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Enhancing the Protein Tertiary Structure Prediction by Multiple Sequence Alignment Generation

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arxiv 2306.01824 v1 pith:3RH5ODIE submitted 2023-06-02 q-bio.QM cs.CEcs.LGq-bio.BM

Enhancing the Protein Tertiary Structure Prediction by Multiple Sequence Alignment Generation

classification q-bio.QM cs.CEcs.LGq-bio.BM
keywords proteinsequencesmsaspredictionstructureaccuracyalignmentenhancing
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The field of protein folding research has been greatly advanced by deep learning methods, with AlphaFold2 (AF2) demonstrating exceptional performance and atomic-level precision. As co-evolution is integral to protein structure prediction, AF2's accuracy is significantly influenced by the depth of multiple sequence alignment (MSA), which requires extensive exploration of a large protein database for similar sequences. However, not all protein sequences possess abundant homologous families, and consequently, AF2's performance can degrade on such queries, at times failing to produce meaningful results. To address this, we introduce a novel generative language model, MSA-Augmenter, which leverages protein-specific attention mechanisms and large-scale MSAs to generate useful, novel protein sequences not currently found in databases. These sequences supplement shallow MSAs, enhancing the accuracy of structural property predictions. Our experiments on CASP14 demonstrate that MSA-Augmenter can generate de novo sequences that retain co-evolutionary information from inferior MSAs, thereby improving protein structure prediction quality on top of strong AF2.

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