Semi-Covariance Coefficient Analysis of Spike Proteins from SARS-CoV-2 and Its Variants Omicron, BA.5, EG.5, and JN.1 for Viral Infectivity, Virulence and Immune Escape
Botao Zhu, Huancheng Lin, Jun Steed Huang, Wandong Zhang

TL;DR
This paper uses semi-covariance analysis to study how SARS-CoV-2 spike proteins evolve in terms of infectivity, virulence, and immune escape.
Contribution
It introduces semi-covariance coefficient analysis to predict viral traits based on spike protein charge patterns.
Findings
Charge span values correlate with viral infectivity.
Charge density estimates viral virulence.
Both metrics relate to immune escape capability.
Abstract
Semi-covariance has attracted significant attention in recent years and is increasingly employed to elucidate statistical phenomena exhibiting fluctuations, such as the similarity or difference in charge patterns of spike proteins among coronaviruses. In this study, by examining values above and below the average/mean based on the positive and negative charge patterns of amino acid residues in the spike proteins of SARS-CoV-2 and its current circulating variants, the proposed methods offer profound insights into the nonlinear evolving trends in those viral spike proteins. Our study indicates that the charge span value can predict the infectivity of the virus and the charge density can estimate the virulence of the virus, and both predicated infectivity and virulence appear to be associated with the capability of viral immune escape. This semi-covariance coefficient analysis may be used…
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Taxonomy
TopicsFractal and DNA sequence analysis · Machine Learning in Bioinformatics · SARS-CoV-2 and COVID-19 Research
