histoprep

Read and process histological slide images with python!


Keywords
cut, histological-images, histological-slides, medical-image-analysis, medical-image-processing, medical-imaging, openslide, pathology, pathology-image, preprocess, slide-image, tissue-analysis, tissue-classification
License
MIT
Install
pip install histoprep==0.0.1.dev8

Documentation

HistoPrep

Preprocessing large medical images for machine learning made easy!

Description • Installation • Usage • API Documentation • Citation

Description

HistoPrep makes is easy to prepare your histological slide images for deep learning models. You can easily cut large slide images into smaller tiles and then preprocess those tiles (remove tiles with shitty tissue, finger marks etc).

Installation

Install OpenSlide on your system and then install histoprep with pip!

pip install histoprep

Usage

Typical workflow for training deep learning models with histological images is the following:

  1. Cut each slide image into smaller tile images.
  2. Preprocess smaller tile images by removing tiles with bad tissue, staining artifacts.
  3. Overfit a pretrained ResNet50 model, report 100% validation accuracy and publish it in Nature like everyone else.

With HistoPrep, steps 1. and 2. are as easy as accidentally drinking too much at the research group christmas party and proceeding to work remotely until June.

Let's start by cutting a slide from the PANDA kaggle challenge into small tiles.

from histoprep import SlideReader

# Read slide image.
reader = SlideReader("./slides/slide_with_ink.jpeg")
# Detect tissue.
threshold, tissue_mask = reader.get_tissue_mask(level=-1)
# Extract overlapping tile coordinates with less than 50% background.
tile_coordinates = reader.get_tile_coordinates(
    tissue_mask, width=512, overlap=0.5, max_background=0.5
)
# Save tile images with image metrics for preprocessing.
tile_metadata = reader.save_regions(
    "./train_tiles/", tile_coordinates, threshold=threshold, save_metrics=True
)
slide_with_ink: 100%|██████████| 390/390 [00:01<00:00, 295.90it/s]

Let's take a look at the output and visualise the thumbnails.

jopo666@~$ tree train_tiles
train_tiles
└── slide_with_ink
    ├── metadata.parquet       # tile metadata
    ├── properties.json        # tile properties
    ├── thumbnail.jpeg         # thumbnail image
    ├── thumbnail_tiles.jpeg   # thumbnail with tiles
    ├── thumbnail_tissue.jpeg  # thumbnail of the tissue mask
    └── tiles [390 entries exceeds filelimit, not opening dir]

Prostate biopsy sample Tissue mask Thumbnail with tiles

That was easy, but it can be annoying to whip up a new python script every time you want to cut slides, and thus it is recommended to use the HistoPrep CLI program!

# Repeat the above code for all images in the PANDA dataset!
jopo666@~$ HistoPrep --input './train_images/*.tiff' --output ./tiles --width 512 --overlap 0.5 --max-background 0.5

As we can see from the above images, histological slide images often contain areas that we would not like to include into our training data. Might seem like a daunting task but let's try it out!

from histoprep.utils import OutlierDetector

# Let's wrap the tile metadata with a helper class.
detector = OutlierDetector(tile_metadata)
# Cluster tiles based on image metrics.
clusters = detector.cluster_kmeans(num_clusters=4, random_state=666)
# Visualise first cluster.
reader.get_annotated_thumbnail(
    image=reader.read_level(-1), coordinates=detector.coordinates[clusters == 0]
)

Tiles in cluster 0

I said it was gonna be easy! Now we can mark tiles in cluster 0 as outliers and start overfitting our neural network! This was a simple example but the same code can be used to cluster all several million tiles extracted from the PANDA dataset and discard outliers simultaneously!

Citation

If you use HistoPrep to process the images for your publication, please cite the github repository.

@misc{histoprep,
  author = {Pohjonen, Joona and Ariotta, Valeria},
  title = {HistoPrep: Preprocessing large medical images for machine learning made easy!},
  year = {2022},
  publisher = {GitHub},
  journal = {GitHub repository},
  howpublished = {https://github.com/jopo666/HistoPrep},
}