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from __future__ import annotations |
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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 decollate_batch, list_data_collate |
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from monai.engines import SupervisedEvaluator, SupervisedTrainer |
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from monai.engines.utils import IterationEvents |
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from monai.transforms import Compose |
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from monai.utils.enums import CommonKeys |
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class Interaction: |
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""" |
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Ignite process_function used to introduce interactions (simulation of clicks) for DeepEdit Training/Evaluation. |
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More details about this can be found at: |
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Diaz-Pinto et al., MONAI Label: A framework for AI-assisted Interactive |
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Labeling of 3D Medical Images. (2022) https://arxiv.org/abs/2203.12362 |
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Args: |
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deepgrow_probability: probability of simulating clicks in an iteration |
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transforms: execute additional transformation during every iteration (before train). |
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Typically, several Tensor based transforms composed by `Compose`. |
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train: True for training mode or False for evaluation mode |
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click_probability_key: key to click/interaction probability |
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label_names: Dict of label names |
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max_interactions: maximum number of interactions per iteration |
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""" |
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def __init__( |
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self, |
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deepgrow_probability: float, |
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transforms: Sequence[Callable] | Callable, |
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train: bool, |
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label_names: None | dict[str, int] = None, |
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click_probability_key: str = "probability", |
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max_interactions: int = 1, |
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) -> None: |
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self.deepgrow_probability = deepgrow_probability |
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self.transforms = Compose(transforms) if not isinstance(transforms, Compose) else transforms |
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self.train = train |
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self.label_names = label_names |
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self.click_probability_key = click_probability_key |
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self.max_interactions = max_interactions |
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def __call__(self, engine: SupervisedTrainer | SupervisedEvaluator, batchdata: dict[str, torch.Tensor]) -> dict: |
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if batchdata is None: |
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raise ValueError("Must provide batch data for current iteration.") |
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if np.random.choice([True, False], p=[self.deepgrow_probability, 1 - self.deepgrow_probability]): |
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for j in range(self.max_interactions): |
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inputs, _ = engine.prepare_batch(batchdata) |
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inputs = inputs.to(engine.state.device) |
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engine.fire_event(IterationEvents.INNER_ITERATION_STARTED) |
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engine.network.eval() |
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with torch.no_grad(): |
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if engine.amp: |
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with torch.cuda.amp.autocast(): |
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predictions = engine.inferer(inputs, engine.network) |
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else: |
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predictions = engine.inferer(inputs, engine.network) |
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batchdata.update({CommonKeys.PRED: predictions}) |
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batchdata_list = decollate_batch(batchdata, detach=True) |
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for i in range(len(batchdata_list)): |
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batchdata_list[i][self.click_probability_key] = ( |
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(1.0 - ((1.0 / self.max_interactions) * j)) if self.train else 1.0 |
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) |
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batchdata_list[i] = self.transforms(batchdata_list[i]) |
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batchdata = list_data_collate(batchdata_list) |
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engine.fire_event(IterationEvents.INNER_ITERATION_COMPLETED) |
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else: |
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batchdata_list = decollate_batch(batchdata, detach=True) |
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for i in range(1, len(batchdata_list[0][CommonKeys.IMAGE])): |
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batchdata_list[0][CommonKeys.IMAGE][i] *= 0 |
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batchdata = list_data_collate(batchdata_list) |
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engine.state.batch = batchdata |
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return engine._iteration(engine, batchdata) |
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