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Models: Contains all GNN model as shown in the paper where Model 1 is the initial model, Model 2 is built with additional molecules involving multiple halogen heterocycles, and Model 3 is the final model which accounts for polyhaloalkyl molecules.
Datasets: All BDE and BDFE datasets used in developing the models, testing the models. This folder is further organised based on datasets used for iterative training and testing. We also have the dataset for external validation provided.
1. Environment for BDE prediction
Create and activate the environment. All required python packages are wrapped in this2D.yml file (Linux).
cd Example-BDE-prediction/conda env create -f 2D.yml -n bdeconda activate bde
2. Run for BDE prediction
TheExample-BDE-prediction/ folder contains an example notebooktest-prediction.ipynb where the BDE model can be loaded and utilized for BDE prediction. The SMILES of the molecules can be provided as list to the prediction model.
3. Citation
@article{D3DD00169E,author ="S. V., Shree Sowndarya and Kim, Yeonjoon and Kim, Seonah and St. John, Peter C. and Paton, Robert S.",title ="Expansion of bond dissociation prediction with machine learning to medicinally and environmentally relevant chemical space",journal ="Digital Discovery",year ="2023",pages ="-",publisher ="RSC",doi ="10.1039/D3DD00169E",url ="http://dx.doi.org/10.1039/D3DD00169E",}