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Modeling group heteroscedasticity in single-cell RNA-seq pseudo-bulk data.

Yue YouXueyi DongYong Kiat WeeMhairi J MaxwellMonther AlhamdooshGordon K SmythPeter F HickeyMatthew E RitchieCharity W Law
Published in: Genome biology (2023)
Group heteroscedasticity is commonly observed in pseudo-bulk single-cell RNA-seq datasets and its presence can hamper the detection of differentially expressed genes. Since most bulk RNA-seq methods assume equal group variances, we introduce two new approaches that account for heteroscedastic groups, namely voomByGroup and voomWithQualityWeights using a blocked design (voomQWB). Compared to current gold-standard methods that do not account for group heteroscedasticity, we show results from simulations and various experiments that demonstrate the superior performance of voomByGroup and voomQWB in terms of error control and power when group variances in pseudo-bulk single-cell RNA-seq data are unequal.
Keyphrases
  • rna seq
  • single cell
  • high throughput
  • electronic health record
  • gene expression
  • molecular dynamics
  • genome wide
  • big data
  • label free