chemicalx
Drug pairing model
A deep learning library for predicting the effects of combining two drugs
A PyTorch and TorchDrug based deep learning library for drug pair scoring. (KDD 2022)
719 stars
22 watching
88 forks
Language: Python
last commit: over 1 year ago
Linked from 3 awesome lists
biologychemistrydeep-chemistrydeep-learningdrugdrug-discoverydrug-interactiondrug-pairgeometric-deep-learninggeometrygraph-neural-networkmachine-learningpharmapolypharmacypytorchsmilessmiles-stringstorchtorchdrug
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