Dynamicasome: a molecular dynamics-guided and AI-driven pathogenicity prediction catalogue for all genetic mutations
- URL: http://arxiv.org/abs/2509.19766v1
- Date: Tue, 23 Sep 2025 17:33:05 GMT
- Title: Dynamicasome: a molecular dynamics-guided and AI-driven pathogenicity prediction catalogue for all genetic mutations
- Authors: Naeyma N Islam, Mathew A Coban, Jessica M Fuller, Caleb Weber, Rohit Chitale, Benjamin Jussila, Trisha J. Brock, Cui Tao, Thomas R Caulfield,
- Abstract summary: We show that integrating detailed conformational data extracted from molecular dynamics simulations into advanced AI-based models increases their predictive power.<n>We carry out an exhaustive mutational analysis of the disease gene PMM2 and subject structural models of each variant to MDS.<n>Our best performing model, a neuronal networks model, also predicts the pathogenicity of several PMM2 mutations currently considered of unknown signi cance.
- Score: 1.5071448753819772
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Advances in genomic medicine accelerate the identi cation of mutations in disease-associated genes, but the pathogenicity of many mutations remains unknown, hindering their use in diagnostics and clinical decision-making. Predictive AI models are generated to combat this issue, but current tools display low accuracy when tested against functionally validated datasets. We show that integrating detailed conformational data extracted from molecular dynamics simulations (MDS) into advanced AI-based models increases their predictive power. We carry out an exhaustive mutational analysis of the disease gene PMM2 and subject structural models of each variant to MDS. AI models trained on this dataset outperform existing tools when predicting the known pathogenicity of mutations. Our best performing model, a neuronal networks model, also predicts the pathogenicity of several PMM2 mutations currently considered of unknown signi cance. We believe this model helps alleviate the burden of unknown variants in genomic medicine.
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