articleThe Annals of Applied StatisticsSep 1, 2011GREEN OA

Measuring reproducibility of high-throughput experiments

QLQunhua LiJBJames B. BrownHHHaiyan HuangPJPeter J. Bickel
Indexed inarxivcrossref

Abstract

Reproducibility is essential to reliable scientific discovery in high-throughput experiments. In this work we propose a unified approach to measure the reproducibility of findings identified from replicate experiments and identify putative discoveries using reproducibility. Unlike the usual scalar measures of reproducibility, our approach creates a curve, which quantitatively assesses when the findings are no longer consistent across replicates. Our curve is fitted by a copula mixture model, from which we derive a quantitative reproducibility score, which we call the “irreproducible discovery rate” (IDR) analogous to the FDR. This score can be computed at each set of paired replicate ranks and permits the…

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1,120
total citations
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56.46
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100%
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Authors

4
  • QL
    Qunhua LiCorresponding
  • JB
    James B. Brown
  • HH
    Haiyan Huang
  • PJ
    Peter J. Bickel

Topics & keywords

Keywords
  • Reproducibility
  • Replicate
  • Measure (data warehouse)
  • Set (abstract data type)
  • Scale (ratio)
  • Pattern recognition (psychology)
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