| # Benchmarking all-atom biomolecular structure prediction with FoldBench |
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| FoldBench is a low-homology benchmark spanning proteins, nucleic acids, ligands, and six major interaction types, enabling assessments that were previously infeasible with task-specific datasets. |
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| ## π’ Updates |
| + **2025-12-31**: The evaluation results for RosettaFold3 (latest) have been updated. |
| + **2025-12-05**: The evaluation results for Boltz-2 and OpenFold3-preview have been updated. |
| + **2025-12-04**: FoldBench has been published in [Nature Communications](https://www.nature.com/articles/s41467-025-67127-3). |
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| ## π― FoldBench Targets |
| The FoldBench benchmark targets are open source. This comprehensive dataset, located in the `targets` directory, is organized into two primary collections: |
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| ### **Interfaces** |
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| * **ProteinβProtein:** 279 interfaces |
| * **AntibodyβAntigen:** 172 interfaces |
| * **ProteinβLigand:** 558 interfaces |
| * **ProteinβPeptide:** 51 interfaces |
| * **ProteinβRNA:** 70 interfaces |
| * **ProteinβDNA:** 330 interfaces |
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| ### **Monomeric Structures** |
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| * **Protein Monomers:** 330 structures |
| * **RNA Monomers:** 15 structures |
| * **DNA Monomers:** 14 structures |
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| ## π Leaderboard |
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| **Evaluation Metrics:** Interface prediction tasks are evaluated by success rate, while monomer prediction tasks use LDDT (Local Distance Difference Test) scores. All results are based on comprehensive evaluations across our low-homology benchmark dataset. |
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| ### Results on targets released after 2023-01 (full set) |
| #### Protein Interactions |
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| | Model | Protein-Protein | AntibodyβAntigen | Protein-Ligand | |
| |:--------------:|:--------------:|:-----:|:--------------:| |
| | AlphaFold 3 | 72.93% | 47.90% | 64.90% | |
| | Boltz-1 | 68.25% | 33.54% | 55.04% | |
| | Chai-1 | 68.53% | 23.64% | 51.23% | |
| | HelixFold 3 | 66.27% | 28.40% | 51.82% | |
| | Protenix | 68.18% | 34.13% | 50.70% | |
| | OpenFold 3 (preview) | 69.96% | 28.83% | 44.49% | |
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| #### Nucleic acids |
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| | Model | Protein-RNA | Protein-DNA | RNA Monomer | DNA Monomer | |
| |:--------------:|:-----------:|:-----------:|:-----------:|:-----------:| |
| | AlphaFold 3 | 62.32% | 79.18% | 0.61 | 0.53 | |
| | Boltz-1 | 56.90% | 70.97% | 0.44 | 0.34 | |
| | Chai-1 | 50.91% | 69.97% | 0.49 | 0.46 | |
| | HelixFold 3 | 48.28% | 50.00% | 0.55 | 0.29 | |
| | Protenix | 44.78% | 68.39% | 0.59 | 0.44 | |
| | OpenFold 3 (preview) | 18.84% | 5.88% | 0.63 | 0.51 | |
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| ### Results on targets released after 2024-01 |
| #### Protein Interactions |
| | Model | Protein-Protein | AntibodyβAntigen | Protein-Ligand | |
| |:--------------:|:--------------:|:-----:|:--------------:| |
| | AlphaFold 3 | 70.87% | 47.95% | 67.59% | |
| | Boltz-1 | 64.10% | 31.43% | 51.33% | |
| | Chai-1 | 66.95% | 18.31% | 49.28% | |
| | HelixFold 3 | 66.67% | 28.17% | 50.68% | |
| | Protenix | 64.80% | 38.36% | 53.25% | |
| | OpenFold 3 (preview) | 68.22% | 34.29% | 40.85% | |
| | Boltz-2* | 70.54% | 25.00% | 53.90% | |
| | RosettaFold3* | 72.44% | 37.50% | 57.28% | |
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| #### Nucleic acids |
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| | Model | Protein-RNA | Protein-DNA | |
| |:--------------:|:-----------:|:-----------:| |
| | AlphaFold 3 | 72.50% | 80.45% | |
| | Boltz-1 | 70.00% | 69.77% | |
| | Chai-1 | 55.56% | 69.14% | |
| | HelixFold 3 | 54.29% | 61.18% | |
| | Protenix | 56.41% | 67.63% | |
| | OpenFold 3 (preview) | 25.00% | 5.81% | |
| | Boltz-2* | 76.92% | 73.84% | |
| | RosettaFold3*^ | - | 66.07% | |
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| *Models marked with * have a training cutoff later than FoldBench's reference date (2023-01-13). FoldBench targets are constructed to ensure **low homology specifically against the PDB data prior to 2023-01-13**. Consequently, models trained on data released after this date may have observed these targets or their close homologs during training (potential data leakage), compromising the low-homology evaluation condition. Results for these models are provided for reference only and should not be directly compared with strictly valid models. |
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| **Nucleic acid monomer results are omitted due to insufficient target availability. |
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| ^Results are not shown due to insufficient targets caused by errors during inference or evaluation stages. |
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| **Note:** |
| - Interface prediction is evaluated by success rate. |
| - Monomer prediction is evaluated by LDDT. |
| - Success is defined as: |
| - For proteinβligand interfaces: LRMSD < 2 Γ
and LDDT-PLI > 0.8 |
| - For all other interfaces: DockQ β₯ 0.23 |
| - We developed an algorithm to identify and prevent overfitting of models on FoldBench, ensuring fair and reliable evaluation. |
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| ## π Detailed Performance Analysis |
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| ### Results on targets released after 2023-01 (full set) |
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| ### Results on targets released after 2024-01 |
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| ## π Getting Started |
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| To get started with FoldBench, clone the repository and set up the Conda environment. |
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| ```bash |
| # 1. Clone the repository |
| git clone https://github.com/BEAM-Labs/FoldBench.git |
| cd FoldBench |
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| # 2. Create and activate the Conda environment for evaluation |
| conda env create -f environment.yml |
| conda activate foldbench |
| ``` |
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| ## βοΈ Evaluation |
| You can use our provided evaluation samples to reproduce the evaluation workflow. The final results will be generated in `examples/summary_table.csv`. |
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| ```bash |
| # Ensure you are in the FoldBench root directory and the conda environment is active |
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| # Step 1: Calculate per-target scores from prediction files |
| # This uses OpenStructure (ost) and DockQ to score each prediction against its ground truth |
| python evaluate.py \ |
| --targets_dir ./examples/targets \ |
| --evaluation_dir ./examples/outputs/evaluation \ |
| --algorithm_name Protenix \ |
| --ground_truth_dir ./examples/ground_truths |
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| # Step 2: Aggregate scores and calculate the final success rates/LDDT |
| # This summarizes the results for specified models and tasks into a final table |
| python task_score_summary.py \ |
| --evaluation_dir ./examples/outputs/evaluation \ |
| --target_dir ./examples/targets \ |
| --output_path ./examples/summary_table.csv \ |
| --algorithm_names Protenix \ |
| --targets interface_protein_ligand interface_protein_dna monomer_protein \ |
| --metric_type rank |
| ``` |
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| ### Evaluate more structures |
| To evaluate more structures in FoldBench, you'll need to follow these steps: |
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| #### **1. Prepare Your Data** |
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| * **Edit the target CSV files:** Modify the CSV files located in the `examples/targets` directory. These files should contain information about the structures you want to evaluate. |
| * **Download ground truth CIF files:** A package containing the specific original CIF files referenced during the benchmark's creation is available for download here: [FoldBench Referenced CIFs](https://drive.google.com/file/d/17KdWDXKATaeHF6inPxhPHIRuIzeqiJxS/view?usp=sharing). Save these files in the `examples/ground_truths` directory. Ensure the filenames correspond to your data in the CSV files. |
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| #### **2. Update Evaluation Outputs** |
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| * **Modify `prediction_reference.csv`:** After preparing your data, you'll need to adjust the `./outputs/evaluation/{algorithm_name}/prediction_reference.csv` file to specify the model's ranking scores and the paths to the predicted structures. Please refer to the **[Integrating a New Model into FoldBench](./algorithms/README.md)**. |
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| ## β¨ Integrating a New Model into FoldBench |
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| We enthusiastically welcome community submissions! |
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| You can submit your algorithm for us to run the tests. |
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| For detailed instructions on how to package your model for submission, please see the contributor's guide: |
| **[Integrating a New Model into FoldBench](./algorithms/README.md)**. |
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| ## π Repository Structure |
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| The FoldBench repository is organized to separate benchmark data, evaluation code, and evaluation samples. |
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| ``` |
| FoldBench/ |
| βββ targets/ # FoldBench targets csv files |
| β βββ interface_antibody_antigen.csv |
| β βββ ... |
| βββ algorithms/ |
| β βββ algorithm_name/ # Custom model's code and definition files go here |
| β βββ ... |
| βββ examples/ |
| β βββ outputs/ |
| β β βββ input/ # Preprocessed inputs for each algorithm |
| β β β βββ algorithm_name/ |
| β β βββ prediction/ # Model predictions (e.g., .cif files) |
| β β β βββ algorithm_name/ |
| β β βββ evaluation/ # Final scores and summaries |
| β β βββ algorithm_name/ |
| β βββ targets/ # Target definitions |
| β βββ ground_truths/ # Ground truth cif files |
| β βββ alphafold3_inputs.json # Alphafold3 input json |
| βββ build_apptainer_images.sh # Script to build all algorithm containers |
| βββ environment.yml # Conda environment for evaluation scripts |
| βββ run.sh # Master script to run inference and evaluation |
| βββ evaluate.py # Prediction evaluation |
| βββ task_score_summary.py # Benchmark score summary |
| βββ ... |
| ``` |
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| ## π Acknowledgements |
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| We gratefully acknowledge the developers of the following projects, which are essential to FoldBench: |
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| + [Alphafold3](https://github.com/google-deepmind/alphafold3) |
| + [Protenix](https://github.com/bytedance/Protenix) |
| + [Chai-1](https://github.com/chaidiscovery/chai-lab) |
| + [Boltz-1/2](https://github.com/jwohlwend/boltz) |
| + [Helixfold3](https://github.com/PaddlePaddle/PaddleHelix/tree/dev/apps/protein_folding/helixfold3) |
| + [OpenFold 3](https://github.com/aqlaboratory/openfold-3) |
| + [OpenStructure](https://git.scicore.unibas.ch/schwede/openstructure) |
| + [DockQ](https://github.com/bjornwallner/DockQ) |
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| ## π License |
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| This project is licensed under the MIT License - see the [LICENSE](LICENSE) file for details. |
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| The MIT License is a permissive open source license that allows for commercial and non-commercial use, modification, distribution, and private use of the software, provided that the original copyright notice and license terms are included. |
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| ## βοΈ How to Cite |
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| If you use FoldBench in your research, please cite our paper: |
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| ```bibtex |
| @article{xu_benchmarking_2025, |
| title = {Benchmarking all-atom biomolecular structure prediction with {FoldBench}}, |
| issn = {2041-1723}, |
| url = {https://doi.org/10.1038/s41467-025-67127-3}, |
| doi = {10.1038/s41467-025-67127-3}, |
| journal = {Nature Communications}, |
| author = {Xu, Sheng and Feng, Qiantai and Qiao, Lifeng and Wu, Hao and Shen, Tao and Cheng, Yu and Zheng, Shuangjia and Sun, Siqi}, |
| month = dec, |
| year = {2025}, |
| } |
| ``` |