Expanding Genomic Discovery: Causally-Inspired Neural Networks for Predicting Therapeutic Targets
Abstract
As an alternative to target-driven drug discovery, phenotype-driven approaches identify compounds that counteract the overall disease effects by analyzing phenotypic signatures. Our study introduces a novel approach to this field, aiming to expand the search space for new therapeutic agents. We introduce PDGrapher, a causally-inspired graph neural network model designed to predict arbitrary perturbagens – sets of therapeutic targets – capable of reversing disease effects. Unlike existing methods that learn responses to perturbations, PDGrapher solves the inverse problem, which is to infer the perturbagens necessary to achieve a specific response – i.e., directly predicting perturbagens by learning which perturbations elicit a desired response. Experiments across eight datasets of genetic and chemical perturbations show that PDGrapher successfully predicted effective perturbagens in up to 9% additional test samples and ranked therapeutic targets up to 35% higher than competing methods. A key innovation of PDGrapher is its direct prediction capability, which contrasts with the indirect, computationally intensive models traditionally used in phenotype-driven drug discovery that only predict changes in phenotypes due to perturbations. The direct approach enables PDGrapher to train up to 30 times faster, representing a significant leap in efficiency. Our results suggest that PDGrapher can advance phenotype-driven drug discovery, offering a fast and comprehensive approach to identifying therapeutically useful perturbations.
Cite
Text
Gonzalez et al. "Expanding Genomic Discovery: Causally-Inspired Neural Networks for Predicting Therapeutic Targets." ICLR 2024 Workshops: MLGenX, 2024.Markdown
[Gonzalez et al. "Expanding Genomic Discovery: Causally-Inspired Neural Networks for Predicting Therapeutic Targets." ICLR 2024 Workshops: MLGenX, 2024.](https://mlanthology.org/iclrw/2024/gonzalez2024iclrw-expanding/)BibTeX
@inproceedings{gonzalez2024iclrw-expanding,
title = {{Expanding Genomic Discovery: Causally-Inspired Neural Networks for Predicting Therapeutic Targets}},
author = {Gonzalez, Guadalupe and Herath, Isuru and Veselkov, Kirill and Bronstein, Michael M. and Zitnik, Marinka},
booktitle = {ICLR 2024 Workshops: MLGenX},
year = {2024},
url = {https://mlanthology.org/iclrw/2024/gonzalez2024iclrw-expanding/}
}