Making the most of high-dimensional cytometry data

Immunol Cell Biol. 2021 Aug;99(7):680-696. doi: 10.1111/imcb.12456. Epub 2021 May 4.

Abstract

High-dimensional cytometry represents an exciting new era of immunology research, enabling the discovery of new cells and prediction of patient responses to therapy. A plethora of analysis and visualization tools and programs are now available for both new and experienced users; however, the transition from low- to high-dimensional cytometry requires a change in the way users think about experimental design and data analysis. Data from high-dimensional cytometry experiments are often underutilized, because of both the size of the data and the number of possible combinations of markers, as well as to a lack of understanding of the processes required to generate meaningful data. In this article, we explain the concepts behind designing high-dimensional cytometry experiments and provide considerations for new and experienced users to design and carry out high-dimensional experiments to maximize quality data collection.

Keywords: Analysis; experimental design; flow cytometry; high-dimensional data; mass cytometry.

Publication types

  • Research Support, Non-U.S. Gov't
  • Review

MeSH terms

  • Flow Cytometry*
  • Humans