Podcast cover for "CASPER: Cross-modal Alignment of Spatial and single-cell Profiles for Expression Recovery" by Amit Kumar et al.
Episode

CASPER: Cross-modal Alignment of Spatial and single-cell Profiles for Expression Recovery

Nov 19, 202510:37
GenomicsArtificial IntelligenceMachine Learning
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Abstract

Spatial Transcriptomics enables mapping of gene expression within its native tissue context, but current platforms measure only a limited set of genes due to experimental constraints and excessive costs. To overcome this, computational models integrate Single-Cell RNA Sequencing data with Spatial Transcriptomics to predict unmeasured genes. We propose CASPER, a cross-attention based framework that predicts unmeasured gene expression in Spatial Transcriptomics by leveraging centroid-level representations from Single-Cell RNA Sequencing. We performed rigorous testing over four state-of-the-art Spatial Transcriptomics/Single-Cell RNA Sequencing dataset pairs across four existing baseline models. CASPER shows significant improvement in nine out of the twelve metrics for our experiments. This work paves the way for further work in Spatial Transcriptomics to Single-Cell RNA Sequencing modality translation. The code for CASPER is available at https://github.com/AI4Med-Lab/CASPER.

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Cite This Paper

Year:2025
Category:q-bio.GN
APA

Kumar, A., Kaur, M., Mall, R., Gupta, S. (2025). CASPER: Cross-modal Alignment of Spatial and single-cell Profiles for Expression Recovery. arXiv preprint arXiv:2511.15139.

MLA

Amit Kumar, Maninder Kaur, Raghvendra Mall, and Sukrit Gupta. "CASPER: Cross-modal Alignment of Spatial and single-cell Profiles for Expression Recovery." arXiv preprint arXiv:2511.15139 (2025).