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arxiv: 2206.08336 · v2 · pith:QIBP5FYBnew · submitted 2022-06-16 · 🧬 q-bio.QM · cs.LG

Constrained Submodular Optimization for Vaccine Design

classification 🧬 q-bio.QM cs.LG
keywords vaccinesdesigndesigningdesignsframeworkimmunelearningmachine
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Advances in machine learning have enabled the prediction of immune system responses to prophylactic and therapeutic vaccines. However, the engineering task of designing vaccines remains a challenge. In particular, the genetic variability of the human immune system makes it difficult to design peptide vaccines that provide widespread immunity in vaccinated populations. We introduce a framework for evaluating and designing peptide vaccines that uses probabilistic machine learning models, and demonstrate its ability to produce designs for a SARS-CoV-2 vaccine that outperform previous designs. We provide a theoretical analysis of the approximability, scalability, and complexity of our framework.

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