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GAECDS:

Graph Auto Encoder and Convolutional neural network for Drug Synergy prediction

Title: Predicting Drug Synergy and Discovering New Drug Combinations Based on a Graph Autoencoder and Convolutional Neural Network

Interdisciplinary Sciences Computational Life Sciences 15(21)

DOI: 10.1007/s12539-023-00558-y


Code:
---------- * `GAECDS.py`: GAECDS model
* `GAECDS_cell_or_not.py`: GAECDS model with and without cell line data
* `GAECDS_cell_negative.py`: Training GAECDS model with different positive and negative sample ratios
* `GAECDS_param.py`: Hyperparameter adjustment
* `GAECDS_nocell_val.py`: Employ the model to predict novel drug combinations

Data:
data_5693: the data for train and test
data_1390: the data for new drug combinations prediction
machine_methods: the data for machine learning methods

Results:
The results of model training and the results of comparison