| Literature DB >> 35172720 |
Harini Natarajan1, Shiwei Xu2, Andrew R Crowley1, Savannah E Butler1, Joshua A Weiner3, Evan M Bloch4, Kirsten Littlefield5, Sarah E Benner4, Ruchee Shrestha4, Olivia Ajayi4, Wendy Wieland-Alter6, David Sullivan5,7, Shmuel Shoham7, Thomas C Quinn7,8, Arturo Casadevall5,7, Andrew Pekosz5, Andrew D Redd7,8, Aaron A R Tobian4, Ruth I Connor6, Peter F Wright6, Margaret E Ackerman9,10,11.
Abstract
BACKGROUND: While antibodies can provide significant protection from SARS-CoV-2 infection and disease sequelae, the specific attributes of the humoral response that contribute to immunity are incompletely defined.Entities:
Keywords: Effector function; IgA; IgG; IgM; Neutralization; SARS-CoV-2
Year: 2022 PMID: 35172720 PMCID: PMC8851712 DOI: 10.1186/s12865-022-00480-w
Source DB: PubMed Journal: BMC Immunol ISSN: 1471-2172 Impact factor: 3.594
Fig. 1Biophysical and functional antibody responses among convalescent donors. A. Heatmap of filtered and hierarchically clustered SARS-CoV-2-specific Fc array features across disease severity and infection status in the JHMI cohort. Each row represents an individual subject, and subjects are grouped by disease status, as indicated by the vertical color bar. Each column represents an Fc array feature; horizontal color bars indicate each function or each Fv-specificity and Fc-characteristic tested. Responses are scaled and centered per feature and the range was truncated ± 3 SD. Higher responses are indicated in red and lower responses are indicated in blue. Missing data is indicated in light gray. B. Weighted network plots of correlative relationships (|r|> 0.5) among antibody functions (black) and CoV-2-specific antibody features. Fc array measurements are colored by Fc characteristic and Fv specificity is indicated in text label (R = RBD)
Fig. 2Multivariate linear regression modeling validation in test set. A. Comparison of mean-squared error between testing (JHMI) and validation (DHMC) data sets for each functional assay across cross-validation replicates. Dotted line indicates median performance on permuted data in the setting of repeated cross-validation. B. Correlation between predicted and observed responses in the discovery (JHMI, blue) and validation (DHMC, green) cohorts. Pearson correlation (Rp) and mean squared error (MSE) are reported in inset. Dotted line indicates x = y
Fig. 3Final predicted biophysical features and contributions in the multivariate linear regression modeling. A Network showing the identity, relative degree of correlation, and frequency with which features contribute to models in the setting of repeated cross-validation. B Coefficients of biophysical features to the final models predictive of each function. Antigen specificity (Fv) and Fc characteristics (Fc) are shown in color bars
Fig. 4Relationships between RBD-specific IgM, IgG, and neutralization and days post swab. A–C. Scatterplots of RBD-specific IgM (A), IgG (B), and neutralization AUC (C) versus days post swab. Spearman correlation coefficients (RS) and p values are reported in inset
Fig. 5Experimental validation of IgM-mediated neutralization. A. Median fluorescent intensity (MFI) levels of RBD-specific IgG, IgA, IgM observed pre- (filled circles) and post- (hollow squares) IgM depletion. Mean fold change in MFI across samples for each isotype is indicated below the figure. B. Neutralization titers pre- and post-IgM depletion. C. Comparison of RBD-specific Ig levels to neutralization titer. Statistical significance (two-tailed p value) of Spearman correlation coefficients reported in inset