JunJie Wee

Tagline:Visiting Assistant Professor in Mathematics at Michigan State University

East Lansing, MI, USA

personal photo of JunJie Wee

About

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Research Interests

  • Mathematical Foundations of Data Science (Commutative Algebra, Topological data analysis, Spectral data analysis, Geometric data analysis)
  • Mathematical AI in Molecular Sciences (Drug design, Protein-protein interactions, Protein engineering, Materials discovery)
  • Mathematical Virology (Virus evolution, Cross-species transmission, Deep mutational scanning)
  • AI-Driven Therapeutic Discovery
  • Complex Analysis & Operator Theory

Publications

  • CAP: Commutative Algebra Prediction of Protein-Nucleic Acid Binding Affinities

    Journal ArticlePublisher:arXiv preprint arXiv:2510.22130Date:2025
    Authors:
    Mushal ZiaFaisal SuwayyidYuta HozumiJunJie WeeHongsong FengGuo-Wei Wei
  • CAKL: Commutative algebra k-mer learning of genomics

    Journal ArticlePublisher:arXiv preprint arXiv:2508.09406Date:2025
    Authors:
    Faisal SuwayyidYuta HozumiHongsong FengMushal ZiaJunJie WeeGuo-Wei Wei
  • Drug resistance predictions based on a directed flag transformer

    Journal ArticlePublisher:Advanced ScienceDate:2025
    Authors:
    Dong ChenGengzhuo LiuHongyan DuBenjamin JonesJunjie WeeRui WangJiahui ChenJana ShenGuo-Wei Wei
  • Rapid response to fast viral evolution using AlphaFold 3-assisted topological deep learning

    Journal ArticlePublisher:Virus EvolutionDate:2025
    Authors:
    JunJie WeeGuo-Wei Wei
    Description:

    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 TDA models, such as persistent Laplacians (PL) to extract detailed topological and geometric characteristics of PPIs, thereby enhancing the prediction of DMS and binding free energy (BFE) changes upon virus mutations. Validation with four experimental DMS datasets of SARS-CoV-2 spike receptor-binding domain (RBD) and the human angiotensin-converting enzyme-2 (ACE2) complexes indicates that our AF3-assisted MT-TopLap strategy maintains robust performance, with only an average 1.1% decrease in Pearson correlation coefficients (PCC) and an average 9.3% increase in root mean square errors (RMSE), compared with the use of experimental structures. Additionally, AF3-assisted MT-TopLap achieved a PCC of 0.81 when tested with a SARS-CoV-2 HK.3 variant DMS dataset, confirming its capability to accurately predict BFE changes and adapt to new experimental data, thereby showcasing its potential for rapid and effective response to fast viral evolution.

  • Topological machine learning for protein-nucleic acid binding affinity changes upon mutation

    Journal ArticlePublisher:Machine Learning: Science and TechnologyDate:2025
    Authors:
    Xiang LiuJunJie WeeGuo-Wei Wei
  • Commutative algebra neural network reveals genetic origins of diseases

    Journal ArticlePublisher:arXiv preprint arXiv:2509.26566Date:2025
    Authors:
    JunJie WeeFaisal SuwayyidMushal ZiaHongsong FengYuta HozumiGuo-Wei Wei
  • Topology-enhanced machine learning model (Top-ML) for anticancer peptide prediction

    Journal ArticlePublisher:Journal of Chemical Information and ModelingDate:2025
    Authors:
    Joshua Zhi En TanJunJie WeeXue GongKelin Xia
  • A review of topological data analysis and topological deep learning in molecular sciences

    Journal ArticlePublisher:Journal of Chemical Information and ModelingDate:2025
    Authors:
    JunJie WeeJian Jiang
  • A cohomology-based Gromov–Hausdorff metric approach for quantifying molecular similarity

    Journal ArticlePublisher:Scientific ReportsDate:2025
    Authors:
    JunJie WeeXue GongWilderich TuschmannKelin Xia
  • CAML: Commutative Algebra Machine Learning─ A Case Study on Protein–Ligand Binding Affinity Prediction

    Journal ArticlePublisher:Journal of Chemical Information and ModelingDate:2025
    Authors:
    Hongsong FengFaisal SuwayyidMushal ZiaJunJie WeeYuta HozumiChun-Long ChenGuo-Wei Wei