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Modular visualization and analysis dashboard creation for high-resolution microscopy images.

Project description

fusion-tools

Modular visualization and analysis dashboard creation for high-resolution microscopy images.

Installation

To access interactive dashboard components and functionality use:

$ pip install fusion-tools[interactive]

To just use the shapes utility functions and dataset classes (SegmentationDataset and ClassificationDataset) use:

$ pip install fusion-tools

Usage

fusion-tools is intended to bring some of the functionality found in FUSION to developers working with whole slide images (WSIs) stored locally.

One such example would be the Visualization and SlideMap class:

from fusion_tools.visualization import Visualization
from fusion_tools.components import SlideMap

vis_session = Visualization(
    local_slides = [path_to_slide]
    components = [
        [
            SlideMap()
        ]
    ]
)

vis_session.start()

The Visualization class lets users construct custom layouts of different tools by passing a list containing rows, columns, and tabs. (e.g. [ [column in row 1], [ [ tab 1 in column 2 in row 1, tab 2 in column 2 in row 1] ], [ [ column 1 in row 2 ] ] ] ).

By passing a list of paths to locally-stored whole slide images (WSIs), fusion-tools automatically generates a LocalTileServer which is bundled in with the Visualization session to allow for high-resolution image viewing.

from fusion_tools.visualization import Visualization
from fusion_tools.components import SlideMap, OverlayOptions, PropertyViewer
from fusion_tools.utils.shapes import load_aperio


path_to_slide = '/path/to/wsi.svs'
path_to_annotations = '/path/to/aperio_annotations.xml'

annotations = load_aperio(path_to_annotations)

vis_session = Visualization(
    local_slides = [path_to_slide],
    local_annotations = [annotations],
    components = [
        [
            SlideMap(),
            [
                OverlayOptions(),
                PropertyViewer()
            ]
        ]
    ]
)

vis_session.start()

You can also access remote tile servers (either through DSATileServer or CustomTileServer) as well as annotations stored on a Digital Slide Archive instance.

from fusion_tools.visualization import Visualization
from fusion_tools.handler.dsa_handler import DSAHandler
from fusion_tools.components import SlideMap

# Grabbing first item from demo DSA instance
base_url = 'https://demo.kitware.com/histomicstk/api/v1'
item_id = '5bbdeed1e629140048d01bcb'

# Starting the DSAHandler to grab information:
dsa_handler = DSAHandler(
    girderApiUrl = base_url
)

# Checking how many annotations this item has:
#print('This item has the following annotations: ')
#print(dsa_handler.query_annotation_count(item=item_id).to_dict('records'))

vis_session = Visualization(
    tileservers = [dsa_handler.get_tile_server(item_id)],
    components = [
        [
            SlideMap()
        ]
    ]
)

vis_session.start()

You can also use some of segmentation components for adding labels and annotations to structures in the slide.

Creating annotations on top of structures

Applying labels to many structures at the same time

from fusion_tools.visualization import Visualization
from fusion_tools.handler.dsa_handler import DSAHandler
from fusion_tools.components import SlideMap, FeatureAnnotation, BulkLabels

# Grabbing first item from demo DSA instance
base_url = 'https://demo.kitware.com/histomicstk/api/v1'
item_id = '5bbdeed1e629140048d01bcb'

# Starting the DSAHandler to grab information:
dsa_handler = DSAHandler(
    girderApiUrl = base_url
)

# Checking how many annotations this item has:
#print('This item has the following annotations: ')
#print(dsa_handler.query_annotation_count(item=item_id).to_dict('records'))

vis_session = Visualization(
    tileservers = [dsa_handler.get_tile_server(item_id)],
    components = [
        [
            SlideMap(),
            [
                FeatureAnnotation(
                    storage_path = os.getcwd()+'\\tests\\Test_Annotations\\',
                    labels_format = 'json',
                    annotations_format = 'rgb'
                ),
                BulkLabels()
            ]
        ]
    ]
)

vis_session.start()

New in fusion-tools>2.0.0!

Now you can add multiple slides to a single visualization session and you can even view them side-by-side!

  • By default, components in the same row are linked, or they can interact with each other through callbacks. This can be updated using the "linkage" kwarg when initializing a Visualization session.
  • If two of the same types of components (e.g., two SlideMap components) are placed in the same row and "linkage" is set to "row", callbacks will not work. Beware!
from fusion_tools.visualization import Visualization
from fusion_tools.components import SlideMap, OverlayOptions, PropertyViewer, PropertyPlotter
from fusion_tools.handler.dsa_handler import DSAHandler

# Mixed types of slides and annotations
local_slide_list = ['slide1.tif','slide2.ome.tif','slide3.svs']
local_annotations_list = ['slide1_annotations.xml','slide2 annotations.json','annotations for slide3.h5ad']

dsa_handler = DSAHandler(
    girderApiUrl = 'http://example_dsa_address.com/api/v1'
)

dsa_items_list = [
    'item_uuid_1',
    'item_uuid_2'
]

dsa_tileservers = [dsa_handler.get_tile_server(i) for i in dsa_items_list]

# Setting linkage to "col" to enable side-by-side visualization
vis_sess = Visualization(
    local_slides = local_slide_list,
    local_annotations = local_annotations_list,
    tileservers = dsa_tileservers,
    linkage = 'col',
    components = [
        [
            [
                SlideMap(),
                OverlayOptions(),
                PropertyViewer(),
                PropertyPlotter()
            ],            
            [
                SlideMap(),
                OverlayOptions(),
                PropertyViewer(),
                PropertyPlotter()
            ]
        ]
    ],
    app_options={'port': 8050}
)

vis_sess.start()

Contributing

Open to contributions. Feel free to submit a PR or post feature requests in Issues

Open Projects:

  • Automated segmentation workflow for locally stored images (active-learning, SAM, etc.)
  • Monitoring long-running model training/other external processes
  • Import anndata spatial --omics dataset (UPDATE (v2.0.0): see utils.shapes.load_visium for example loading 10x Visium dataset)

License

fusion-tools was created by Samuel Border. It is licensed under the terms of the Apache 2.0 License

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