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import numpy as np
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def get_masked_data(label_data, image_data, labels):
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"""
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Extracts and returns the image data corresponding to specified labels within a 3D volume.
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This function efficiently masks the `image_data` array based on the provided `labels` in the `label_data` array.
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The function handles cases with both a large and small number of labels, optimizing performance accordingly.
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Args:
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label_data (np.ndarray): A NumPy array containing label data, representing different anatomical
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regions or classes in a 3D medical image.
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image_data (np.ndarray): A NumPy array containing the image data from which the relevant regions
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will be extracted.
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labels (list of int): A list of integers representing the label values to be used for masking.
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Returns:
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np.ndarray: A NumPy array containing the elements of `image_data` that correspond to the specified
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labels in `label_data`. If no labels are provided, an empty array is returned.
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Raises:
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ValueError: If `image_data` and `label_data` do not have the same shape.
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Example:
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label_int_dict = {"liver": [1], "kidney": [5, 14]}
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masked_data = get_masked_data(label_data, image_data, label_int_dict["kidney"])
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"""
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if image_data.shape != label_data.shape:
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raise ValueError(
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f"Shape mismatch: image_data has shape {image_data.shape}, "
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f"but label_data has shape {label_data.shape}. They must be the same."
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)
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if not labels:
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return np.array([])
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labels = list(set(labels))
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num_label_acceleration_thresh = 3
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if len(labels) >= num_label_acceleration_thresh:
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mask = np.isin(label_data, labels)
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else:
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mask = np.zeros_like(label_data, dtype=bool)
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for label in labels:
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mask = np.logical_or(mask, label_data == label)
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masked_data = image_data[mask.astype(bool)]
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return masked_data
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def is_outlier(statistics, image_data, label_data, label_int_dict):
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"""
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Perform a quality check on the generated image by comparing its statistics with precomputed thresholds.
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Args:
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statistics (dict): Dictionary containing precomputed statistics including mean +/- 3sigma ranges.
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image_data (np.ndarray): The image data to be checked, typically a 3D NumPy array.
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label_data (np.ndarray): The label data corresponding to the image, used for masking regions of interest.
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label_int_dict (dict): Dictionary mapping label names to their corresponding integer lists.
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e.g., label_int_dict = {"liver": [1], "kidney": [5, 14]}
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Returns:
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dict: A dictionary with labels as keys, each containing the quality check result,
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including whether it's an outlier, the median value, and the thresholds used.
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If no data is found for a label, the median value will be `None` and `is_outlier` will be `False`.
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Example:
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# Example input data
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statistics = {
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"liver": {
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"sigma_6_low": -21.596463547885904,
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"sigma_6_high": 156.27881534763367
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},
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"kidney": {
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"sigma_6_low": -15.0,
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"sigma_6_high": 120.0
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}
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}
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label_int_dict = {
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"liver": [1],
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"kidney": [5, 14]
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}
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image_data = np.random.rand(100, 100, 100) # Replace with actual image data
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label_data = np.zeros((100, 100, 100)) # Replace with actual label data
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label_data[40:60, 40:60, 40:60] = 1 # Example region for liver
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label_data[70:90, 70:90, 70:90] = 5 # Example region for kidney
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result = is_outlier(statistics, image_data, label_data, label_int_dict)
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"""
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outlier_results = {}
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for label_name, stats in statistics.items():
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low_thresh = min(stats["sigma_6_low"], stats["percentile_0_5"])
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high_thresh = max(stats["sigma_6_high"], stats["percentile_99_5"])
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if label_name == "bone":
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high_thresh = 1000.0
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labels = label_int_dict.get(label_name, [])
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masked_data = get_masked_data(label_data, image_data, labels)
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masked_data = masked_data[~np.isnan(masked_data)]
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if len(masked_data) == 0 or masked_data.size == 0:
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outlier_results[label_name] = {
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"is_outlier": False,
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"median_value": None,
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"low_thresh": low_thresh,
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"high_thresh": high_thresh,
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}
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continue
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median_value = np.nanmedian(masked_data)
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if np.isnan(median_value):
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median_value = None
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is_outlier = False
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else:
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is_outlier = median_value < low_thresh or median_value > high_thresh
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outlier_results[label_name] = {
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"is_outlier": is_outlier,
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"median_value": median_value,
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"low_thresh": low_thresh,
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"high_thresh": high_thresh,
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}
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return outlier_results
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