scGSDR: Harnessing Gene Semantics for Single-Cell Pharmacological Profiling
Yu-An Huang, Xiyue Cao, Zhu-Hong You, Yue-Chao Li, Xuequn Shang,, Zhi-An Huang

TL;DR
scGSDR is a novel computational model that leverages gene semantics and pathway information to accurately predict single-cell drug responses, aiding precision medicine and drug resistance understanding.
Contribution
This work introduces scGSDR, a new model integrating gene semantics and pathway knowledge for improved prediction and interpretability of cellular drug responses.
Findings
Achieves high predictive accuracy across 16 experiments and 11 drugs.
Effectively predicts responses to single drugs and combinations.
Identifies biologically relevant pathways and genes related to drug resistance.
Abstract
The rise of single-cell sequencing technologies has revolutionized the exploration of drug resistance, revealing the crucial role of cellular heterogeneity in advancing precision medicine. By building computational models from existing single-cell drug response data, we can rapidly annotate cellular responses to drugs in subsequent trials. To this end, we developed scGSDR, a model that integrates two computational pipelines grounded in the knowledge of cellular states and gene signaling pathways, both essential for understanding biological gene semantics. scGSDR enhances predictive performance by incorporating gene semantics and employs an interpretability module to identify key pathways contributing to drug resistance phenotypes. Our extensive validation, which included 16 experiments covering 11 drugs, demonstrates scGSDR's superior predictive accuracy, when trained with either…
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Taxonomy
TopicsBiomedical Text Mining and Ontologies · Single-cell and spatial transcriptomics
MethodsSoftmax · Attention Is All You Need
