Rapid response to fast viral evolution using AlphaFold 3-assisted topological deep learning
JunJie Wee, Guo-Wei Wei

TL;DR
This paper introduces an AlphaFold 3-assisted topological deep learning method for rapid prediction of viral mutations' effects, improving response speed to fast-evolving viruses like SARS-CoV-2.
Contribution
It develops a novel multi-task topological Laplacian approach combined with AlphaFold 3 to predict mutation impacts on protein interactions without extensive experimental data.
Findings
Maintains high prediction accuracy with minimal performance decrease.
Successfully predicts BFE changes for SARS-CoV-2 variants.
Demonstrates robustness and adaptability to new viral mutations.
Abstract
The fast evolution of SARS-CoV-2 and other infectious viruses poses a grand challenge to the rapid response in terms of viral tracking, diagnostics, and design and manufacture of monoclonal antibodies (mAbs) and vaccines, which are both time-consuming and costly. This underscores the need for efficient computational approaches. Recent advancements, like topological deep learning (TDL), have introduced powerful tools for forecasting emerging dominant variants, yet they require deep mutational scanning (DMS) of viral surface proteins and associated three-dimensional (3D) protein-protein interaction (PPI) complex structures. We propose an AlphaFold 3 (AF3)-assisted multi-task topological Laplacian (MT-TopLap) strategy to address this need. MT-TopLap combines deep learning with topological data analysis (TDA) models, such as persistent Laplacians (PL) to extract detailed topological and…
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Taxonomy
MethodsAlphaFold
