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Usage Information

Modeling of ACE2 and antibodies bound to SARS-CoV-2 provides insights into infectivity and immune evasion
Joseph H. Lubin, Christopher Markosian, D. Balamurugan, Minh T. Ma, Chih-Hsiung Chen, Dongfang Liu, Renata Pasqualini, Wadih Arap, Stephen K. Burley, Sagar D. Khare
Joseph H. Lubin, Christopher Markosian, D. Balamurugan, Minh T. Ma, Chih-Hsiung Chen, Dongfang Liu, Renata Pasqualini, Wadih Arap, Stephen K. Burley, Sagar D. Khare
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Research Article COVID-19

Modeling of ACE2 and antibodies bound to SARS-CoV-2 provides insights into infectivity and immune evasion

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Abstract

Given the COVID-19 pandemic, there is interest in understanding ligand-receptor features and targeted antibody-binding attributes against emerging SARS-CoV-2 variants. Here, we developed a large-scale structure-based pipeline for analysis of protein-protein interactions regulating SARS-CoV-2 immune evasion. First, we generated computed structural models of the Spike protein of 3 SARS-CoV-2 variants (B.1.1.529, BA.2.12.1, and BA.5) bound either to a native receptor (ACE2) or to a large panel of targeted ligands (n = 282), which included neutralizing or therapeutic monoclonal antibodies. Moreover, by using the Barnes classification, we noted an overall loss of interfacial interactions (with gain of new interactions in certain cases) at the receptor-binding domain (RBD) mediated by substituted residues for neutralizing complexes in classes 1 and 2, whereas less destabilization was observed for classes 3 and 4. Finally, an experimental validation of predicted weakened therapeutic antibody binding was performed in a cell-based assay. Compared with the original Omicron variant (B.1.1.529), derivative variants featured progressive destabilization of antibody-RBD interfaces mediated by a larger set of substituted residues, thereby providing a molecular basis for immune evasion. This approach and findings provide a framework for rapidly and efficiently generating structural models for SARS-CoV-2 variants bound to ligands of mechanistic and therapeutic value.

Authors

Joseph H. Lubin, Christopher Markosian, D. Balamurugan, Minh T. Ma, Chih-Hsiung Chen, Dongfang Liu, Renata Pasqualini, Wadih Arap, Stephen K. Burley, Sagar D. Khare

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Usage data is cumulative from December 2024 through December 2025.

Usage JCI PMC
Text version 554 114
PDF 154 8
Figure 245 0
Table 65 0
Supplemental data 93 0
Citation downloads 86 0
Totals 1,197 122
Total Views 1,319

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