Computational flow cytometry: helping to make sense of high-dimensional immunology data
- PMID: 27320317
- DOI: 10.1038/nri.2016.56
Computational flow cytometry: helping to make sense of high-dimensional immunology data
Abstract
Recent advances in flow cytometry allow scientists to measure an increasing number of parameters per cell, generating huge and high-dimensional datasets. To analyse, visualize and interpret these data, newly available computational techniques should be adopted, evaluated and improved upon by the immunological community. Computational flow cytometry is emerging as an important new field at the intersection of immunology and computational biology; it allows new biological knowledge to be extracted from high-throughput single-cell data. This Review provides non-experts with a broad and practical overview of the many recent developments in computational flow cytometry.
Comment in
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Response to Orlova et al. "Science not art: statistically sound methods for identifying subsets in multi-dimensional flow and mass cytometry data sets".Nat Rev Immunol. 2017 Dec 22;18(1):78. doi: 10.1038/nri.2017.151. Nat Rev Immunol. 2017. PMID: 29269765 No abstract available.
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Science not art: statistically sound methods for identifying subsets in multi-dimensional flow and mass cytometry data sets.Nat Rev Immunol. 2017 Dec 22;18(1):77. doi: 10.1038/nri.2017.150. Nat Rev Immunol. 2017. PMID: 29269766 No abstract available.
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