Predicting Single-Cell Perturbation Responses for Unseen Drugs
Abstract
Single-cell transcriptomics enabled the study of cellular heterogeneity in response to perturbations at the resolution of individual cells. However, scaling high-throughput screens (HTSs) to measure cellular responses for many drugs remains a challenge due to technical limitations and, more importantly, the cost of such multiplexed experiments. Thus, transferring information from routinely performed bulk RNA-seq HTS is required to enrich single-cell data meaningfully. We introduce a new encoder-decoder architecture to study the perturbational effects of unseen drugs. We combine the model with a transfer learning scheme and demonstrate how training on existing bulk RNA-seq HTS datasets can improve generalisation performance. Better generalisation reduces the need for extensive and costly screens at single-cell resolution. We envision that our proposed method will facilitate more efficient experiment designs through its ability to generate in-silico hypotheses, ultimately accelerating targeted drug discovery.
Cite
Text
Hetzel et al. "Predicting Single-Cell Perturbation Responses for Unseen Drugs." ICLR 2022 Workshops: MLDD, 2022.Markdown
[Hetzel et al. "Predicting Single-Cell Perturbation Responses for Unseen Drugs." ICLR 2022 Workshops: MLDD, 2022.](https://mlanthology.org/iclrw/2022/hetzel2022iclrw-predicting/)BibTeX
@inproceedings{hetzel2022iclrw-predicting,
title = {{Predicting Single-Cell Perturbation Responses for Unseen Drugs}},
author = {Hetzel, Leon and Boehm, Simon and Kilbertus, Niki and Günnemann, Stephan and Lotfollahi, Mohammad and Theis, Fabian J},
booktitle = {ICLR 2022 Workshops: MLDD},
year = {2022},
url = {https://mlanthology.org/iclrw/2022/hetzel2022iclrw-predicting/}
}