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inference_embed_attn.py
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inference_embed_attn.py
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import os
import json
import argparse
from pickle import TRUE
import torch
import torch.nn.functional as F
from torch.utils.data import DataLoader,ConcatDataset, Subset
from torch.cuda.amp import autocast
import numpy as np
from dataset.CT_pancreas_ids import EvaPanCTDataset
from model.trans_3DUnet import get_model_dict
from loss.criterions import get_criterions
import monai
from monai.inferers import sliding_window_inference
def get_parse():
parser = argparse.ArgumentParser()
'''
parser.add_argument('--dir_data', type=str,
default='../../data/CT_Pancreas/Sloan_data',
help='direction for the dataset')
'''
parser.add_argument('--dir_data', type=str,
default='/data/datasets/zheyuan/Raw_Pancreas',
help='direction for the dataset')
# 12 -> 20220115-15_2
parser.add_argument('--pretrained_dir', type=str,
default='./out/log/20220125-17_2', help='pretrained dir')
parser.add_argument('--model_name', type=str,
default='MaskTransUnet', help='model name for training')
parser.add_argument('--batch_size', type=int,
default=1, help='patient batch size')
parser.add_argument('--depth_size', type=int,
default=32, help='patient depth size')
# [16, 32, 64, 128, 256]
# [32, 64, 64, 128, 256]
parser.add_argument('--num_layers', type=list,
default=[16, 32, 64, 128, 256], help='number of layer for each layer')
# reference 320 160 80 40 20 [128, 80, 50, 30, 32]
# 256-128-64-32-16 65
parser.add_argument('--roi_size_list', type=list,
default=[100, 65, 40, 25, 10], help='size of roi for each layer')
# False, True, True, True, True
parser.add_argument('--is_roi_list', type=list,
default=[False, True, True, True, True], help='using roi for each layer')
'''
parser.add_argument('--num_layers', type=list,
default=[16, 32, 32, 64], help='number of layer for each layer')
'''
parser.add_argument('--dim_input', type=int,
default=1, help='input dimension or modality')
parser.add_argument('--dim_output', type=int,
default=2, help='output dimension or classes')
parser.add_argument('--kernel_size', type=int,
default=3, help='kernel_size for convolution')
parser.add_argument('--device', type=str,
default='cuda', help='device for training')
parser.add_argument('--criterion_list', type=list,
default=['DiceClassLoss', 'Recall', 'Precision', 'LocalizationLoss'],
help='criterion')
parser.add_argument('--is_save', type=bool,
default=False, help='save prediction or not')
parser.add_argument('--saved_folder', type=str,
default='./prediction/test',
help='saved folder dir')
args = parser.parse_args()
return args
def get_model(args, fold_num, device):
model_fn = get_model_dict(args.model_name)
model = model_fn(num_layers=args.num_layers,
roi_size_list=args.roi_size_list,
is_roi_list=args.is_roi_list,
dim_input=args.dim_input,
dim_output=args.dim_output,
kernel_size=args.kernel_size)
pretrain_dir = os.path.join(args.pretrained_dir, f'fold_{fold_num}', 'temp_model.pt')
# state_dict = torch.load(pretrain_dir).state_dict()
state_dict = torch.load(pretrain_dir)
model.load_state_dict(state_dict)
model = torch.nn.DataParallel(model.to(device))
return model
def main(args):
fold_nums = 1
os.environ['CUDA_VISIBLE_DEVICES'] = '4'
num_device = torch.cuda.device_count()
root = args.dir_data
depth_size = args.depth_size
sw_batch_size = 4
with open('split_dataset_8.json', 'r') as f:
dataset_ids = json.load(f)
criterions = get_criterions(args.criterion_list)
final_loss_list = [0] * len(criterions)
roi_size = 512
center = 256
name_list = sorted(os.listdir(os.path.join(root, 'image')))
# up_sample = torch.nn.Upsample(scale_factor=(2, 2, 1), mode='trilinear', align_corners=True)
# post_processing = monai.transforms.KeepLargestConnectedComponent(applied_labels=[1], connectivity=1)
for fold_num in range(fold_nums):
test_ids = dataset_ids[f'test_id fold_{fold_num}']
eval_pandataset = EvaPanCTDataset(root=root,
depth_size=depth_size,
ids=test_ids[:-1])
eval_panDl = DataLoader(dataset=eval_pandataset, batch_size=args.batch_size,
num_workers=12, shuffle=False)
device = torch.device(args.device if torch.cuda.is_available() else 'cpu')
model = get_model(args, fold_num, device=device)
model.eval()
summary_patient_loss = []
total_loss_list = [0] * len(criterions)
threshold = 0.5
if not os.path.exists(args.saved_folder):
os.makedirs(args.saved_folder)
for i, (images, masks) in enumerate(eval_panDl):
name = name_list[test_ids[i]]
print(name)
images, masks = images.to(device), masks.to(device).long()
# predict = torch.zeros((masks.size(0), 2, masks.size(2), masks.size(3), masks.size(4)), device=masks.device)
patient_loss_list = [0] * len(criterions)
with torch.no_grad():
with autocast():
predict = sliding_window_inference(images, (roi_size, roi_size, depth_size), sw_batch_size, model, overlap=0.6, sigma_scale=0)
# print(predict_center.shape)
'''
predict2 = predict
'''
predict2 = (predict >= threshold).float().squeeze(0)
# predict2 = post_processing(predict2)
predict2 = predict2.unsqueeze(0)
loss_list = [l(predict2, masks.long()).item() for l in criterions.values()]
if args.is_save:
# predict = up_sample(predict)
temp_out = predict2[:, 1]
# temp_out = predict
temp_out = temp_out.squeeze_().permute((2, 0, 1)).cpu().numpy()
np.save(os.path.join(args.saved_folder, '{:0>4}'.format(name)), temp_out)
for loss_name, loss_value in zip(criterions.keys(), loss_list):
print(f'eval patient average {loss_name}', loss_value)
for index, loss_value in enumerate(patient_loss_list):
patient_loss_list[index] = loss_list[index]
total_loss_list[index] += patient_loss_list[index]
summary_patient_loss.append(patient_loss_list)
for index, loss_value in enumerate(total_loss_list):
total_loss_list[index] = loss_value / (i+1)
final_loss_list[index] += total_loss_list[index]
for loss_name, loss_value in zip(criterions.keys(), total_loss_list):
print(f'eval total average {loss_name} loss', loss_value)
out_dict = {f'patient_{fold_num}': summary_patient_loss,
f'summary_{fold_num}': total_loss_list}
for index, loss_value in enumerate(final_loss_list):
final_loss_list[index] = loss_value / (fold_num+1)
for loss_name, loss_value in zip(criterions.keys(), final_loss_list):
print(f'eval final average {loss_name} loss', loss_value)
with open('summary_4_fold.json', 'w') as f:
json.dump(out_dict, f, indent=4)
if __name__ =='__main__':
args = get_parse()
main(args)