h2dg-surv / README.md
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---
tags:
- Survival-Analysis
---
<p align="center">
<h2 align="center">[Under review] Replicating Patient Follow-Up with Hierarchical Directed Graphs for Head and Neck Cancer Survival Analysis πŸ§ͺπŸ”¬πŸŽ―</h2>
</p>
βœ… Official HuggingFace repository of the paper "Replicating Patient Follow-Up with Hierarchical Directed Graphs for Head and Neck Cancer Survival Analysis".
πŸ“„ Preprint, under review for MIDL 2026: [arXiv preprint coming soon].
### 🧩 Method Overview
We propose **H2DGSurv** (Hierarchical Directed Heterogeneous Graph), a Graph Neural Network architecture for multimodal survival prediction that models the clinical pathway as a directed heterogeneous graph with temporal progression.
<p align="center">
<img src="./figures/method_overview.png" alt="Method Overview" width="800">
</p>
### πŸ“‚ Available resources
**h2dg.pt**: PyTorch model weights.
**folds_5.csv**: Pandas DataFrame indicating cross-validation splits for each of the 5 folds.
### πŸš€ Source code
PyTorch model implementation is available on github: [source code](https://github.com/dpmc-lab/h2dg-surv)
### πŸ™Œ Acknowledgments
We acknowledge [Kist et al. 2024](https://www.nature.com/articles/s41597-024-03596-3) for making the HANCOCK dataset available.
### Useful Links
- [HANCOCK Challenge](https://www.hancock.research.uni-erlangen.org/download)
- [BioClinicalBERT](https://huggingface.co/emilyalsentzer/Bio_ClinicalBERT)
---
### πŸ”— Citation
> [!IMPORTANT]
> This project is based on the work by Miccinilli and Di Piazza 2025. If you use this code in your research, we would appreciate reference to the following paper:
```BibTeX
@inproceedings{mcdp2025h2dg,
author = {Hugo Miccinilli and Theo Di Piazza},
title = {Replicating Patient Follow-Up with Hierarchical Directed Graphs for Head and Neck Cancer Survival Analysis},
booktitle = {Arxiv preprint},
year = {2025},
}
```