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Human bone marrow assessment by single-cell RNA sequencing, mass cytometry, and flow cytometry
Karolyn A. Oetjen, Katherine E. Lindblad, Meghali Goswami, Gege Gui, Pradeep K. Dagur, Catherine Lai, Laura W. Dillon, J. Philip McCoy, Christopher S. Hourigan
Karolyn A. Oetjen, Katherine E. Lindblad, Meghali Goswami, Gege Gui, Pradeep K. Dagur, Catherine Lai, Laura W. Dillon, J. Philip McCoy, Christopher S. Hourigan
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Research Article Hematology Immunology

Human bone marrow assessment by single-cell RNA sequencing, mass cytometry, and flow cytometry

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Abstract

New techniques for single-cell analysis have led to insights into hematopoiesis and the immune system, but the ability of these techniques to cross-validate and reproducibly identify the biological variation in diverse human samples is currently unproven. We therefore performed a comprehensive assessment of human bone marrow cells using both single-cell RNA sequencing and multiparameter flow cytometry from 20 healthy adult human donors across a broad age range. These data characterize variation between healthy donors as well as age-associated changes in cell population frequencies. Direct comparison of techniques revealed discrepancy in the quantification of T lymphocyte and natural killer cell populations. Orthogonal validation of immunophenotyping using mass cytometry demonstrated a strong correlation with flow cytometry. Technical replicates using single-cell RNA sequencing matched robustly, while biological replicates showed variation. Given the increasing use of single-cell technologies in translational research, this resource serves as an important reference data set and highlights opportunities for further refinement.

Authors

Karolyn A. Oetjen, Katherine E. Lindblad, Meghali Goswami, Gege Gui, Pradeep K. Dagur, Catherine Lai, Laura W. Dillon, J. Philip McCoy, Christopher S. Hourigan

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Figure 3

Comparison of single-cell RNA sequencing, mass cytometry, and flow cytometry assessment of T lymphocyte frequencies in human bone marrow.

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Comparison of single-cell RNA sequencing, mass cytometry, and flow cytom...
(A) Mass cytometry for phenotyping of T cell populations visualized using viSNE analysis with expression of key markers shown. (B) Comparison of cell frequencies for each donor determined by mass cytometry (CyTOF) and flow cytometry. CM: central memory cells; EM: effector memory cells; TEMRA: terminally differentiated effector memory T cells; TE: effector T cells; DNT: double-negative T cells; DPT, double-positive T cells. (C) T cell frequencies for cell populations identified by mass cytometry, flow cytometry, and scRNA-Seq. Each dot represents a value from 1 sample. The thick line within each box represents median value. Box spans first to third quartile (IQR). Whiskers extend to the largest or smallest value no farther than 1.5 IQRs from the box. (D) Individual sample comparisons by scatter plot for each cell population. Each dot represents the cell subset frequency from 1 sample (n = 8). All population comparisons are shown in the background in gray.

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