Method for co-cluster analysis in multichannel single-molecule localisation data

Jeremie Rossy, Edward Cohen, Katharina Gaus, Dylan M. Owen

Research output: Contribution to journalArticlepeer-review

47 Citations (Scopus)

Abstract

We demonstrate a combined univariate and bivariate Getis and Franklin's local point pattern analysis method to investigate the co-clustering of membrane proteins in two-dimensional single-molecule localisation data. This method assesses the degree of clustering of each molecule relative to its own species and relative to a second species. Using simulated data, we show that this approach can quantify the degree of cluster overlap in multichannel point patterns. The method is validated using photo-activated localisation microscopy and direct stochastic optical reconstruction microscopy data of the proteins Lck and CD45 at the T cell immunological synapse. Analysing co-clustering in this manner is generalizable to higher numbers of fluorescent species and to three-dimensional or live cell data sets.
Original languageEnglish
Pages (from-to)605-612
Number of pages8
JournalHistochemistry and Cell Biology
Volume141
Early online date19 Mar 2014
DOIs
Publication statusPublished - Jun 2014

Keywords

  • Cluster analysis
  • Super-resolution
  • Co-localisation
  • PALM
  • STORM
  • OPTICAL RECONSTRUCTION MICROSCOPY
  • PAIR-CORRELATION-ANALYSIS
  • COLOCALIZATION ANALYSIS
  • PROTEIN HETEROGENEITY
  • FLUORESCENT-PROBES
  • DIFFRACTION-LIMIT
  • PATTERNS

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