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460 changes: 460 additions & 0 deletions BraTS/tutorial.ipynb

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48 changes: 48 additions & 0 deletions BraTS/utils.py
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from pathlib import Path
import matplotlib.pyplot as plt
import nibabel as nib

DATA_FOLDER = "data"


def visualize_data(
data_folder: str = DATA_FOLDER,
subject_id: str = "BraTS-GLI-00001-000",
slice_index: int = 75,
):
"""Visualize the MRI modalities for a given slice index

Args:
data_folder (str, optional): Path to the folder containing the t1, t1c, t2 & flair file. Defaults to DATA_FOLDER.
slice_index (int, optional): Slice to be visualized (first index in data of shape (155, 240, 240)). Defaults to 75.
"""
_, axes = plt.subplots(1, 4, figsize=(12, 10))

subject_path = Path(data_folder) / subject_id
modalities = ["t1n", "t1c", "t2f", "t2w"]
for i, mod in enumerate(modalities):
modality_file = subject_path / f"{subject_id}-{mod}.nii.gz"
modality_np = nib.load(modality_file).get_fdata().transpose(2, 1, 0)
axes[i].set_title(mod)
axes[i].imshow(modality_np[slice_index, :, :], cmap="gray")
axes[i].axis("off")


def visualize_segmentation(modality_file: str, segmentation_file: str):
"""Visualize the MRI modality and the segmentation

Args:
modality_file (str): Path to the desired modality file
segmentation_file (str): Path to the segmentation file
"""
modality_np = nib.load(modality_file).get_fdata().transpose(2, 1, 0)
seg_np = nib.load(segmentation_file).get_fdata().transpose(2, 1, 0)
_, ax = plt.subplots(1, 2, figsize=(8, 4))

slice_index = modality_np.shape[0] // 2 # You can choose any slice here
ax[0].imshow(modality_np[slice_index, :, :], cmap="gray")
ax[1].imshow(modality_np[slice_index, :, :], cmap="gray")
ax[1].imshow(seg_np[slice_index, :, :], cmap="plasma", alpha=0.3)
for ax in ax:
ax.axis("off")
plt.tight_layout()