractorto run sliding window deep learning algorithms.Add example notebooks for patch extraction and tissue masking.
Update readme with improved instructions to use the toolbox. Make the README file somewhat more comprehensible to beginners, particularly those with not much background or experience.
Changes to API#
tiatoolbox.dataloaderreplaced bytiatoolbox.wsicore
Bug Fixes and Other Changes#
Minor bug fixes
Development-related changes#
Improve unit test coverage.
Move test data to tiatoolbox server.
0.5.2 (2021-03-12)#
Bug Fixes and Other Changes#
Fix URL for downloading test JP2 image.
Update readme with new logo.
0.5.1 (2020-12-31)#
Bug Fixes and Other Changes#
Add
scikit-imageas dependency insetup.pyUpdate notebooks to add instructions to install dependencies
0.5.0 (2020-12-30)#
Major and Feature Improvements#
Adds
get_wsireader()to return appropriate WSIReader.Adds new functions to allow reading of regions using WSIReader at different resolutions given in units of:
microns per-pixel (mpp)
objective lens power (power)
pixels-per baseline (baseline)
resolution level (level)
Adds functions for reading regions are
read_boundsandread_rect.read_boundstakes a tuple (left, top, right, bottom) of coordinates in baseline (level 0) reference frame and returns a region bounded by those.read_recttakes one coordinate in baseline reference frame and an output size in pixels.
Adds
VirtualWSIReaderas a subclass of WSIReader which can be used to read visual fields (tiles).VirtualWSIReaderaccepts ndarray or image path as input.
Adds MPP fall back to standard TIFF resolution tags with warning.
If OpenSlide cannot determine microns per pixel (
mpp) from the metadata, checks the TIFF resolution units (TIFF tags:ResolutionUnit,XResolutionandYResolution) to calculate MPP. Additionally, add function to estimate missing objective power if MPP is known of derived from TIFF resolution tags.
Estimates missing objective power from MPP with warning.
Adds example notebooks for stain normalisation and WSI reader.
Adds caching to slide info property. This is done by checking if a private
self._m_infoexists and returning it if so, otherwiseself._infois called to create the info for the first time (or to force regenerating) and the result is assigned toself._m_info. This could in future be made much simpler with thefunctools.cached_propertydecorator in Python 3.8+.Adds pre processing step to stain normalisation where stain matrix encodes colour information from tissue region only.
Changes to API#
read_regionrefactored to be backwards compatible with openslide arguments.slide_infochanged toinfoUpdates WSIReader which only takes one input
WSIReaderinput_pathvariable changed toinput_imgAdds
tile_read_size,tile_objective_valueandoutput_dirto WSIReader.save_tiles()Adds
tile_read_sizeas a tupletransforms.imresizetakes additional argumentsoutput_sizeand interpolation method ‘optimise’ which selectscv2.INTER_AREAforscale_factor<1andcv2.INTER_CUBICforscale_factor>1
Bug Fixes and Other Changes#
Refactors glymur code to use index slicing instead of deprecated read function.
Refactors thumbnail code to use
read_boundsand be a member of the WSIReader base class.Updates
README.mdto clarify installation instructions.Fixes slide_info.py for changes in WSIReader API.
Fixes save_tiles.py for changes in WSIReader API.
Updates
example_wsiread.ipynbto reflect the changes in WSIReader.Adds Google Colab and Kaggle links to allow user to run notebooks directly on colab or kaggle.
Fixes a bug in taking directory input for stainnorm operation for command line interface.
Pins
numpy<=1.19.3to avoid compatibility issues with opencv.Adds
scikit-imageorjupyterlabas a dependency.
Development related changes#
Moved
test_wsireader_jp2_save_tilesto test_wsireader.py.Change recipe in Makefile for coverage to use pytest-cov instead of coverage.
Runs travis only on PR.
Adds pre-commit for easy setup of client-side git hooks for black code formatting and flake8 linting.
Adds flake8-bugbear to pre-commit for catching potential deepsource errors.
Adds constants for test regions in
test_wsireader.py.Rearranges
usage.rstfor better readability.Adds
pre-commit,flake8,flake8-bugbear,black,pytest-covandrecommonmarkas dependency.
0.4.0 (2020-10-25)#
Major and Feature Improvements#
Adds
OpenSlideWSIReaderto read Openslide image formatsAdds support to read Omnyx jp2 images using
OmnyxJP2WSIReader.New feature added to perform stain normalisation using
Ruifork,Reinhard,Vahadane,Macenkomethods and using custom stain matrices.Adds example notebook to read whole slide images via the toolbox.
Adds
WSIMetaclass to save meta data for whole slide images.WSIMetacasts properties to python types. Properties from OpenSlide are returned as string. raw values can always be accessed viaslide.raw. Adds data validation e.g., checking that level_count matches up with the length of thelevel_dimensionsandlevel_downsamples. Adds type hints toWSIMeta.Adds exceptions
FileNotSupportedandMethodNotSupported
Changes to API#
Restructures
WSIReaderas parent class to allow support to read whole slide images in other formats.Adds
slide_infoas a property ofWSIReaderUpdates
slide_infotype toWSIMetafromdictDepreciates support for multiprocessing from within the toolbox. The toolbox is focused on processing single whole slide and standard images. External libraries can be used to run using multiprocessing on multiple files.
Bug Fixes and Other Changes#
Adds
scikit-learn,glymuras a dependencyAdds licence information
Removes
pathosas a dependencyUpdates
openslide-pythonrequirement to 1.1.2
0.3.0 (2020-07-19)#
Major and Feature Improvements#
Adds feature
read_regionto read a small region from whole slide imagesAdds feature
save_tilesto save image tiles from whole slide imagesAdds feature
imresizeto resize imagesAdds feature
transforms.background_compositeto avoid creation of black tiles from whole slide images.
Changes to API#
None
Bug Fixes and Other Changes#
Adds
pandasas dependency
0.2.2 (2020-07-12)#
Major and Feature Improvements#
None
Changes to API#
None
Bug Fixes and Other Changes#
Fix command line interface for
slide-infofeature and travis pypi deployment
0.2.1 (2020-07-10)#
Major and Feature Improvements#
None
Changes to API#
None
Bug Fixes and Other Changes#
Minor changes to configuration files.
0.2.0 (2020-07-10)#
Major and Feature Improvements#
Adds feature slide_info to read whole slide images and display meta data information
Adds multiprocessing decorator TIAMultiProcess to allow running toolbox functions using multiprocessing.
Changes to API#
None
Bug Fixes and Other Changes#
Adds Sphinx Readthedocs support https://readthedocs.org/projects/tia-toolbox/ for stable and develop branches
Adds code coverage tools to test the pytest coverage of the package
Adds deepsource integration to highlight and fix bug risks, performance issues etc.
Adds README to allow users to setup the environment.
Adds conda and pip requirements instructions
0.1.0 (2020-05-28)#
First release on PyPI.