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- ---
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- license: mit
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- tags:
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- - chemistry
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- - molecular-property-prediction
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- - drug-discovery
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- datasets:
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- - natelgrw/AMAX
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- pipeline_tag: tabular-regression
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- ---
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-
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- # ReTiNA Models: Molecular Retention Time Prediction
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-
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- A collection of machine learning models for predicting the retention time of chemical compounds in various LC-MS. These models use molecular descriptors and method encodings to predict chemical retention times, useful for automated compound identification.
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-
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- Source code for the ReTiNA model collection is available at this [Github Repository](https://github.com/natelgrw/retina_models).
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-
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- The ReTiNA dataset is available at this [Hugging Face Repository](https://huggingface.co/datasets/natelgrw/ReTiNA).
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-
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- ## 🤖 Available Models
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-
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- | Model | Architecture | Overall RMSE (s) | Overall MAE (s) | Overall R<sup>2</sup> |
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- |-----|-----|-----|-----|-----|
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- | ReTiNA_XGB1 | XGBoost | 182.81 | 119.30 | 0.659 |
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- | ReTiNA_MLP1 | PyTorch Residual MLP | 202.67 | 141.79 | 0.516 |
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-
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- All models were evaluated across rigorous scaffold, cluster, and method splits.
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-
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- ## 📄 Citation
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-
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- If you use a ReTiNA prediction model in your research, please cite:
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-
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- ```
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- @modelcollection{retinamodels,
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- title={ReTiNA-Models: Machine Learning Models for LC-MS Retention Time Prediction},
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- author={Leung, Nathan},
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- institution={Coley Research Group @ MIT}
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- year={2025},
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- howpublished={\url{https://huggingface.co/natelgrw/ReTiNA-Models}},
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- }
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  ```
 
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+ ---
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+ license: mit
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+ tags:
4
+ - chemistry
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+ - molecular-property-prediction
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+ - drug-discovery
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+ datasets:
8
+ - natelgrw/ReTiNA
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+ pipeline_tag: tabular-regression
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+ ---
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+
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+ # ReTiNA Models: Molecular Retention Time Prediction
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+
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+ A collection of machine learning models for predicting the retention time of chemical compounds in various LC-MS. These models use molecular descriptors and method encodings to predict chemical retention times, useful for automated compound identification.
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+
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+ Source code for the ReTiNA model collection is available at this [Github Repository](https://github.com/natelgrw/retina_models).
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+
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+ The ReTiNA dataset is available at this [Hugging Face Repository](https://huggingface.co/datasets/natelgrw/ReTiNA).
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+
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+ ## 🤖 Available Models
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+
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+ | Model | Architecture | Overall RMSE (s) | Overall MAE (s) | Overall R<sup>2</sup> |
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+ |-----|-----|-----|-----|-----|
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+ | ReTiNA_XGB1 | XGBoost | 182.81 | 119.30 | 0.659 |
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+ | ReTiNA_MLP1 | PyTorch Residual MLP | 202.67 | 141.79 | 0.516 |
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+
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+ All models were evaluated across rigorous scaffold, cluster, and method splits.
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+
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+ ## 📄 Citation
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+
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+ If you use a ReTiNA prediction model in your research, please cite:
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+
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+ ```
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+ @modelcollection{retinamodels,
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+ title={ReTiNA-Models: Machine Learning Models for LC-MS Retention Time Prediction},
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+ author={Leung, Nathan},
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+ institution={Coley Research Group @ MIT}
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+ year={2025},
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+ howpublished={\url{https://huggingface.co/natelgrw/ReTiNA-Models}},
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+ }
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  ```