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from __future__ import annotations |
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import inspect |
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import os |
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from collections.abc import Callable, Sequence |
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import numpy as np |
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import torch |
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from monai.data import Dataset |
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from monai.data.meta_tensor import MetaTensor |
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from monai.data.utils import iter_patch_position |
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from monai.data.wsi_reader import BaseWSIReader, WSIReader |
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from monai.transforms import ForegroundMask, Randomizable, apply_transform |
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from monai.utils import convert_to_dst_type, ensure_tuple_rep |
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from monai.utils.enums import CommonKeys, ProbMapKeys, WSIPatchKeys |
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__all__ = ["PatchWSIDataset", "SlidingPatchWSIDataset", "MaskedPatchWSIDataset"] |
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class PatchWSIDataset(Dataset): |
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""" |
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This dataset extracts patches from whole slide images (without loading the whole image) |
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It also reads labels for each patch and provides each patch with its associated class labels. |
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Args: |
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data: the list of input samples including image, location, and label (see the note below for more details). |
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patch_size: the size of patch to be extracted from the whole slide image. |
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patch_level: the level at which the patches to be extracted (default to 0). |
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transform: transforms to be executed on input data. |
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include_label: whether to load and include labels in the output |
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center_location: whether the input location information is the position of the center of the patch |
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additional_meta_keys: the list of keys for items to be copied to the output metadata from the input data |
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reader: the module to be used for loading whole slide imaging. If `reader` is |
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- a string, it defines the backend of `monai.data.WSIReader`. Defaults to cuCIM. |
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- a class (inherited from `BaseWSIReader`), it is initialized and set as wsi_reader. |
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- an instance of a class inherited from `BaseWSIReader`, it is set as the wsi_reader. |
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kwargs: additional arguments to pass to `WSIReader` or provided whole slide reader class |
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Returns: |
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dict: a dictionary of loaded image (in MetaTensor format) along with the labels (if requested). |
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{"image": MetaTensor, "label": torch.Tensor} |
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Note: |
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The input data has the following form as an example: |
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.. code-block:: python |
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[ |
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{"image": "path/to/image1.tiff", "location": [200, 500], "label": 0}, |
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{"image": "path/to/image2.tiff", "location": [100, 700], "patch_size": [20, 20], "patch_level": 2, "label": 1} |
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] |
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""" |
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def __init__( |
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self, |
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data: Sequence, |
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patch_size: int | tuple[int, int] | None = None, |
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patch_level: int | None = None, |
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transform: Callable | None = None, |
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include_label: bool = True, |
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center_location: bool = True, |
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additional_meta_keys: Sequence[str] | None = None, |
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reader="cuCIM", |
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**kwargs, |
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): |
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super().__init__(data, transform) |
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if patch_size is None: |
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self.patch_size = None |
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else: |
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self.patch_size = ensure_tuple_rep(patch_size, 2) |
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self.patch_level = patch_level |
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if patch_level is None: |
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patch_level = 0 |
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self.wsi_reader: WSIReader | BaseWSIReader |
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if isinstance(reader, str): |
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self.wsi_reader = WSIReader(backend=reader, level=patch_level, **kwargs) |
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elif inspect.isclass(reader) and issubclass(reader, BaseWSIReader): |
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self.wsi_reader = reader(level=patch_level, **kwargs) |
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elif isinstance(reader, BaseWSIReader): |
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self.wsi_reader = reader |
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else: |
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raise ValueError(f"Unsupported reader type: {reader}.") |
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self.backend = self.wsi_reader.backend |
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self.include_label = include_label |
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self.center_location = center_location |
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self.additional_meta_keys = additional_meta_keys or [] |
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self.wsi_object_dict: dict = {} |
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def _get_wsi_object(self, sample: dict): |
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image_path = sample[CommonKeys.IMAGE] |
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if image_path not in self.wsi_object_dict: |
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self.wsi_object_dict[image_path] = self.wsi_reader.read(image_path) |
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return self.wsi_object_dict[image_path] |
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def _get_label(self, sample: dict): |
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return torch.tensor(sample[CommonKeys.LABEL], dtype=torch.float32) |
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def _get_location(self, sample: dict): |
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if self.center_location: |
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size = self._get_size(sample) |
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return [sample[WSIPatchKeys.LOCATION][i] - size[i] // 2 for i in range(len(size))] |
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else: |
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return sample[WSIPatchKeys.LOCATION] |
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def _get_level(self, sample: dict): |
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if self.patch_level is None: |
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return sample.get(WSIPatchKeys.LEVEL, 0) |
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return self.patch_level |
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def _get_size(self, sample: dict): |
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if self.patch_size is None: |
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return ensure_tuple_rep(sample.get(WSIPatchKeys.SIZE), 2) |
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return self.patch_size |
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def _get_data(self, sample: dict): |
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if self.backend == "openslide": |
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self.wsi_object_dict = {} |
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wsi_obj = self._get_wsi_object(sample) |
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location = self._get_location(sample) |
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level = self._get_level(sample) |
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size = self._get_size(sample) |
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return self.wsi_reader.get_data(wsi=wsi_obj, location=location, size=size, level=level) |
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def _transform(self, index: int): |
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sample: dict = self.data[index] |
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image, metadata = self._get_data(sample) |
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for key in self.additional_meta_keys: |
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metadata[key] = sample[key] |
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output = {CommonKeys.IMAGE: MetaTensor(image, meta=metadata)} |
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if self.include_label: |
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output[CommonKeys.LABEL] = self._get_label(sample) |
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return apply_transform(self.transform, output) if self.transform else output |
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class SlidingPatchWSIDataset(Randomizable, PatchWSIDataset): |
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""" |
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This dataset extracts patches in sliding-window manner from whole slide images (without loading the whole image). |
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It also reads labels for each patch and provides each patch with its associated class labels. |
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Args: |
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data: the list of input samples including image, location, and label (see the note below for more details). |
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patch_size: the size of patch to be extracted from the whole slide image. |
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patch_level: the level at which the patches to be extracted (default to 0). |
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mask_level: the resolution level at which the mask/map is created (for `ProbMapProducer` for instance). |
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overlap: the amount of overlap of neighboring patches in each dimension (a value between 0.0 and 1.0). |
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If only one float number is given, it will be applied to all dimensions. Defaults to 0.0. |
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offset: the offset of image to extract patches (the starting position of the upper left patch). |
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offset_limits: if offset is set to "random", a tuple of integers defining the lower and upper limit of the |
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random offset for all dimensions, or a tuple of tuples that defines the limits for each dimension. |
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transform: transforms to be executed on input data. |
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include_label: whether to load and include labels in the output |
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center_location: whether the input location information is the position of the center of the patch |
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additional_meta_keys: the list of keys for items to be copied to the output metadata from the input data |
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reader: the module to be used for loading whole slide imaging. Defaults to cuCIM. If `reader` is |
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- a string, it defines the backend of `monai.data.WSIReader`. |
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- a class (inherited from `BaseWSIReader`), it is initialized and set as wsi_reader, |
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- an instance of a class inherited from `BaseWSIReader`, it is set as the wsi_reader. |
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seed: random seed to randomly generate offsets. Defaults to 0. |
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kwargs: additional arguments to pass to `WSIReader` or provided whole slide reader class |
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Note: |
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The input data has the following form as an example: |
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.. code-block:: python |
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[ |
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{"image": "path/to/image1.tiff"}, |
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{"image": "path/to/image2.tiff", "patch_size": [20, 20], "patch_level": 2} |
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] |
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Unlike `MaskedPatchWSIDataset`, this dataset does not filter any patches. |
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""" |
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def __init__( |
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self, |
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data: Sequence, |
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patch_size: int | tuple[int, int] | None = None, |
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patch_level: int | None = None, |
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mask_level: int = 0, |
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overlap: tuple[float, float] | float = 0.0, |
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offset: tuple[int, int] | int | str = (0, 0), |
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offset_limits: tuple[tuple[int, int], tuple[int, int]] | tuple[int, int] | None = None, |
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transform: Callable | None = None, |
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include_label: bool = False, |
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center_location: bool = False, |
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additional_meta_keys: Sequence[str] = (ProbMapKeys.LOCATION, ProbMapKeys.SIZE, ProbMapKeys.COUNT), |
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reader="cuCIM", |
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seed: int = 0, |
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**kwargs, |
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): |
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super().__init__( |
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data=[], |
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patch_size=patch_size, |
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patch_level=patch_level, |
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transform=transform, |
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include_label=include_label, |
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center_location=center_location, |
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additional_meta_keys=additional_meta_keys, |
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reader=reader, |
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**kwargs, |
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) |
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self.overlap = overlap |
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self.set_random_state(seed) |
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self.random_offset = False |
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if isinstance(offset, str): |
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if offset == "random": |
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self.random_offset = True |
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self.offset_limits: tuple[tuple[int, int], tuple[int, int]] | None |
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if offset_limits is None: |
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self.offset_limits = None |
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elif isinstance(offset_limits, tuple): |
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if isinstance(offset_limits[0], int): |
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self.offset_limits = (offset_limits, offset_limits) |
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elif isinstance(offset_limits[0], tuple): |
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self.offset_limits = offset_limits |
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else: |
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raise ValueError( |
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"The offset limits should be either a tuple of integers or tuple of tuple of integers." |
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) |
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else: |
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raise ValueError("The offset limits should be a tuple.") |
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else: |
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raise ValueError( |
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f'Invalid string for offset "{offset}". It should be either "random" as a string,' |
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"an integer, or a tuple of integers defining the offset." |
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) |
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else: |
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self.offset = ensure_tuple_rep(offset, 2) |
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self.mask_level = mask_level |
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self.data: list |
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self.image_data = list(data) |
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for sample in self.image_data: |
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patch_samples = self._evaluate_patch_locations(sample) |
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self.data.extend(patch_samples) |
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def _get_offset(self, sample): |
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if self.random_offset: |
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if self.offset_limits is None: |
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offset_limits = tuple((-s, s) for s in self._get_size(sample)) |
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else: |
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offset_limits = self.offset_limits |
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return tuple(self.R.randint(low, high) for low, high in offset_limits) |
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return self.offset |
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def _evaluate_patch_locations(self, sample): |
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"""Calculate the location for each patch in a sliding-window manner""" |
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patch_size = self._get_size(sample) |
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patch_level = self._get_level(sample) |
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wsi_obj = self._get_wsi_object(sample) |
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wsi_size = self.wsi_reader.get_size(wsi_obj, 0) |
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mask_ratio = self.wsi_reader.get_downsample_ratio(wsi_obj, self.mask_level) |
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patch_ratio = self.wsi_reader.get_downsample_ratio(wsi_obj, patch_level) |
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patch_size_0 = np.array([p * patch_ratio for p in patch_size]) |
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offset = self._get_offset(sample) |
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patch_locations = np.array( |
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list( |
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iter_patch_position( |
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image_size=wsi_size, patch_size=patch_size_0, start_pos=offset, overlap=self.overlap, padded=False |
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) |
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) |
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) |
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mask_locations = np.round((patch_locations + patch_size_0 // 2) / float(mask_ratio)) |
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sample[WSIPatchKeys.SIZE.value] = patch_size |
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sample[WSIPatchKeys.LEVEL.value] = patch_level |
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sample[ProbMapKeys.NAME.value] = os.path.basename(sample[CommonKeys.IMAGE]) |
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sample[ProbMapKeys.COUNT.value] = len(patch_locations) |
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sample[ProbMapKeys.SIZE.value] = np.array(self.wsi_reader.get_size(wsi_obj, self.mask_level)) |
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return [ |
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{**sample, WSIPatchKeys.LOCATION.value: np.array(loc), ProbMapKeys.LOCATION.value: mask_loc} |
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for loc, mask_loc in zip(patch_locations, mask_locations) |
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] |
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class MaskedPatchWSIDataset(PatchWSIDataset): |
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""" |
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This dataset extracts patches from whole slide images at the locations where foreground mask |
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at a given level is non-zero. |
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Args: |
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data: the list of input samples including image, location, and label (see the note below for more details). |
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patch_size: the size of patch to be extracted from the whole slide image. |
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patch_level: the level at which the patches to be extracted (default to 0). |
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mask_level: the resolution level at which the mask is created. |
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transform: transforms to be executed on input data. |
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include_label: whether to load and include labels in the output |
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center_location: whether the input location information is the position of the center of the patch |
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additional_meta_keys: the list of keys for items to be copied to the output metadata from the input data |
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reader: the module to be used for loading whole slide imaging. Defaults to cuCIM. If `reader` is |
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|
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- a string, it defines the backend of `monai.data.WSIReader`. |
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|
- a class (inherited from `BaseWSIReader`), it is initialized and set as wsi_reader, |
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- an instance of a class inherited from `BaseWSIReader`, it is set as the wsi_reader. |
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|
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kwargs: additional arguments to pass to `WSIReader` or provided whole slide reader class |
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Note: |
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The input data has the following form as an example: |
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.. code-block:: python |
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[ |
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{"image": "path/to/image1.tiff"}, |
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{"image": "path/to/image2.tiff", "size": [20, 20], "level": 2} |
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] |
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""" |
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def __init__( |
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self, |
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data: Sequence, |
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patch_size: int | tuple[int, int] | None = None, |
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patch_level: int | None = None, |
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mask_level: int = 7, |
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transform: Callable | None = None, |
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include_label: bool = False, |
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center_location: bool = False, |
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additional_meta_keys: Sequence[str] = (ProbMapKeys.LOCATION, ProbMapKeys.NAME), |
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reader="cuCIM", |
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**kwargs, |
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): |
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super().__init__( |
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data=[], |
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patch_size=patch_size, |
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patch_level=patch_level, |
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transform=transform, |
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include_label=include_label, |
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center_location=center_location, |
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additional_meta_keys=additional_meta_keys, |
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reader=reader, |
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**kwargs, |
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) |
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self.mask_level = mask_level |
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self.data: list |
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self.image_data = list(data) |
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for sample in self.image_data: |
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patch_samples = self._evaluate_patch_locations(sample) |
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self.data.extend(patch_samples) |
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def _evaluate_patch_locations(self, sample): |
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"""Calculate the location for each patch based on the mask at different resolution level""" |
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patch_size = self._get_size(sample) |
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patch_level = self._get_level(sample) |
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wsi_obj = self._get_wsi_object(sample) |
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wsi, _ = self.wsi_reader.get_data(wsi_obj, level=self.mask_level) |
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mask = np.squeeze(convert_to_dst_type(ForegroundMask(hsv_threshold={"S": "otsu"})(wsi), dst=wsi)[0]) |
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mask_locations = np.vstack(mask.nonzero()).T |
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mask_ratio = self.wsi_reader.get_downsample_ratio(wsi_obj, self.mask_level) |
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patch_ratio = self.wsi_reader.get_downsample_ratio(wsi_obj, patch_level) |
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patch_size_0 = np.array([p * patch_ratio for p in patch_size]) |
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patch_locations = np.round((mask_locations + 0.5) * float(mask_ratio) - patch_size_0 // 2).astype(int) |
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sample[WSIPatchKeys.SIZE.value] = patch_size |
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sample[WSIPatchKeys.LEVEL.value] = patch_level |
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sample[ProbMapKeys.NAME.value] = os.path.basename(sample[CommonKeys.IMAGE]) |
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sample[ProbMapKeys.COUNT.value] = len(patch_locations) |
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sample[ProbMapKeys.SIZE.value] = mask.shape |
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return [ |
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{**sample, WSIPatchKeys.LOCATION.value: np.array(loc), ProbMapKeys.LOCATION.value: mask_loc} |
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for loc, mask_loc in zip(patch_locations, mask_locations) |
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] |
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