Prediction of novel high-risk variants through co-occurrence analysis of mutation hotspots

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Title
Prediction of novel high-risk variants through co-occurrence analysis of mutation hotspots
Author(s)
Sungbo Hwang; K M Kim; S Kim; T Park; H M Yoo; D Park
Bibliographic Citation
Heliyon, vol. 11, pp. e43563-e43563
Publication Year
2025
Abstract
Various forms of S proteins of severe acute respiratory syndrome coronavirus 2 have given rise to high-risk variants capable of avoiding antibody immunity or increasing binding affinity with hACE2. We propose a statistical analysis method for predicting high-risk variants by analyzing co- occurrence of mutation hotspots using spike protein sequences. We identified S494P and V503I as high-risk variants. Interestingly, S494P was predicted to possess significantly increased binding affinity based on molecular docking and quantum mechanical energy calculations. In addition, we examined viral entry of high-risk variants using pseudotyped viruses (PV). Compared to PVs of spike Delta, PVs of spike Delta-S494P or spike Delta-V503I exhibited improved viral entrance in A549 cells. Our proposed analysis method can be used to predict novel high-risk variants and corresponding binding affinities.
ISSN
2405-8440
Publisher
Elsevier-Cell Press
Full Text Link
http://dx.doi.org/10.1016/j.heliyon.2025.e43563
Type
Article
Appears in Collections:
Division of A.I. & Biomedical Research > Orphan Disease Therapeutic Target Research Center > 1. Journal Articles
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