Subhajit Chaudhury, Sakyasingha Dasgupta, et al.
MLSP 2017
An unsolved challenge in the development of antigen-specific immunotherapies is determining the optimal antigens to target. Comprehension of antigen-major histocompatibility complex (MHC) binding is paramount toward achieving this goal. Here, we apply CASTELO, a combined machine learning-molecular dynamics (ML-MD) approach, to identify per-residue antigen binding contributions and then design novel antigens of increased MHC-II binding affinity for a type 1 diabetes-implicated system. We build upon a small-molecule lead optimization algorithm by training a convolutional variational autoencoder (CVAE) on MD trajectories of 48 different systems across four antigens and four HLA serotypes. We develop several new machine learning metrics including a structure-based anchor residue classification model as well as cluster comparison scores. ML-MD predictions agree well with experimental binding results and free energy perturbation-predicted binding affinities. Moreover, ML-MD metrics are independent of traditional MD stability metrics such as contact area and root-mean-square fluctuations (RMSF), which do not reflect binding affinity data. Our work supports the role of structure-based deep learning techniques in antigen-specific immunotherapy design.
Subhajit Chaudhury, Sakyasingha Dasgupta, et al.
MLSP 2017
Willem Van Der Maden, Evert Van Beek, et al.
DIS 2024
Zelun Tony Zhang, Nick Von Felten, et al.
CHI 2026
Marcelo Machado, João Marcello Bessa Rodrigues, et al.
ISWC 2024