Authors
Chen, X. D., Jim, M., Vallurupalli, M., Cao, K., Torres, A. N., Leong, J. W., Zhang, Y., Wollensak, D., Gong, Q., Sun, J., Borji, M., Schor, G., Mrowka, S., Hu, M., Laumas, A., Roth, J. A., Golub, T., Chen, F.
Abstract
Programmable control of gene expression in specific cell types is essential for both basic discovery and therapeutic intervention, yet current strategies lack scalability across diverse cellular contexts. Here, we introduce SPICE (Splicing Proportions In Cell types), an integrated experimental and computational framework that harnesses alternative RNA splicing as a programmable modality for cell type-specific gene regulation. To power SPICE, we constructed a massively parallel reporter assay (MPRA) comprising 46,372 human-derived sequences and profiled exon skipping across 43 cell lines spanning 10 lineages, uncovering widespread cell type-specific exon skipping. Using this data, we trained deep learning models that both predict splicing in unseen contexts and generate synthetic sequences with programmed, cell type-specific splicing patterns. Leveraging these models, we further engineered sequences that selectively splice in cells harboring oncogenic splicing factor mutations, demonstrating translational potential. SPICE provides a generalizable strategy for dissecting splicing regulation and engineering alternative splicing as a gene expression regulatory layer for research and therapeutic applications.
Preprint server:
bioRxiv
The authors list and abstract were imported from bioRxiv on 07 Nov 2025.
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