Genome Biology (Oct 2018)

CRISPhieRmix: a hierarchical mixture model for CRISPR pooled screens

  • Timothy P. Daley,
  • Zhixiang Lin,
  • Xueqiu Lin,
  • Yanxia Liu,
  • Wing Hung Wong,
  • Lei S. Qi

DOI
https://doi.org/10.1186/s13059-018-1538-6
Journal volume & issue
Vol. 19, no. 1
pp. 1 – 13

Abstract

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Abstract Pooled CRISPR screens allow researchers to interrogate genetic causes of complex phenotypes at the genome-wide scale and promise higher specificity and sensitivity compared to competing technologies. Unfortunately, two problems exist, particularly for CRISPRi/a screens: variability in guide efficiency and large rare off-target effects. We present a method, CRISPhieRmix, that resolves these issues by using a hierarchical mixture model with a broad-tailed null distribution. We show that CRISPhieRmix allows for more accurate and powerful inferences in large-scale pooled CRISPRi/a screens. We discuss key issues in the analysis and design of screens, particularly the number of guides needed for faithful full discovery.

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