Drug response profile-based machine learning enables strategic cell line and compound selection for drug development
Artikel i vetenskaplig tidskrift, 2026

Motivation: Early-stage drug discovery relies on testing compounds across a limited set of cell lines, making it challenging to capture biological diversity while maintaining experimental efficiency. Current predictive approaches for identifying responsive cell lines often depend on high-dimensional omics data, which can be costly and difficult to interpret. We therefore evaluated whether drug-response panel (DRP) descriptors, which capture sensitivity profiles to a reference set of compounds, can provide an efficient and informative alternative for modelling drug response in cell lines. Results: Using gradient boosting models across GDSC and CCLE datasets, DRP descriptors consistently outperformed mRNA expression features in predicting drug sensitivity (−log10(IC50)), although performance varied across compounds. DRP-guided cell line selection enabled downstream omics-based modelling that recovered known MAPK-associated sensitivity signatures and identified potential biomarkers for MEK1/2 and BTK/MNK inhibitors. Extending this framework, we demonstrated its utility in compound prioritisation by distinguishing between tumourigenic MCF7 and non-tumourigenic MCF10A cells, successfully identifying compounds with selective activity. Together, these results show that DRP-based representations, derived from compact screening panels, support efficient cell line selection, biomarker discovery, and compound prioritisation in early-stage drug development. Availability: Code and data uploaded to https://github.com/abbiAR/-Strategic-Cell-Line-and-Compound-Selection-Using-Drug-Response-Profiles

Författare

Abbi Abdel-Rehim

University of Cambridge

Emma Tate

Arctoris

Larisa N. Soldatova

University College London (UCL)

Ross King

University of Cambridge

Chalmers, Data- och informationsteknik, Data Science och AI

Alan Turing Institute

Bioinformatics

1367-4803 (ISSN) 13674811 (eISSN)

Vol. 42 6 btag293

Ämneskategorier (SSIF 2025)

Bioinformatik (beräkningsbiologi)

Farmaceutiska vetenskaper

DOI

10.1093/bioinformatics/btag293

Relaterade dataset

-Strategic-Cell-Line-and-Compound-Selection-Using-Drug-Response-Profiles [dataset]

URI: https://github.com/abbiAR/-Strategic-Cell-Line-and-Compound-Selection-Using-Drug-Response-Profiles

Mer information

Senast uppdaterat

2026-06-22