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from __future__ import annotations |
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from collections.abc import Callable |
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from monai.handlers.ignite_metric import IgniteMetricHandler |
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from monai.metrics import DiceMetric |
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from monai.utils import MetricReduction |
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class MeanDice(IgniteMetricHandler): |
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""" |
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Computes Dice score metric from full size Tensor and collects average over batch, class-channels, iterations. |
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""" |
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def __init__( |
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self, |
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include_background: bool = True, |
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reduction: MetricReduction | str = MetricReduction.MEAN, |
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num_classes: int | None = None, |
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output_transform: Callable = lambda x: x, |
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save_details: bool = True, |
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return_with_label: bool | list[str] = False, |
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) -> None: |
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""" |
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Args: |
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include_background: whether to include dice computation on the first channel of the predicted output. |
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Defaults to True. |
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reduction: define the mode to reduce metrics, will only execute reduction on `not-nan` values, |
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available reduction modes: {``"none"``, ``"mean"``, ``"sum"``, ``"mean_batch"``, ``"sum_batch"``, |
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``"mean_channel"``, ``"sum_channel"``}, default to ``"mean"``. if "none", will not do reduction. |
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num_classes: number of input channels (always including the background). When this is None, |
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``y_pred.shape[1]`` will be used. This option is useful when both ``y_pred`` and ``y`` are |
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single-channel class indices and the number of classes is not automatically inferred from data. |
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output_transform: callable to extract `y_pred` and `y` from `ignite.engine.state.output` then |
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construct `(y_pred, y)` pair, where `y_pred` and `y` can be `batch-first` Tensors or |
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lists of `channel-first` Tensors. the form of `(y_pred, y)` is required by the `update()`. |
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`engine.state` and `output_transform` inherit from the ignite concept: |
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https://pytorch.org/ignite/concepts.html#state, explanation and usage example are in the tutorial: |
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https://github.com/Project-MONAI/tutorials/blob/master/modules/batch_output_transform.ipynb. |
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save_details: whether to save metric computation details per image, for example: mean dice of every image. |
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default to True, will save to `engine.state.metric_details` dict with the metric name as key. |
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return_with_label: whether to return the metrics with label, only works when reduction is "mean_batch". |
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If `True`, use "label_{index}" as the key corresponding to C channels; if 'include_background' is True, |
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the index begins at "0", otherwise at "1". It can also take a list of label names. |
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The outcome will then be returned as a dictionary. |
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See also: |
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:py:meth:`monai.metrics.meandice.compute_dice` |
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""" |
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metric_fn = DiceMetric( |
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include_background=include_background, |
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reduction=reduction, |
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num_classes=num_classes, |
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return_with_label=return_with_label, |
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) |
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super().__init__(metric_fn=metric_fn, output_transform=output_transform, save_details=save_details) |
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