cyCombine allows for robust integration of single-cell cytometry datasets within and across technologies

Christina B. Pedersen(Copenhagen University Hospital), Søren Helweg Dam(Technical University of Denmark), Mike Bogetofte Barnkob(University of Southern Denmark), Michael D. Leipold(Stanford University), Noelia Purroy(Dana-Farber Cancer Institute), Laura Z. Rassenti(University of California San Diego), Thomas J. Kipps(University of California San Diego), Jennifer P. Nguyen(Brigham and Women's Hospital), James A. Lederer(Brigham and Women's Hospital), Satyen H. Gohil(University College London Hospitals NHS Foundation Trust), Catherine J. Wu(Broad Institute), Lars Rønn Olsen(Technical University of Denmark)
Nature Communications
March 31, 2022
Cited by 124Open Access
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Abstract

Combining single-cell cytometry datasets increases the analytical flexibility and the statistical power of data analyses. However, in many cases the full potential of co-analyses is not reached due to technical variance between data from different experimental batches. Here, we present cyCombine, a method to robustly integrate cytometry data from different batches, experiments, or even different experimental techniques, such as CITE-seq, flow cytometry, and mass cytometry. We demonstrate that cyCombine maintains the biological variance and the structure of the data, while minimizing the technical variance between datasets. cyCombine does not require technical replicates across datasets, and computation time scales linearly with the number of cells, allowing for integration of massive datasets. Robust, accurate, and scalable integration of cytometry data enables integration of multiple datasets for primary data analyses and the validation of results using public datasets.


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