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iGATE analysis improves the interpretability of single-cell immune landscape of influenza infection
Brett D. Hill, Andrew J. Zak, Sanjeev Raja, Luke F. Bugada, Syed M. Rizvi, Saiful B. Roslan, Hong Nhi Nguyen, Judy Chen, Hui Jiang, Akira Ono, Daniel R. Goldstein, Fei Wen
Brett D. Hill, Andrew J. Zak, Sanjeev Raja, Luke F. Bugada, Syed M. Rizvi, Saiful B. Roslan, Hong Nhi Nguyen, Judy Chen, Hui Jiang, Akira Ono, Daniel R. Goldstein, Fei Wen
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Research Article Immunology Virology

iGATE analysis improves the interpretability of single-cell immune landscape of influenza infection

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Abstract

Influenza poses a persistent health burden worldwide. To design equitable vaccines effective across all demographics, it is essential to better understand how host factors such as genetic background and aging affect the single-cell immune landscape of influenza infection. Cytometry by time-of-flight (CyTOF) represents a promising technique in this pursuit, but interpreting its large, high-dimensional data remains difficult. We have developed a new analytical approach, in silico gating annotating training elucidating (iGATE), based on probabilistic support vector machine classification. By rapidly and accurately “gating” tens of millions of cells in silico into user-defined types, iGATE enabled us to track 25 canonical immune cell types in mouse lung over the course of influenza infection. Applying iGATE to study effects of host genetic background, we show that the lower survival of C57BL/6 mice compared with BALB/c was associated with a more rapid accumulation of inflammatory cell types and decreased IL-10 expression. Furthermore, we demonstrate that the most prominent effect of aging is a defective T cell response, reducing survival of aged mice. Finally, iGATE reveals that the 25 canonical immune cell types exhibited differential influenza infection susceptibility and replication permissiveness in vivo, but neither property varied with host genotype or aging. The software is available at https://github.com/UmichWenLab/iGATE.

Authors

Brett D. Hill, Andrew J. Zak, Sanjeev Raja, Luke F. Bugada, Syed M. Rizvi, Saiful B. Roslan, Hong Nhi Nguyen, Judy Chen, Hui Jiang, Akira Ono, Daniel R. Goldstein, Fei Wen

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Figure 6

Effect of genotype on immune cell makeup in response to influenza virus infection.

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Effect of genotype on immune cell makeup in response to influenza virus ...
(A) Volcano plot indicates the fold difference in cell type frequency between C57Y and BalbY mice treated with PBS (n = 10). Accumulation scores of C57Y and BalbY mice at (B) 3DPI and at (C) 6DPI. C57Y data in B and C are also shown in Figure 2E. Accumulation scores were calculated as the mean fold change in absolute cell counts for each cell type 3DPI or 6DPI compared with PBS. Cell subtypes are ordered based on C57Y ranking. Significantly different subsets are indicated in red. Data represent mean ± SEM, n = 10. Statistical comparisons were computed by 2-sided Student’s t test with FDR = 10%.

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