license: apache-2.0
pipeline_tag: image-segmentation
tags:
- medical
- biology
- histology
- histopathology
CPP-Net Model for Cervical Intraepithelial Neoplasia 2 (CIN2) Panoptic Segmentation
Model
- histolytics implementation of panoptic CPP-Net: https://arxiv.org/abs/2102.06867
- Backbone encoder: pre-trained efficientnet_b5 from pytorch-image-models https://github.com/huggingface/pytorch-image-models
USAGE
1. Install histolytics and albumentations
pip install histolytics
pip install albumentations
2. Load trained model
from histolytics.models.cppnet_panoptic import CPPNetPanoptic
model = CPPNetPanoptic.from_pretrained("hgsc_v1_efficientnet_b5")
3. Run inference for one image
from albumentations import Resize, Compose
from histolytics.utils import FileHandler
from histolytics.transforms.albu_transforms import MinMaxNormalization
model.set_inference_mode()
# Resize to multiple of 32 of your own choosing
transform = Compose([Resize(1024, 1024), MinMaxNormalization()])
im = FileHandler.read_img(IMG_PATH)
im = transform(image=im)["image"]
prob = model.predict(im)
out = model.post_process(prob)
# out = {"nuc": [(nuc instances (H, W), nuc types (H, W))], "tissue": [tissues (H, W)], "cyto": None}
3.1 Run inference for image batch
import torch
from histolytics.utils import FileHandler
model.set_inference_mode()
# dont use random matrices IRL
batch = torch.rand(8, 3, 1024, 1024)
prob = model.predict(im)
out = model.post_process(prob)
# out = {
# "nuc": [
# (nuc instances (H, W), nuc types (H, W)),
# (nuc instances (H, W), nuc types (H, W)),
# .
# .
# .
# (nuc instances (H, W), nuc types (H, W))
# ],
# "tissue": [
# (nuc instances (H, W), nuc types (H, W)),
# (nuc instances (H, W), nuc types (H, W)),
# .
# .
# .
# (nuc instances (H, W), nuc types (H, W))
# ],
# "cyto": None,
#}
4. Visualize output
from matplotlib import pyplot as plt
from skimage.color import label2rgb
fig, ax = plt.subplots(1, 4, figsize=(24, 6))
ax[0].imshow(im)
ax[1].imshow(label2rgb(out["nuc"][0][0], bg_label=0)) # inst_map
ax[2].imshow(label2rgb(out["nuc"][0][1], bg_label=0)) # type_map
ax[3].imshow(label2rgb(out["tissue"][0], bg_label=0)) # tissue_map
Dataset Details
Semi-manually annotated CIN2 samples from a (private) cohort of Helsinki University Hospital
Contains:
- 370 varying sized image crops at 20x magnification.
- 168 640 annotated nuclei
- 570 872 983 pixels of annotated tissue region
Dataset classes
nuc_classes = {
0: "background",
1: "neoplastic",
2: "inflammatory",
3: "connective",
4: "dead",
5: "glandular_epithelial",
6: "squamous_epithelial",
}
tissue_classes = {
0: "background",
1: "stroma",
2: "cin",
3: "squamous_epithelium",
4: "glandular_epithelium",
5: "slime",
6: "blood",
}
Dataset Class Distribution
Nuclei:
- connective nuclei: 46 222 (~27.3%)
- neoplastic nuclei: 49 493 (~29.4%)
- inflammatory nuclei 27 226 (~16.1%)
- dead nuclei 195 (~0.11%)
- glandular epithelial 14 310 (~8.5%)
- squamous epithelial 31194 (~18.5%)
Tissues:
- stromal tissue: 28.2%
- CIN tissue: 23.4%
- squamous epithelium: 24.7%
- glandular epithelium 7.7%
- slime 6.5%
- blood 2.5%
Model Training Details:
First, the image crops in the training data were tiled into 224x224px patches with a sliding window (stride=32px).
Rest of the training procedures follow this notebook: [link]
Citation
histolytics:
@article{
}
CPP-Net original paper:
@article{https://doi.org/10.48550/arxiv.2102.06867,
doi = {10.48550/ARXIV.2102.06867},
url = {https://arxiv.org/abs/2102.06867},
author = {Chen, Shengcong and Ding, Changxing and Liu, Minfeng and Cheng, Jun and Tao, Dacheng},
keywords = {Computer Vision and Pattern Recognition (cs.CV), FOS: Computer and information sciences, FOS: Computer and information sciences},
title = {CPP-Net: Context-aware Polygon Proposal Network for Nucleus Segmentation},
publisher = {arXiv},
year = {2021},
copyright = {arXiv.org perpetual, non-exclusive license}
}
Licence
These model weights are released under the Apache License, Version 2.0 (the "License"). You may obtain a copy of the License at:
http://www.apache.org/licenses/LICENSE-2.0
Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License.
Additional Terms
While the Apache 2.0 License grants broad permissions, we kindly request that users adhere to the following guidelines: Medical or Clinical Use: This model is not intended for use in medical diagnosis, treatment, or prevention of disease of real patients. It should not be used as a substitute for professional medical advice.