Simulation-based benchmarking of isoform quantification in single-cell RNA-seq
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Journal Article
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Authors
Westoby, Jennifer
Herrera, Marcela S
Ferguson-Smith, Anne C
Hemberg, Martin
Abstract
Abstract Single-cell RNA-seq has the potential to facilitate isoform quantification as the confounding factor of a mixed population of cells is eliminated. However, best practice for using existing quantification methods has not been established. We carry out a benchmark for five popular isoform quantification tools. Performance is generally good for simulated data based on SMARTer and SMART-seq2 data. The reduction in performance compared with bulk RNA-seq is small. An important biological insight comes from our analysis of real data which shows that genes that express two isoforms in bulk RNA-seq predominantly express one or neither isoform in individual cells.