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--- |
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license: cc-by-nc-4.0 |
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size_categories: |
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- 100K<n<1M |
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--- |
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# Pep2Prob: Peptide-Specific Fragment Ion Probability Prediction Dataset |
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Pep2Prob is a comprehensive dataset designed to predict peptide-specific fragment ion probability in tandem mass spectrometry (MS/MS) based proteomics studies. This dataset addresses the limitations of conventional global statistical approaches by enabling the development of models that can predict fragmentation probabilities based on peptide sequence context. |
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## π Dataset Overview and Highlights |
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- The dataset provides **Fragment ion probability statistics for 610,117 unique peptide precursors** derived from over 183 million high-resolution HCD spectra |
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- Diverse representation of precursors with varying lengths (6-40 amino acids) and charge states (1-8) |
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- High-quality annotations derived from validated peptide assignments with 0.1% false discovery rate |
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- A novel train-test split scheme is adapted to minimize structural similarity between entries in the training and the testing set. |
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## π Code and Documentation |
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- **GitHub Repository**: [https://github.com/Bandeira-Lab/pep2prob-benchmark](https://github.com/Bandeira-Lab/pep2prob-benchmark) |
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<!-- - **Paper**: [Pep2Prob Benchmark: Predicting Fragment Ion Probability for MSΒ²-based Proteomics](https://openreview.net/forum?id=3mOtYJWr90) --> |
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- **Documentation**: Complete usage instructions and examples available in the GitHub repository |
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## β οΈ Important Data Access Notice |
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**HuggingFace Statistics Issue**: The repository statistics incorrectly show ~3.15 million entries due to a platform counting error. HuggingFace sums across our five train-test splits (610,117 Γ 5 β 3.15M) instead of recognizing these as the same unique precursors distributed into separate folds. |
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**Recommended Data Access Methods**: |
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1. **Using the downloader in our GitHub** (recommended): |
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```bash |
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# Download from GitHub |
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git clone https://github.com/Bandeira-Lab/pep2prob-benchmark.git |
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cd pep2prob-benchmark |
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pip install -r requirements.txt (if missing any requried packages) |
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python data/download_data.py |
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``` |
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2. **Manual download** for specific splits using `wget` with the URL. |
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## π Dataset Structure |
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``` |
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Pep2Prob/ |
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βββ data/pep2prob_dataset.parquet # Info for all the precursors |
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βββ meta_data/ |
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β βββ X_columns.parquet # Input feature metadata |
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β βββ Y_columns.parquet # Target variable metadata |
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βββ train_test_split_set_1/ # Train-test split 1 |
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β βββ train_indices.parquet |
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β βββ test_indices.parquet |
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βββ train_test_split_set_2/ # Train-test split 2 |
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β βββ train_indices.parquet |
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β βββ test_indices.parquet |
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βββ train_test_split_set_3/ # Train-test split 3 |
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β βββ train_indices.parquet |
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β βββ test_indices.parquet |
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βββ train_test_split_set_4/ # Train-test split 4 |
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β βββ train_indices.parquet |
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β βββ test_indices.parquet |
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βββ train_test_split_set_5/ # Train-test split 5 |
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βββ train_indices.parquet |
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βββ test_indices.parquet |
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``` |
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### File Descriptions |
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- **`pep2prob_dataset.csv`**: Main dataset containing fragment ion probability statistics for 610,117 unique peptide precursors, derived from over 183 million high-resolution HCD MS/MS spectra |
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- **`X_columns.csv`**: Metadata describing input features (peptide sequence information, amino acid properties, fragment ion types, physicochemical features) |
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- **`Y_columns.csv`**: Metadata describing target variables (probability values for different fragment ion types) |
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- **`train_test_split_set_X/`**: Five pre-defined train-test splits ensuring no sequence similarity between training and testing sets, preventing data leakage |
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## π― Train-test split Methodology |
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Our dataset uses a sophisticated sequence-similarity-aware splitting strategy: |
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1. **Graph-based clustering**: Precursors are grouped based on sequence similarity (identical sequences, shared prefixes/suffixes of length 6) |
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2. **Component-based splitting**: Connected components are distributed across five balanced folds |
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3. **No data leakage**: Ensures similar peptides appear in only one split |
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4. **Robust evaluation**: Enables fair assessment of model generalization to novel peptide sequences |
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## π¬ Applications |
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This dataset enables: |
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- **Model Development**: Training peptide-specific fragment ion probability prediction models |
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- **Benchmarking**: Standardized evaluation of machine learning approaches with varying complexity |
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- **Proteomics Enhancement**: Improving peptide identification algorithms and tools for library search, database search, mass spectrum prediction, de novo sequencing... |
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- **Fragmentation Research**: Exploring relationships between peptide sequence context and fragmentation behavior |
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- **Quality Control**: Identifying problematic spectra through unexpected fragmentation patterns |
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## π Citation |
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If you use this dataset in your research, please cite: |
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```bibtex |
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@misc{xu2025pep2prob, |
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title={Pep2Prob Benchmark: Predicting Fragment Ion Probability for MS$^2$-based Proteomics}, |
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author={Hao Xu and Zhichao Wang and Shengqi Sang and Pisit Wajanasara and Nuno Bandeira}, |
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year={2025}, |
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eprint={2508.21076}, |
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archivePrefix={arXiv}, |
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primaryClass={q-bio.BM}, |
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url={https://arxiv.org/abs/2508.21076}, |
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} |
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``` |
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## π License |
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This dataset is released under the CC-BY-NC-4.0 license. See LICENSE file for details. |
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## π€ Contributing |
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We welcome contributions! Please see our [GitHub repository](https://github.com/Bandeira-Lab/pep2prob-benchmark) for: |
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- Bug reports and feature requests |
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- Usage examples and tutorials |
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- Benchmark improvements and new baseline models |
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- Documentation enhancements |
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<!-- ## β Acknowledgments --> |
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<!-- This dataset was constructed from publicly available mass spectrometry data in the MassIVE repository, with curation based on the MassIVE Knowledge Base. We thank the proteomics community for sharing high-quality data that enables this research. --> |