ePoster

DECONVOLVING THE TRANSCRIPTOMIC SIGNATURES OF SOMATIC EXPANSION IN HUNTINGTON’S DISEASE

Caterina Fusesand 2 co-authors

Universitat de Barcelona

FENS Forum 2026 (2026)
Barcelona, Spain
Board PS02-07PM-557

Presentation

Date TBA

Board: PS02-07PM-557

Poster preview

DECONVOLVING THE TRANSCRIPTOMIC SIGNATURES OF SOMATIC EXPANSION IN HUNTINGTON’S DISEASE poster preview

Event Information

Poster Board

PS02-07PM-557

Abstract

Huntington’s disease (HD) is a monogenic neurodegenerative disorder characterized by progressive damage to striatal neurons, primarily driven by somatic CAG repeat expansions – a dynamic, cell type-dependent process that leads to their degeneration. However, generating paired single-cell data including both expansion length alongside gene expression is experimentally challenging and not commonly done. Nevertheless, a clear understanding of somatic expansion processes is vital to understand experimental models and accurately evaluate new therapeutic approaches. Here, we present a novel methodology, DEconvolution of CAG Signatures (DECAG), based on a deep generative model that predicts somatic expansion stage from single-cell RNA-seq data using a recently published paired dataset as a reference panel. In addition, DECAG explicitly disentangles expansion-associated transcriptional variability from confounding factors such as cell-type and sequencing technology, and will continue to improve as more paired datasets become available. Using paired data with ground-truth, we show that DECAG outperforms the baseline models, such as scANVI, by a margin of 10% reaching a test balanced accuracy of72%, while producing interpretable latent representations. More importantly, DECAG also shows competitive performance in the semi-supervised setting, where we train our model using scRNA-seq data with partial CAG information. In this case, the model enables propagation of CAG expansion labels to standard scRNA-seq datasets, facilitating mutation-length-aware analyses of existing and future experiments. In conclusion, DECAG provides an evolving framework for accurately inferring somatic CAG expansion stages from single-cell transcriptomes, enabling mutation-length-aware analyses that can accelerate research and therapeutic development in HD and other polyglutamine diseases.

Recommended posters

Cookies

We use essential cookies to run the site. Analytics cookies are optional and help us improve World Wide. Learn more.