2023
DOI: 10.1101/2023.09.08.556842
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Identification of cell types, states and programs by learning gene set representations

Soroor Hediyeh-zadeh,
Holly J. Whitfield,
Malvika Kharbanda
et al.

Abstract: As single cell molecular data expand, there is an increasing need for algorithms that efficiently query and prioritize gene programs, cell types and states in single-cell sequencing data, particularly in cell atlases. Here we present scDECAF, a statistical learning algorithm to identify cell types, states and programs in single-cell gene expression data using vector representation of gene sets, which improves biological interpretation by selecting a subset of most biologically relevant programs. We applied scD… Show more

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“…Cell-specific enrichment scores for synapse-related gene sets 66 were computed as per the methodology outlined in Hediyeh-zadeh et al 67 . Differentially expressed gene sets between D1MSN and D2MSN were identified using a two-sided student's t-test, with selection and ranking of gene sets exhibiting an adjusted p-value below 0.001 based on t-statistic values.…”
Section: Enrichment Scores For Synapse-related Gene Setsmentioning
confidence: 99%
“…Cell-specific enrichment scores for synapse-related gene sets 66 were computed as per the methodology outlined in Hediyeh-zadeh et al 67 . Differentially expressed gene sets between D1MSN and D2MSN were identified using a two-sided student's t-test, with selection and ranking of gene sets exhibiting an adjusted p-value below 0.001 based on t-statistic values.…”
Section: Enrichment Scores For Synapse-related Gene Setsmentioning
confidence: 99%