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| import logging |
| import os |
| import sys |
| import tempfile |
| from glob import glob |
|
|
| import nibabel as nib |
| import numpy as np |
| import torch |
| from torch.utils.data import DataLoader |
| from torch.utils.tensorboard import SummaryWriter |
|
|
| import monai |
| from monai.data import create_test_image_3d, list_data_collate |
| from monai.inferers import sliding_window_inference |
| from monai.metrics import DiceMetric |
| from monai.transforms import ( |
| AsChannelFirstd, |
| Compose, |
| LoadNiftid, |
| RandCropByPosNegLabeld, |
| RandRotate90d, |
| ScaleIntensityd, |
| ToTensord, |
| ) |
| from monai.visualize import plot_2d_or_3d_image |
|
|
|
|
| def main(tempdir): |
| monai.config.print_config() |
| logging.basicConfig(stream=sys.stdout, level=logging.INFO) |
|
|
| |
| print(f"generating synthetic data to {tempdir} (this may take a while)") |
| for i in range(40): |
| im, seg = create_test_image_3d(128, 128, 128, num_seg_classes=1, channel_dim=-1) |
|
|
| n = nib.Nifti1Image(im, np.eye(4)) |
| nib.save(n, os.path.join(tempdir, f"img{i:d}.nii.gz")) |
|
|
| n = nib.Nifti1Image(seg, np.eye(4)) |
| nib.save(n, os.path.join(tempdir, f"seg{i:d}.nii.gz")) |
|
|
| images = sorted(glob(os.path.join(tempdir, "img*.nii.gz"))) |
| segs = sorted(glob(os.path.join(tempdir, "seg*.nii.gz"))) |
| train_files = [{"img": img, "seg": seg} for img, seg in zip(images[:20], segs[:20])] |
| val_files = [{"img": img, "seg": seg} for img, seg in zip(images[-20:], segs[-20:])] |
|
|
| |
| train_transforms = Compose( |
| [ |
| LoadNiftid(keys=["img", "seg"]), |
| AsChannelFirstd(keys=["img", "seg"], channel_dim=-1), |
| ScaleIntensityd(keys="img"), |
| RandCropByPosNegLabeld( |
| keys=["img", "seg"], label_key="seg", spatial_size=[96, 96, 96], pos=1, neg=1, num_samples=4 |
| ), |
| RandRotate90d(keys=["img", "seg"], prob=0.5, spatial_axes=[0, 2]), |
| ToTensord(keys=["img", "seg"]), |
| ] |
| ) |
| val_transforms = Compose( |
| [ |
| LoadNiftid(keys=["img", "seg"]), |
| AsChannelFirstd(keys=["img", "seg"], channel_dim=-1), |
| ScaleIntensityd(keys="img"), |
| ToTensord(keys=["img", "seg"]), |
| ] |
| ) |
|
|
| |
| check_ds = monai.data.Dataset(data=train_files, transform=train_transforms) |
| |
| check_loader = DataLoader(check_ds, batch_size=2, num_workers=4, collate_fn=list_data_collate) |
| check_data = monai.utils.misc.first(check_loader) |
| print(check_data["img"].shape, check_data["seg"].shape) |
|
|
| |
| train_ds = monai.data.Dataset(data=train_files, transform=train_transforms) |
| |
| train_loader = DataLoader( |
| train_ds, |
| batch_size=2, |
| shuffle=True, |
| num_workers=4, |
| collate_fn=list_data_collate, |
| pin_memory=torch.cuda.is_available(), |
| ) |
| |
| val_ds = monai.data.Dataset(data=val_files, transform=val_transforms) |
| val_loader = DataLoader(val_ds, batch_size=1, num_workers=4, collate_fn=list_data_collate) |
| dice_metric = DiceMetric(include_background=True, to_onehot_y=False, sigmoid=True, reduction="mean") |
|
|
| |
| device = torch.device("cuda" if torch.cuda.is_available() else "cpu") |
| model = monai.networks.nets.UNet( |
| dimensions=3, |
| in_channels=1, |
| out_channels=1, |
| channels=(16, 32, 64, 128, 256), |
| strides=(2, 2, 2, 2), |
| num_res_units=2, |
| ).to(device) |
| loss_function = monai.losses.DiceLoss(sigmoid=True) |
| optimizer = torch.optim.Adam(model.parameters(), 1e-3) |
|
|
| |
| val_interval = 2 |
| best_metric = -1 |
| best_metric_epoch = -1 |
| epoch_loss_values = list() |
| metric_values = list() |
| writer = SummaryWriter() |
| for epoch in range(5): |
| print("-" * 10) |
| print(f"epoch {epoch + 1}/{5}") |
| model.train() |
| epoch_loss = 0 |
| step = 0 |
| for batch_data in train_loader: |
| step += 1 |
| inputs, labels = batch_data["img"].to(device), batch_data["seg"].to(device) |
| optimizer.zero_grad() |
| outputs = model(inputs) |
| loss = loss_function(outputs, labels) |
| loss.backward() |
| optimizer.step() |
| epoch_loss += loss.item() |
| epoch_len = len(train_ds) // train_loader.batch_size |
| print(f"{step}/{epoch_len}, train_loss: {loss.item():.4f}") |
| writer.add_scalar("train_loss", loss.item(), epoch_len * epoch + step) |
| epoch_loss /= step |
| epoch_loss_values.append(epoch_loss) |
| print(f"epoch {epoch + 1} average loss: {epoch_loss:.4f}") |
|
|
| if (epoch + 1) % val_interval == 0: |
| model.eval() |
| with torch.no_grad(): |
| metric_sum = 0.0 |
| metric_count = 0 |
| val_images = None |
| val_labels = None |
| val_outputs = None |
| for val_data in val_loader: |
| val_images, val_labels = val_data["img"].to(device), val_data["seg"].to(device) |
| roi_size = (96, 96, 96) |
| sw_batch_size = 4 |
| val_outputs = sliding_window_inference(val_images, roi_size, sw_batch_size, model) |
| value = dice_metric(y_pred=val_outputs, y=val_labels) |
| metric_count += len(value) |
| metric_sum += value.item() * len(value) |
| metric = metric_sum / metric_count |
| metric_values.append(metric) |
| if metric > best_metric: |
| best_metric = metric |
| best_metric_epoch = epoch + 1 |
| torch.save(model.state_dict(), "best_metric_model_segmentation3d_dict.pth") |
| print("saved new best metric model") |
| print( |
| "current epoch: {} current mean dice: {:.4f} best mean dice: {:.4f} at epoch {}".format( |
| epoch + 1, metric, best_metric, best_metric_epoch |
| ) |
| ) |
| writer.add_scalar("val_mean_dice", metric, epoch + 1) |
| |
| plot_2d_or_3d_image(val_images, epoch + 1, writer, index=0, tag="image") |
| plot_2d_or_3d_image(val_labels, epoch + 1, writer, index=0, tag="label") |
| plot_2d_or_3d_image(val_outputs, epoch + 1, writer, index=0, tag="output") |
|
|
| print(f"train completed, best_metric: {best_metric:.4f} at epoch: {best_metric_epoch}") |
| writer.close() |
|
|
|
|
| if __name__ == "__main__": |
| with tempfile.TemporaryDirectory() as tempdir: |
| main(tempdir) |
|
|