PADME
Drug prediction framework
A deep learning-based framework for predicting drug-target interaction from protein descriptors
This is the repository containing the source code for my Master's thesis research, about predicting drug-target interaction using deep learning.
42 stars
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16 forks
Language: Python
last commit: over 5 years ago
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cheminformaticsconvolutional-neural-networksdeep-learning
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