Few Shot Protein Generation
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We present the MSA-to-protein transformer, a generative model of protein sequences conditioned on protein families represented by multiple sequence alignments (MSAs). Unlike existing approaches to learning generative models of protein families, the MSA-to-protein transformer conditions sequence generation directly on a learned encoding of the multiple sequence alignment, circumventing the need for fitting dedicated family models. By training on a large set of well-curated multiple sequence alignments in Pfam, our MSA-to-protein transformer generalizes well to protein families not observed during training and outperforms conventional family modeling approaches, especially when MSAs are small. Our generative approach accurately models epistasis and indels and allows for exact inference and efficient sampling unlike other approaches. We demonstrate the protein sequence modeling capabilities of our MSA-to-protein transformer and compare it with alternative sequence modeling approaches in comprehensive benchmark experiments.
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Cited by 2 Pith papers
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LineageFlow: Flow Matching for High-Fidelity Family-Aware Protein Sequence Generation
LineageFlow is a Dirichlet flow-matching model that generates family-aware protein sequences by starting from ancestral sequence reconstruction priors and using a rerouting intervention for guided sampling.
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LineageFlow: Flow Matching for High-Fidelity Family-Aware Protein Sequence Generation
LineageFlow generates family-aware protein sequences via flow matching from ancestral sequence reconstruction priors, achieving near-natural family validity and improved structural confidence with a rerouting techniqu...
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