Quantifying Ruggedness and Navigability in SARS-CoV-2 Antibody Binding Landscapes
ORAL
Abstract
Fitness landscapes provide a framework for studying how viral mutations affect protein-protein binding and potential escape routes, which impact vaccine design strategies. We used empirical binding affinity data and a biophysical fitness model to computationally quantify the ruggedness and navigability of viral fitness landscapes and protein-protein binding affinity landscapes. First, we established null models by simulating random fitness landscapes and computing the number of local maxima. Analysis of the SARS-CoV-2 spike protein's binding landscapes with the ACE receptor and four unique antibodies suggests that the spike-ACE2 binding affinity landscape is smooth compared to spike-antibody landscapes, which show higher ruggedness. We also extend beyond strict peaks to count near-maxima and minima, which allow a small number of escape paths in the landscape. Ongoing work examines concentration-dependent ruggedness. These findings highlight how protein-protein interactions shape evolutionary trajectories and potentially guide future vaccine design.
*This work was supported by award T32GM144273 from the National Institute of General Medical Sciences and a Hertz Foundation Fellowship (VM). The content is solely the responsibility of the authors and does not necessarily represent the official views of the National Institute of General Medical Sciences or the National Institutes of Health.
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Presenters
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Saadi El-Saadi
- Harvard University