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gmchallenge_unet.py
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gmchallenge_unet.py
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from collections import defaultdict
import time
import os
import numpy as np
from tqdm import tqdm
from tensorboardX import SummaryWriter
from medicaltorch import datasets as mt_datasets
from medicaltorch import models as mt_models
from medicaltorch import transforms as mt_transforms
from medicaltorch import losses as mt_losses
from medicaltorch import metrics as mt_metrics
from medicaltorch import filters as mt_filters
import torch
from torchvision import transforms
from torch.utils.data import DataLoader
from torch import autograd, optim
import torch.backends.cudnn as cudnn
import torch.nn as nn
import torchvision.utils as vutils
cudnn.benchmark = True
def threshold_predictions(predictions, thr=0.999):
thresholded_preds = predictions[:]
low_values_indices = thresholded_preds < thr
thresholded_preds[low_values_indices] = 0
low_values_indices = thresholded_preds >= thr
thresholded_preds[low_values_indices] = 1
return thresholded_preds
def run_main():
train_transform = transforms.Compose([
mt_transforms.CenterCrop2D((200, 200)),
mt_transforms.ElasticTransform(alpha_range=(28.0, 30.0),
sigma_range=(3.5, 4.0),
p=0.3),
mt_transforms.RandomAffine(degrees=4.6,
scale=(0.98, 1.02),
translate=(0.03, 0.03)),
mt_transforms.RandomTensorChannelShift((-0.10, 0.10)),
mt_transforms.ToTensor(),
mt_transforms.NormalizeInstance(),
])
val_transform = transforms.Compose([
mt_transforms.CenterCrop2D((200, 200)),
mt_transforms.ToTensor(),
mt_transforms.NormalizeInstance(),
])
# Here we assume that the SC GM Challenge data is inside the folder
# "../data" and it was previously resampled.
gmdataset_train = mt_datasets.SCGMChallenge2DTrain(root_dir="../data",
subj_ids=range(1, 9),
transform=train_transform,
slice_filter_fn=mt_filters.SliceFilter())
# Here we assume that the SC GM Challenge data is inside the folder
# "../data" and it was previously resampled.
gmdataset_val = mt_datasets.SCGMChallenge2DTrain(root_dir="../data",
subj_ids=range(9, 11),
transform=val_transform)
train_loader = DataLoader(gmdataset_train, batch_size=16,
shuffle=True, pin_memory=True,
collate_fn=mt_datasets.mt_collate,
num_workers=1)
val_loader = DataLoader(gmdataset_val, batch_size=16,
shuffle=True, pin_memory=True,
collate_fn=mt_datasets.mt_collate,
num_workers=1)
model = mt_models.Unet(drop_rate=0.4, bn_momentum=0.1)
model.cuda()
num_epochs = 200
initial_lr = 0.001
optimizer = optim.Adam(model.parameters(), lr=initial_lr)
scheduler = optim.lr_scheduler.CosineAnnealingLR(optimizer, num_epochs)
writer = SummaryWriter(log_dir="log_exp")
for epoch in tqdm(range(1, num_epochs+1)):
start_time = time.time()
scheduler.step()
lr = scheduler.get_lr()[0]
writer.add_scalar('learning_rate', lr, epoch)
model.train()
train_loss_total = 0.0
num_steps = 0
for i, batch in enumerate(train_loader):
input_samples, gt_samples = batch["input"], batch["gt"]
var_input = input_samples.cuda()
var_gt = gt_samples.cuda(non_blocking=True)
preds = model(var_input)
loss = mt_losses.dice_loss(preds, var_gt)
train_loss_total += loss.item()
optimizer.zero_grad()
loss.backward()
optimizer.step()
num_steps += 1
if epoch % 5 == 0:
grid_img = vutils.make_grid(input_samples,
normalize=True,
scale_each=True)
writer.add_image('Input', grid_img, epoch)
grid_img = vutils.make_grid(preds.data.cpu(),
normalize=True,
scale_each=True)
writer.add_image('Predictions', grid_img, epoch)
grid_img = vutils.make_grid(gt_samples,
normalize=True,
scale_each=True)
writer.add_image('Ground Truth', grid_img, epoch)
train_loss_total_avg = train_loss_total / num_steps
model.eval()
val_loss_total = 0.0
num_steps = 0
metric_fns = [mt_metrics.dice_score,
mt_metrics.hausdorff_score,
mt_metrics.precision_score,
mt_metrics.recall_score,
mt_metrics.specificity_score,
mt_metrics.intersection_over_union,
mt_metrics.accuracy_score]
metric_mgr = mt_metrics.MetricManager(metric_fns)
for i, batch in enumerate(val_loader):
input_samples, gt_samples = batch["input"], batch["gt"]
with torch.no_grad():
var_input = input_samples.cuda()
var_gt = gt_samples.cuda(async=True)
preds = model(var_input)
loss = mt_losses.dice_loss(preds, var_gt)
val_loss_total += loss.item()
# Metrics computation
gt_npy = gt_samples.numpy().astype(np.uint8)
gt_npy = gt_npy.squeeze(axis=1)
preds = preds.data.cpu().numpy()
preds = threshold_predictions(preds)
preds = preds.astype(np.uint8)
preds = preds.squeeze(axis=1)
metric_mgr(preds, gt_npy)
num_steps += 1
metrics_dict = metric_mgr.get_results()
metric_mgr.reset()
writer.add_scalars('metrics', metrics_dict, epoch)
val_loss_total_avg = val_loss_total / num_steps
writer.add_scalars('losses', {
'val_loss': val_loss_total_avg,
'train_loss': train_loss_total_avg
}, epoch)
end_time = time.time()
total_time = end_time - start_time
tqdm.write("Epoch {} took {:.2f} seconds.".format(epoch, total_time))
writer.add_scalars('losses', {
'train_loss': train_loss_total_avg
}, epoch)
if __name__ == '__main__':
run_main()