npj Systems Biology and Applications (Nov 2024)

A deep learning approach predicting the activity of COVID-19 therapeutics and vaccines against emerging variants

  • Robert P. Matson,
  • Isin Y. Comba,
  • Eli Silvert,
  • Michiel J. M. Niesen,
  • Karthik Murugadoss,
  • Dhruti Patwardhan,
  • Rohit Suratekar,
  • Elizabeth-Grace Goel,
  • Brittany J. Poelaert,
  • Kanny K. Wan,
  • Kyle R. Brimacombe,
  • AJ Venkatakrishnan,
  • Venky Soundararajan

DOI
https://doi.org/10.1038/s41540-024-00471-0
Journal volume & issue
Vol. 10, no. 1
pp. 1 – 10

Abstract

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Abstract Understanding which viral variants evade neutralization is crucial for improving antibody-based treatments, especially with rapidly evolving viruses like SARS-CoV-2. Yet, conventional assays are labor intensive and cannot capture the full spectrum of variants. We present a deep learning approach to predict changes in neutralizing antibody activity of COVID-19 therapeutics and vaccine-elicited sera/plasma against emerging viral variants. Our approach leverages data of 67,885 unique SARS-CoV-2 Spike sequences and 7,069 in vitro assays. The resulting model accurately predicted fold changes in neutralizing activity (R2 = 0.77) for a test set (N = 980) of data collected up to eight months after the training data. Next, the model was used to predict changes in activity of current therapeutic and vaccine-induced antibodies against emerging SARS-CoV-2 lineages. Consistent with other work, we found significantly reduced activity against newer XBB descendants, notably EG.5, FL.1.5.1, and XBB.1.16; primarily attributed to the F456L spike mutation.