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infer_sequence.py
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infer_sequence.py
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"""
Run inference without label masks. Based on inference.py, and requires new click methods
from updated utils/click_method.py. Check the new click method details for more information.
Author: Karson Chrispens
Date: 5/15/2024
"""
import os
import os.path as osp
join = osp.join
import argparse
import json
import pickle
from collections import OrderedDict, defaultdict
from glob import glob
from itertools import product
import numpy as np
import SimpleITK as sitk
import torch
import torch.nn.functional as F
import torchio as tio
from torch.utils.data import DataLoader
from tqdm import tqdm
from segment_anything import sam_model_registry
from segment_anything.build_sam3D import sam_model_registry3D
from segment_anything.utils.transforms3D import ResizeLongestSide3D
from utils.click_method import (
get_next_click3D_torch_no_gt_naive,
get_next_click3D_torch_no_gt,
)
from utils.data_loader import Dataset_Union_ALL_Infer
parser = argparse.ArgumentParser()
parser.add_argument("-tdp", "--test_data_path", type=str, default="./data/validation")
parser.add_argument(
"-cp", "--checkpoint_path", type=str, default="./ckpt/sam_med3d.pth"
)
parser.add_argument("--output_dir", type=str, default="./visualization")
parser.add_argument("--task_name", type=str, default="test_amos")
parser.add_argument("--skip_existing_pred", action="store_true", default=False)
parser.add_argument("--save_image", action="store_true", default=True)
parser.add_argument("--sliding_window", action="store_true", default=False)
parser.add_argument("--image_size", type=int, default=256)
parser.add_argument("--crop_size", type=int, default=128)
parser.add_argument("--device", type=str, default="cuda")
parser.add_argument("-mt", "--model_type", type=str, default="vit_b_ori")
parser.add_argument("-nc", "--num_clicks", type=int, default=5)
parser.add_argument("-pm", "--point_method", type=str, default="no_gt")
parser.add_argument("-dt", "--data_type", type=str, default="infer")
parser.add_argument("--threshold", type=int, default=0)
parser.add_argument("--dim", type=int, default=3)
parser.add_argument("--split_idx", type=int, default=0)
parser.add_argument("--split_num", type=int, default=1)
parser.add_argument("--ft2d", action="store_true", default=False)
parser.add_argument("--seed", type=int, default=2023)
args = parser.parse_args()
""" parse and output_dir and task_name """
args.output_dir = join(args.output_dir, args.task_name)
args.pred_output_dir = join(args.output_dir, "pred")
os.makedirs(args.output_dir, exist_ok=True)
os.makedirs(args.pred_output_dir, exist_ok=True)
args.save_name = join(args.output_dir, "dice.py")
print("output_dir set to", args.output_dir)
SEED = args.seed
print("set seed as", SEED)
torch.manual_seed(SEED)
np.random.seed(SEED)
if torch.cuda.is_available():
torch.cuda.init()
click_methods = {
"no_gt": get_next_click3D_torch_no_gt,
"no_gt_naive": get_next_click3D_torch_no_gt_naive,
}
def postprocess_masks(low_res_masks, image_size, original_size):
ori_h, ori_w = original_size
masks = F.interpolate(
low_res_masks,
(image_size, image_size),
mode="bilinear",
align_corners=False,
)
if args.ft2d and ori_h < image_size and ori_w < image_size:
top = (image_size - ori_h) // 2
left = (image_size - ori_w) // 2
masks = masks[..., top : ori_h + top, left : ori_w + left]
pad = (top, left)
else:
masks = F.interpolate(
masks, original_size, mode="bilinear", align_corners=False
)
pad = None
return masks, pad
def sam_decoder_inference(
target_size,
points_coords,
points_labels,
model,
image_embeddings,
mask_inputs=None,
multimask=False,
):
with torch.no_grad():
sparse_embeddings, dense_embeddings = model.prompt_encoder(
points=(points_coords.to(model.device), points_labels.to(model.device)),
boxes=None,
masks=mask_inputs,
)
low_res_masks, iou_predictions = model.mask_decoder(
image_embeddings=image_embeddings,
image_pe=model.prompt_encoder.get_dense_pe(),
sparse_prompt_embeddings=sparse_embeddings,
dense_prompt_embeddings=dense_embeddings,
multimask_output=multimask,
)
if multimask:
max_values, max_indexs = torch.max(iou_predictions, dim=1)
max_values = max_values.unsqueeze(1)
iou_predictions = max_values
low_res = []
for i, idx in enumerate(max_indexs):
low_res.append(low_res_masks[i : i + 1, idx])
low_res_masks = torch.stack(low_res, 0)
masks = F.interpolate(
low_res_masks,
(target_size, target_size),
mode="bilinear",
align_corners=False,
)
return masks, low_res_masks, iou_predictions
def repixel_value(arr, is_seg=False):
if not is_seg:
min_val = arr.min()
max_val = arr.max()
new_arr = (arr - min_val) / (max_val - min_val + 1e-10) * 255.0
return new_arr
def random_point_sampling(mask, get_point=1):
if isinstance(mask, torch.Tensor):
mask = mask.numpy()
fg_coords = np.argwhere(mask == 1)[:, ::-1]
bg_coords = np.argwhere(mask == 0)[:, ::-1]
fg_size = len(fg_coords)
bg_size = len(bg_coords)
if get_point == 1:
if fg_size > 0:
index = np.random.randint(fg_size)
fg_coord = fg_coords[index]
label = 1
else:
index = np.random.randint(bg_size)
fg_coord = bg_coords[index]
label = 0
return torch.as_tensor([fg_coord.tolist()], dtype=torch.float), torch.as_tensor(
[label], dtype=torch.int
)
else:
num_fg = get_point // 2
num_bg = get_point - num_fg
fg_indices = np.random.choice(fg_size, size=num_fg, replace=True)
bg_indices = np.random.choice(bg_size, size=num_bg, replace=True)
fg_coords = fg_coords[fg_indices]
bg_coords = bg_coords[bg_indices]
coords = np.concatenate([fg_coords, bg_coords], axis=0)
labels = np.concatenate([np.ones(num_fg), np.zeros(num_bg)]).astype(int)
indices = np.random.permutation(get_point)
coords, labels = torch.as_tensor(
coords[indices], dtype=torch.float
), torch.as_tensor(labels[indices], dtype=torch.int)
return coords, labels
def finetune_model_predict2D(
img3D,
gt3D,
sam_model_tune,
target_size=256,
click_method="no_gt",
device="cuda",
num_clicks=1,
prev_masks=None,
):
pred_list = []
slice_mask_list = defaultdict(list)
img3D = torch.repeat_interleave(
img3D, repeats=3, dim=1
) # 1 channel -> 3 channel (align to RGB)
click_points = []
click_labels = []
for slice_idx in tqdm(range(img3D.size(-1)), desc="transverse slices", leave=False):
img2D, gt2D = repixel_value(img3D[..., slice_idx]), gt3D[..., slice_idx]
if (gt2D == 0).all():
empty_result = torch.zeros(list(gt3D.size()[:-1]) + [1]).to(device)
for iter in range(num_clicks):
slice_mask_list[iter].append(empty_result)
continue
img2D = F.interpolate(
img2D, (target_size, target_size), mode="bilinear", align_corners=False
)
gt2D = F.interpolate(
gt2D.float(), (target_size, target_size), mode="nearest"
).int()
img2D, gt2D = img2D.to(device), gt2D.to(device)
img2D = (img2D - img2D.mean()) / img2D.std()
with torch.no_grad():
image_embeddings = sam_model_tune.image_encoder(img2D.float())
points_co, points_la = torch.zeros(1, 0, 2).to(device), torch.zeros(1, 0).to(
device
)
low_res_masks = None
gt_semantic_seg = gt2D[0, 0].to(device)
true_masks = gt_semantic_seg > 0
for iter in range(num_clicks):
if low_res_masks == None:
pred_masks = torch.zeros_like(true_masks).to(device)
else:
pred_masks = (prev_masks[0, 0] > 0.0).to(device)
fn_masks = torch.logical_and(true_masks, torch.logical_not(pred_masks))
fp_masks = torch.logical_and(torch.logical_not(true_masks), pred_masks)
mask_to_sample = torch.logical_or(fn_masks, fp_masks)
new_points_co, _ = random_point_sampling(mask_to_sample.cpu(), get_point=1)
new_points_la = (
torch.Tensor([1]).to(torch.int64)
if (true_masks[new_points_co[0, 1].int(), new_points_co[0, 0].int()])
else torch.Tensor([0]).to(torch.int64)
)
new_points_co, new_points_la = new_points_co[None].to(
device
), new_points_la[None].to(device)
points_co = torch.cat([points_co, new_points_co], dim=1)
points_la = torch.cat([points_la, new_points_la], dim=1)
prev_masks, low_res_masks, iou_predictions = sam_decoder_inference(
target_size,
points_co,
points_la,
sam_model_tune,
image_embeddings,
mask_inputs=low_res_masks,
multimask=True,
)
click_points.append(new_points_co)
click_labels.append(new_points_la)
slice_mask, _ = postprocess_masks(
low_res_masks, target_size, (gt3D.size(2), gt3D.size(3))
)
slice_mask_list[iter].append(
slice_mask[..., None]
) # append (B, C, H, W, 1)
for iter in range(num_clicks):
medsam_seg = torch.cat(slice_mask_list[iter], dim=-1).cpu().numpy().squeeze()
medsam_seg = medsam_seg > sam_model_tune.mask_threshold
medsam_seg = medsam_seg.astype(np.uint8)
pred_list.append(medsam_seg)
return pred_list, click_points, click_labels
def finetune_model_predict3D(
img3D,
sam_model_tune,
device="cuda",
click_method="no_gt",
num_clicks=10,
prev_masks=None,
):
img3D = norm_transform(img3D.squeeze(dim=1)) # (N, C, W, H, D)
img3D = img3D.unsqueeze(dim=1)
click_points = []
click_labels = []
pred_list = []
if prev_masks is None:
prev_masks = torch.zeros_like(img3D).to(device)
low_res_masks = F.interpolate(
prev_masks.float(),
size=(args.crop_size // 4, args.crop_size // 4, args.crop_size // 4),
)
with torch.no_grad():
image_embedding = sam_model_tune.image_encoder(
img3D.to(device)
) # (1, 384, 16, 16, 16)
for click_idx in range(num_clicks):
with torch.no_grad():
batch_points, batch_labels = click_methods[click_method](
prev_masks.to(device), img3D.to(device), 170
) # default threshold is 170, showing that here
points_co = torch.cat(batch_points, dim=0).to(device)
points_la = torch.cat(batch_labels, dim=0).to(device)
click_points.append(points_co)
click_labels.append(points_la)
points_input = points_co
labels_input = points_la
sparse_embeddings, dense_embeddings = sam_model_tune.prompt_encoder(
points=[points_input, labels_input],
boxes=None,
masks=low_res_masks.to(device),
)
low_res_masks, _ = sam_model_tune.mask_decoder(
image_embeddings=image_embedding.to(device), # (B, 384, 64, 64, 64)
image_pe=sam_model_tune.prompt_encoder.get_dense_pe(), # (1, 384, 64, 64, 64)
sparse_prompt_embeddings=sparse_embeddings, # (B, 2, 384)
dense_prompt_embeddings=dense_embeddings, # (B, 384, 64, 64, 64)
multimask_output=False,
)
prev_masks = F.interpolate(
low_res_masks,
size=img3D.shape[-3:],
mode="trilinear",
align_corners=False,
)
medsam_seg_prob = torch.sigmoid(prev_masks) # (B, 1, 64, 64, 64)
# convert prob to mask
medsam_seg_prob = medsam_seg_prob.cpu().numpy().squeeze()
medsam_seg = (medsam_seg_prob > 0.5).astype(np.uint8)
pred_list.append(medsam_seg)
return pred_list, click_points, click_labels
# TODO: check if this works?
def pad_and_crop_with_sliding_window(img3D, crop_transform, offset_mode="center"):
subject = tio.Subject(
image=tio.ScalarImage(tensor=img3D.squeeze(0)),
)
padding_params, cropping_params = crop_transform.compute_crop_or_pad(subject)
# cropping_params: (x_start, x_max-(x_start+roi_size), y_start, ...)
# padding_params: (x_left_pad, x_right_pad, y_left_pad, ...)
if cropping_params is None:
cropping_params = (0, 0, 0, 0, 0, 0)
if padding_params is None:
padding_params = (0, 0, 0, 0, 0, 0)
roi_shape = crop_transform.target_shape
vol_bound = (0, img3D.shape[2], 0, img3D.shape[3], 0, img3D.shape[4])
center_oob_ori_roi = (
cropping_params[0] - padding_params[0],
cropping_params[0] + roi_shape[0] - padding_params[0],
cropping_params[2] - padding_params[2],
cropping_params[2] + roi_shape[1] - padding_params[2],
cropping_params[4] - padding_params[4],
cropping_params[4] + roi_shape[2] - padding_params[4],
)
window_list = []
offset_dict = {
"rounded": list(product((-32, +32, 0), repeat=3)),
"center": [(0, 0, 0)],
}
for offset in offset_dict[offset_mode]:
# get the position in original volume~(allow out-of-bound) for current offset
oob_ori_roi = (
center_oob_ori_roi[0] + offset[0],
center_oob_ori_roi[1] + offset[0],
center_oob_ori_roi[2] + offset[1],
center_oob_ori_roi[3] + offset[1],
center_oob_ori_roi[4] + offset[2],
center_oob_ori_roi[5] + offset[2],
)
# get corresponing padding params based on `vol_bound`
padding_params = [0 for i in range(6)]
for idx, (ori_pos, bound) in enumerate(zip(oob_ori_roi, vol_bound)):
pad_val = 0
if idx % 2 == 0 and ori_pos < bound: # left bound
pad_val = bound - ori_pos
if idx % 2 == 1 and ori_pos > bound:
pad_val = ori_pos - bound
padding_params[idx] = pad_val
# get corresponding crop params after padding
cropping_params = (
oob_ori_roi[0] + padding_params[0],
vol_bound[1] - oob_ori_roi[1] + padding_params[1],
oob_ori_roi[2] + padding_params[2],
vol_bound[3] - oob_ori_roi[3] + padding_params[3],
oob_ori_roi[4] + padding_params[4],
vol_bound[5] - oob_ori_roi[5] + padding_params[5],
)
# pad and crop for the original subject
pad_and_crop = tio.Compose(
[
tio.Pad(padding_params, padding_mode=crop_transform.padding_mode),
tio.Crop(cropping_params),
]
)
subject_roi = pad_and_crop(subject)
img3D_roi = subject_roi.image.data.clone().detach().unsqueeze(1)
# collect all position information, and set correct roi for sliding-windows in
# todo: get correct roi window of half because of the sliding
windows_clip = [0 for i in range(6)]
for i in range(3):
if offset[i] < 0:
windows_clip[2 * i] = 0
windows_clip[2 * i + 1] = -(roi_shape[i] + offset[i])
elif offset[i] > 0:
windows_clip[2 * i] = roi_shape[i] - offset[i]
windows_clip[2 * i + 1] = 0
pos3D_roi = dict(
padding_params=padding_params,
cropping_params=cropping_params,
ori_roi=(
cropping_params[0] + windows_clip[0],
cropping_params[0]
+ roi_shape[0]
- padding_params[0]
- padding_params[1]
+ windows_clip[1],
cropping_params[2] + windows_clip[2],
cropping_params[2]
+ roi_shape[1]
- padding_params[2]
- padding_params[3]
+ windows_clip[3],
cropping_params[4] + windows_clip[4],
cropping_params[4]
+ roi_shape[2]
- padding_params[4]
- padding_params[5]
+ windows_clip[5],
),
pred_roi=(
padding_params[0] + windows_clip[0],
roi_shape[0] - padding_params[1] + windows_clip[1],
padding_params[2] + windows_clip[2],
roi_shape[1] - padding_params[3] + windows_clip[3],
padding_params[4] + windows_clip[4],
roi_shape[2] - padding_params[5] + windows_clip[5],
),
)
pred_roi = pos3D_roi["pred_roi"]
# if((gt3D_roi[pred_roi[0]:pred_roi[1],pred_roi[2]:pred_roi[3],pred_roi[4]:pred_roi[5]]==0).all()):
# print("skip empty window with offset", offset)
# continue
window_list.append((img3D_roi, pos3D_roi))
return window_list
def save_numpy_to_nifti(in_arr: np.array, out_path, meta_info):
# torchio turn 1xHxWxD -> DxWxH
# so we need to squeeze and transpose back to HxWxD
ori_arr = np.transpose(in_arr.squeeze(), (2, 1, 0))
out = sitk.GetImageFromArray(ori_arr)
sitk_meta_translator = lambda x: [float(i) for i in x]
out.SetOrigin(sitk_meta_translator(meta_info["origin"]))
out.SetDirection(sitk_meta_translator(meta_info["direction"]))
out.SetSpacing(sitk_meta_translator(meta_info["spacing"]))
sitk.WriteImage(out, out_path)
if __name__ == "__main__":
all_dataset_paths = glob(join(args.test_data_path, "*", "*"))
all_dataset_paths = list(filter(osp.isdir, all_dataset_paths))
print("get", len(all_dataset_paths), "datasets")
crop_transform = tio.CropOrPad(
target_shape=(args.crop_size, args.crop_size, args.crop_size)
)
infer_transform = [
tio.ToCanonical(),
]
test_dataset = Dataset_Union_ALL_Infer(
paths=all_dataset_paths,
data_type=args.data_type,
transform=tio.Compose(infer_transform),
split_num=args.split_num,
split_idx=args.split_idx,
pcc=False,
get_all_meta_info=True,
)
test_dataloader = DataLoader(
dataset=test_dataset, sampler=None, batch_size=1, shuffle=True
)
checkpoint_path = args.checkpoint_path
device = args.device
print("device:", device)
if args.dim == 3:
sam_model_tune = sam_model_registry3D[args.model_type](checkpoint=None).to(
device
)
if checkpoint_path is not None:
model_dict = torch.load(checkpoint_path, map_location=device)
state_dict = model_dict["model_state_dict"]
sam_model_tune.load_state_dict(state_dict)
else:
raise NotImplementedError(
"this scipts is designed for 3D sliding-window inference, not support other dims"
)
sam_trans = ResizeLongestSide3D(sam_model_tune.image_encoder.img_size)
norm_transform = tio.ZNormalization(masking_method=lambda x: x > 0)
for batch_data in tqdm(test_dataloader):
image3D, meta_info = batch_data
img_name = meta_info["image_path"][0]
modality = osp.basename(osp.dirname(osp.dirname(osp.dirname(img_name))))
dataset = osp.basename(osp.dirname(osp.dirname(img_name)))
vis_root = osp.join(args.pred_output_dir, modality, dataset)
pred_path = osp.join(
vis_root,
osp.basename(img_name).replace(
".nii.gz", f"_pred{args.num_clicks-1}.nii.gz"
),
)
""" inference """
if args.skip_existing_pred and osp.exists(pred_path):
pass # if the pred existed, skip the inference
else:
image3D_full = image3D
pred3D_full_dict = {
click_idx: torch.zeros_like(image3D_full).numpy()
for click_idx in range(args.num_clicks)
}
offset_mode = "center" if (not args.sliding_window) else "rounded"
sliding_window_list = pad_and_crop_with_sliding_window(
image3D_full, crop_transform, offset_mode=offset_mode
)
for image3D, pos3D in sliding_window_list:
seg_mask_list, points, labels = finetune_model_predict3D(
image3D,
sam_model_tune,
device=device,
click_method=args.point_method,
num_clicks=args.num_clicks,
prev_masks=None,
)
ori_roi, pred_roi = pos3D["ori_roi"], pos3D["pred_roi"]
for idx, seg_mask in enumerate(seg_mask_list):
seg_mask_roi = seg_mask[
...,
pred_roi[0] : pred_roi[1],
pred_roi[2] : pred_roi[3],
pred_roi[4] : pred_roi[5],
]
pred3D_full_dict[idx][
...,
ori_roi[0] : ori_roi[1],
ori_roi[2] : ori_roi[3],
ori_roi[4] : ori_roi[5],
] = seg_mask_roi
os.makedirs(vis_root, exist_ok=True)
padding_params = sliding_window_list[-1][-1]["padding_params"]
cropping_params = sliding_window_list[-1][-1]["cropping_params"]
# print(padding_params, cropping_params)
point_offset = np.array(
[
cropping_params[0] - padding_params[0],
cropping_params[2] - padding_params[2],
cropping_params[4] - padding_params[4],
]
)
points = [p.cpu().numpy() + point_offset for p in points]
labels = [l.cpu().numpy() for l in labels]
pt_info = dict(points=points, labels=labels)
# print("save to", osp.join(vis_root, osp.basename(img_name).replace(".nii.gz", "_pred.nii.gz")))
pt_path = osp.join(
vis_root, osp.basename(img_name).replace(".nii.gz", "_pt.pkl")
)
pickle.dump(pt_info, open(pt_path, "wb"))
if args.save_image:
save_numpy_to_nifti(
image3D_full,
osp.join(
vis_root,
osp.basename(img_name).replace(".nii.gz", f"_img.nii.gz"),
),
meta_info,
)
for idx, pred3D_full in pred3D_full_dict.items():
save_numpy_to_nifti(
pred3D_full,
osp.join(
vis_root,
osp.basename(img_name).replace(".nii.gz", f"_pred{idx}.nii.gz"),
),
meta_info,
)
radius = 2
for pt in points[: idx + 1]:
pred3D_full[
...,
pt[0, 0, 0] - radius : pt[0, 0, 0] + radius,
pt[0, 0, 1] - radius : pt[0, 0, 1] + radius,
pt[0, 0, 2] - radius : pt[0, 0, 2] + radius,
] = 10
save_numpy_to_nifti(
pred3D_full,
osp.join(
vis_root,
osp.basename(img_name).replace(
".nii.gz", f"_pred{idx}_wPt.nii.gz"
),
),
meta_info,
)
print("Done")