--- license: cc-by-4.0 size_categories: - n<1K task_categories: - graph-ml pretty_name: OgBench — Omics Graph Benchmark tags: - biology - genomics - proteomics - graph-neural-networks - benchmarking - omics --- # OgBench: Benchmarking Graph Neural Networks on Omics Data [**Paper**](https://huggingface.co/papers/2605.15511) | [**GitHub**](https://github.com/geometric-intelligence/ogbench) OgBench is the first benchmark suite for graph-level prediction in the **n ≪ p regime** characteristic of omics data, where the number of patient samples *n* is much smaller than the number of nodes (genes or proteins) *p* per graph. ## Datasets This repository contains four preprocessed omics graph classification datasets: | Dataset | Modality | n | p | Task | |---|---|---|---|---| | HERITAGE | Proteomics | 654 | 4,977 | Exercise responder (binary) | | Parkinson's | Transcriptomics | 535 | 21,755 | Cognitive status (binary) | | AddNeuroMed | Transcriptomics | 711 | 17,198 | Clinical diagnosis (3-class) | | BRCA | Epigenomics | 640 | 19,049 | Cancer subtype (4-class) | ## Usage After installing the [OgBench framework](https://github.com/geometric-intelligence/ogbench), you can download and process the datasets using the provided script: ```bash # Download a specific dataset (e.g., motrpac/HERITAGE) python scripts/download_datasets.py motrpac # Download all datasets python scripts/download_datasets.py all ``` To train a model (e.g., GATv2) on one of the datasets: ```bash python ogbench/run.py dataset=motrpac model=gatv2 ``` ## Source Data - **HERITAGE**: Robbins et al. (2021), *Nature Metabolism*. Available via MoTrPAC Data Hub (motrpac-data.org) under CC-BY 4.0. - **Parkinson's**: Shamir et al. (2017), *Neurology*. Available via NCBI GEO (GSE99039) under GEO public data access policy. - **AddNeuroMed**: Lovestone et al. (2009). Available via NCBI GEO (GSE63063) under GEO public data access policy. - **BRCA**: Yang et al. (2025), MLOmics, *Scientific Data*. Available on Figshare/Hugging Face under CC-BY 4.0. ## Preprocessing All datasets are preprocessed with a consistent pipeline including probe-to-gene aggregation, normalization, and covariate adjustment. Full preprocessing details are provided in Appendix B of the accompanying paper. Graphs are split 70/15/15 (train/val/test) with a fixed random seed.