AstraZeneca / Machine-Learning-for-Predicting-Targeted-Protein-DegradationLinks
The code was developed for training diverse ML and DL models to predict PROTACs degradation. Data cleaning for two public datasets, PROTAC-DB and PROTACpedia, are also included. PROTACs are of high interest for all disease areas of AZ and thus predicting their degradation is of general interest.
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