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STARCH: copy number and clone inference from spatial transcriptomics data

Rebecca Elyanow, Ron Zeira, Max Land, Benjamin J. Raphael

2020Physical Biology64 citationsDOIOpen Access PDF

Abstract

Tumors are highly heterogeneous, consisting of cell populations with both transcriptional and genetic diversity. These diverse cell populations are spatially organized within a tumor, creating a distinct tumor microenvironment. A new technology called spatial transcriptomics can measure spatial patterns of gene expression within a tissue by sequencing RNA transcripts from a grid of spots, each containing a small number of cells. In tumor cells, these gene expression patterns represent the combined contribution of regulatory mechanisms, which alter the rate at which a gene is transcribed, and genetic diversity, particularly copy number aberrations (CNAs) which alter the number of copies of a gene in the genome. CNAs are common in tumors and often promote cancer growth through upregulation of oncogenes or downregulation of tumor-suppressor genes. We introduce a new method STARCH (spatial transcriptomics algorithm reconstructing copy-number heterogeneity) to infer CNAs from spatial transcriptomics data. STARCH overcomes challenges in inferring CNAs from RNA-sequencing data by leveraging the observation that cells located nearby in a tumor are likely to share similar CNAs. We find that STARCH outperforms existing methods for inferring CNAs from RNA-sequencing data without incorporating spatial information.

Topics & Concepts

InferenceComputational biologyTranscriptomeclone (Java method)BiologyComputer scienceGeneticsArtificial intelligenceGeneGene expressionSingle-cell and spatial transcriptomicsMolecular Biology Techniques and ApplicationsGenomics and Phylogenetic Studies
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