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GCNMDA

GCNMDA: A novel Graph Convolution Network based framework for predicting Microbe-Drug Associations.

Data description

  • adj: interaction pairs between microbes and drugs.
  • drugs: IDs and names for drugs.
  • microbes/viruses: IDs and names for microbes/viruses.
  • drugfeatures: pre-processing feature matrix for drugs.
  • microbefeatures: pre-processing feature matrix for microbes.
  • drugsimilarity: integrated drug similarity matrix.
  • microbesimilarity: integrated microbe similarity matrix.

Run steps

  1. To generate training data and test data.
  2. Run train.py to train the model and obtain the predicted scores for microbe-drug associations.

Requirements

  • GCNMDA is implemented to work under Python 3.7.
  • Tensorflow
  • numpy
  • scipy
  • sklearn