FlowSOM: Using self‐organizing maps for visualization and interpretation of cytometry data
Ghent University Hospital · Ghent University · +2 more institutions
Abstract
The number of markers measured in both flow and mass cytometry keeps increasing steadily. Although this provides a wealth of information, it becomes infeasible to analyze these datasets manually. When using 2D scatter plots, the number of possible plots increases exponentially with the number of markers and therefore, relevant information that is present in the data might be missed. In this article, we introduce a new visualization technique, called FlowSOM, which analyzes Flow or mass cytometry data using a Self-Organizing Map. Using a two-level clustering and star charts, our algorithm helps to obtain a clear overview of how all markers are behaving on all cells, and to detect subsets that might be missed…
Citation impact
- FWCI
- 15.21
- Percentile
- 100%
- References
- 18
Authors
7- SVSofie Van GassenCorresponding
Ghent University Hospital, Ghent University, iMinds, VIB-UGent Center for Inflammation Research
- BCBritt Callebaut
Ghent University, iMinds
- MJMary J. van Helden
Ghent University Hospital, VIB-UGent Center for Inflammation Research
- BNBart N. Lambrecht
Ghent University Hospital, VIB-UGent Center for Inflammation Research
- PDPiet Demeester
Ghent University, iMinds
Topics & keywords
- Mass cytometry
- Bioconductor
- Computer science
- Cluster analysis
- Visualization
- Cytometry
- Flow cytometry
- Data mining