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Benchmarking integration of single-cell differential expression.

Hai C T NguyenBukyung BaikSora YoonTaesung ParkDougu Nam
Published in: Nature communications (2023)
Integration of single-cell RNA sequencing data between different samples has been a major challenge for analyzing cell populations. However, strategies to integrate differential expression analysis of single-cell data remain underinvestigated. Here, we benchmark 46 workflows for differential expression analysis of single-cell data with multiple batches. We show that batch effects, sequencing depth and data sparsity substantially impact their performances. Notably, we find that the use of batch-corrected data rarely improves the analysis for sparse data, whereas batch covariate modeling improves the analysis for substantial batch effects. We show that for low depth data, single-cell techniques based on zero-inflation model deteriorate the performance, whereas the analysis of uncorrected data using limmatrend, Wilcoxon test and fixed effects model performs well. We suggest several high-performance methods under different conditions based on various simulation and real data analyses. Additionally, we demonstrate that differential expression analysis for a specific cell type outperforms that of large-scale bulk sample data in prioritizing disease-related genes.
Keyphrases
  • single cell
  • electronic health record
  • big data
  • rna seq
  • high throughput
  • data analysis
  • stem cells
  • optical coherence tomography
  • artificial intelligence
  • mesenchymal stem cells