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πŸ”¬ Skin Histopathology Segmentation Models

State-of-the-art deep learning models for 12-class skin histopathology segmentation, trained on high-resolution skin tissue images.

πŸ“‹ Available Models

EfficientNet Models

  • efficientnet-b3_10x_unet_best.pt - EfficientNet-B3 backbone trained on 10x magnification data
  • efficientnet-b7_10x_unet_best.pt - EfficientNet-B7 backbone trained on 10x magnification data

Other Architectures

  • efficientnet-b5_unet_best.pt - EfficientNet-B5 backbone (general purpose)
  • gigapath_unet_best.pt - GigaPath vision transformer backbone

🏷️ Model Nomenclature

Important: All models now follow strict magnification-aware nomenclature:

  • {backbone}_{magnification}_unet_best.pt for magnification-specific models
  • Models without magnification suffix are general-purpose

This prevents silent failures where a model trained on one magnification is used with data from another magnification.

πŸ”¬ Tissue Classes

The models segment 12 distinct tissue classes:

Class ID Abbreviation Full Name Description
0 GLD Gland Skin glandular structures
1 INF Inflammation Inflammatory tissue
2 FOL Follicle Hair follicles
3 HYP Hypodermis Subcutaneous tissue
4 RET Reticular Reticular dermis
5 PAP Papillary Papillary dermis
6 EPI Epidermis Outer skin layer
7 KER Keratin Keratinized tissue
8 BKG Background Background/non-tissue
9 BCC Basal Cell Carcinoma Cancer tissue
10 SCC Squamous Cell Carcinoma Cancer tissue
11 IEC Inflammatory/Epithelial Cells Mixed cell types

πŸš€ Quick Start

Using the Inference Script

# Download and use EfficientNet-B3 10x model
python skin_seg_inference.py image.jpg --model_name efficientnet-b3_10x

# Use with specific magnification parameter
python skin_seg_inference.py image.jpg --model_name efficientnet-b3 --magnification 10x

# Process whole slide images (NDPI, SVS, etc.)
python skin_seg_inference.py slide.ndpi --model_name efficientnet-b3_10x

# Batch processing
python skin_seg_inference.py /path/to/images/ --batch --model_name efficientnet-b3_10x

Manual Model Loading

from skin_seg_inference import SkinSegmentationModel
from PIL import Image

# Initialize model with magnification awareness
model = SkinSegmentationModel(
    model_name="efficientnet-b3_10x",
    requested_magnification="10x"
)

# Load and predict
image = Image.open("skin_sample.jpg")
pred_mask, confidence = model.predict(image)

πŸ“Š Key Features

  • 🎯 Magnification Awareness: Models explicitly specify their training magnification
  • πŸ” Multi-Scale Support: Handles images from 1x to 40x magnification
  • πŸ–ΌοΈ Whole Slide Imaging: Native support for WSI formats (NDPI, SVS, etc.)
  • ⚑ Batch Processing: Efficient processing of multiple images
  • πŸ“ˆ Comprehensive Analysis: Generates detailed tissue statistics and visualizations
  • 🎨 Rich Visualizations: 6-panel analysis with confidence maps and class distributions

πŸ”§ Model Architecture

All models use a U-Net architecture with pre-trained backbones:

  • EfficientNet: CNN backbones optimized for efficiency and accuracy
  • GigaPath: Vision transformer backbone for pathology applications
  • Input: 224Γ—224 RGB patches
  • Output: 12-class segmentation masks with confidence scores

πŸ“ Magnification Guidelines

Magnification Use Case Recommended Model
10x General skin analysis efficientnet-b3_10x
20x Detailed cellular analysis efficientnet-b7_10x (if available)
Other Mixed magnifications efficientnet-b5 (general)

πŸ”„ Migration from Legacy Models

If you were using models without magnification suffixes:

  • efficientnet-b3_unet_best.pt β†’ efficientnet-b3_10x_unet_best.pt
  • efficientnet-b7_unet_best.pt β†’ efficientnet-b7_10x_unet_best.pt

The inference script automatically handles this migration when you specify --magnification.

πŸ“¦ Installation Requirements

pip install torch torchvision
pip install segmentation-models-pytorch
pip install albumentations
pip install huggingface-hub
pip install openslide-python  # For WSI support

πŸŽ“ Citation

If you use these models in your research, please cite:

@misc{skin_seg_models_2024,
  title={Skin Histopathology Segmentation Models},
  author={JoshuaFreeman},
  year={2024},
  publisher={HuggingFace},
  url={https://huggingface.co/JoshuaFreeman/skin_seg}
}

πŸ“„ License

These models are released under the MIT License. See LICENSE for details.

🀝 Contributing

Found an issue or want to contribute? Please open an issue or pull request in the associated repository.


πŸ”¬ Powered by state-of-the-art deep learning for advancing skin pathology research

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