Genome Biology (May 2024)

Robust differential expression testing for single-cell CRISPR screens at low multiplicity of infection

  • Timothy Barry,
  • Kaishu Mason,
  • Kathryn Roeder,
  • Eugene Katsevich

DOI
https://doi.org/10.1186/s13059-024-03254-2
Journal volume & issue
Vol. 25, no. 1
pp. 1 – 30

Abstract

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Abstract Single-cell CRISPR screens (perturb-seq) link genetic perturbations to phenotypic changes in individual cells. The most fundamental task in perturb-seq analysis is to test for association between a perturbation and a count outcome, such as gene expression. We conduct the first-ever comprehensive benchmarking study of association testing methods for low multiplicity-of-infection (MOI) perturb-seq data, finding that existing methods produce excess false positives. We conduct an extensive empirical investigation of the data, identifying three core analysis challenges: sparsity, confounding, and model misspecification. Finally, we develop an association testing method — SCEPTRE low-MOI — that resolves these analysis challenges and demonstrates improved calibration and power.