BioTechniques (Sep 2010)

Reducing the multidimensionality of high-content screening into versatile powerful descriptors

  • Julie Gorenstein,
  • Ben Zack,
  • Joseph R. Marszalek,
  • Ansu Bagchi,
  • Sai Subramaniam,
  • Pamela Carroll,
  • Cem Elbi

DOI
https://doi.org/10.2144/000113492
Journal volume & issue
Vol. 49, no. 3
pp. 663 – 665

Abstract

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High-content image analysis captures many cellular parameters, but current methods of interpretation of acquired multiple dimensions assume a normal distribution, which is rarely seen in biological data sets. We describe a novel statistically based approach that collapses a set of cellular measurements into a single value, permitting a simplified and unbiased comparison of heterogeneous cellular populations. Differences in multiple cellular responses across two populations are measured using nonparametric Kolmogorov-Smirnov (KS) statistics. This method can be used to study cellular functions, to identify novel target genes and pharmacodynamic biomarkers, and to characterize drug mechanisms of action.

Keywords