Modeling PROTAC degradation activity with machine learning
Journal article, 2024

PROTACs are a promising therapeutic modality that harnesses the cell's built-in degradation machinery to degrade specific proteins. Despite their potential, developing new PROTACs is challenging and requires significant domain expertise, time, and cost. Meanwhile, machine learning has transformed drug design and development. In this work, we present a strategy for curating open-source PROTAC data and an open-source deep learning tool for predicting the degradation activity of novel PROTAC molecules. The curated dataset incorporates important information such as pDC50, Dmax, E3 ligase type, POI amino acid sequence, and experimental cell type. Our model architecture leverages learned embeddings from pretrained machine learning models, in particular for encoding protein sequences and cell type information. We assessed the quality of the curated data and the generalization ability of our model architecture against new PROTACs and targets via three tailored studies, which we recommend other researchers to use in evaluating their degradation activity models. In each study, three models predict protein degradation in a majority vote setting, reaching a top test accuracy of 82.6% and 0.848 ROC AUC, and a test accuracy of 61% and 0.615 ROC AUC when generalizing to novel protein targets. Our results are not only comparable to state-of-the-art models for protein degradation prediction, but also part of an open-source implementation which is easily reproducible and less computationally complex than existing approaches.

Drug discovery

PROTAC

Machine learning

Protein degradation

Author

Stefano Ribes

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

Eva Nittinger

AstraZeneca AB

Christian Tyrchan

AstraZeneca AB

Rocio Mercado

Chalmers, Computer Science and Engineering (Chalmers), Data Science and AI

Artificial Intelligence in the Life Sciences

26673185 (eISSN)

Vol. 6 100104

Areas of Advance

Health Engineering

Subject Categories

Bioinformatics (Computational Biology)

Software Engineering

DOI

10.1016/j.ailsci.2024.100104

More information

Latest update

7/31/2024