Slideflow provides an API for calculating gradient-based pixel attribution (saliency maps), as implemented by PAIR. Saliency maps can be calculated manually (as described below), or interactively in :ref:`Slideflow Studio <studio>`.
:class:`slideflow.grad.SaliencyMap` provides an interface for preparing a saliency map generator from a loaded model (Tensorflow or PyTorch) and calculating maps from preprocessed images. Supported methods include:
Creating a saliency map with :class:`slideflow.grad.SaliencyMap` requires two components: a loaded model and a preprocessed image. Trained models can be loaded from disk with :func:`slideflow.model.load`, and the model's preprocessing function can be prepared with :func:`slideflow.util.get_preprocess_fn`.
import slideflow as sf # Load a trained model and preprocessing function. model = sf.model.load('../saved_model') preprocess = sf.util.get_preprocess_fn('../saved_model') # Prepare a SaliencyMap sal_map = SaliencyMap(model, class_idx=0)
There are several ways you might acquire an image to use for a saliency map. To load an image tile from a whole-slide image, you can index a :class:`slideflow.WSI` object:
import slideflow as sf # Load a whole-slide image. wsi = sf.WSI('slide.svs', tile_px=299, tile_um=302) # Extract a tile using grid indexing. image = wsi[10, 25]
Alternatively, if you know the coordinates for an image tile and want to extract it from TFRecords, you can use :meth:`slideflow.Dataset.read_tfrecord_by_location`:
import slideflow as sf # Load a project and dataset. P = sf.Project(...) dataset = P.dataset(tile_px=299, tile_um=302) # Get the tile from slide "12345" at location (2000, 2000) slide, image = dataset.read_tfrecord_by_location( slide='12345', loc=(2000, 2000) )
Once you have an image and a loaded SaliencyMap object, you can calculate a saliency map from the preprocessed image:
mask = sal_map.integrated_gradients(preprocess(image))
Once a saliency map has been created, you can plot the image as a heatmap or as an overlay. The slideflow.grad submodule includes several utility functions to assist with plotting. For example, to plot a basic heatmap using the inferno matplotlib colormap, use :func:`slideflow.grad.plot_utils.inferno`:
from PIL import Image from slideflow.grad.plot_utils import inferno pil_image = Image.fromarray(inferno(mask)) pil_image.show()
To plot this saliency map as an overlay, use :func:`slideflow.grad.plot_utils.overlay`, passing in both the unprocessed image and the saliency map:
from PIL import Image from slideflow.grad.plot_utils import overlay overlay_img = overlay(image.numpy(), mask) pil_image = Image.fromarray(overlay_img) pil_image.show()
The following is a complete example for how to calculate and plot a saliency map for an image tile taken from a whole-slide image.
import slideflow as sf from slideflow.grad import SaliencyMap from slideflow.grad.plot_utils import overlay from PIL import Image # Load a slide and find the desired image tile. wsi = sf.WSI('slide.svs', tile_px=299, tile_um=302) image = wsi[20, 20] # Load a model and preprocessing function. model = sf.model.load_model(../saved_model) preprocess = sf.util.get_preprocess_fn('../saved_model') # Prepare the saliency map sal_map = SaliencyMap(model, class_idx=0) # Calculate saliency map using integrated gradients. ig_map = sal_map.integrated_gradients(preprocess(image)) # Display the saliency map as an overlay. overlay_img = overlay(image, ig_map) Image.fromarray(overlay_img).show()