Sequence-guided protein structure determination using graph convolutional and recurrent networks

2020 IEEE 20th International Conference on Bioinformatics and Bioengineering (BIBE)(2020)

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摘要
Single particle, cryogenic electron microscopy (cryoEM) experiments now routinely produce high-resolution data for large proteins and their complexes. Building an atomic model into a cryo-EM density map is challenging, particularly when no structure for the target protein is known a priori. Existing protocols for this type of task often rely on significant human intervention and can take hours to many days to produce an output. Here, we present a fully automated, template-free model building approach that is based entirely on neural networks. We use a graph convolutional network (GCN) to generate an embedding from a set of rotamer-based amino acid identities and candidate 3-dimensional Cα locations. Starting from this embedding, we use a bidirectional long short-term memory (LSTM) module to order and label the candidate identities and atomic locations consistent with the input protein sequence to obtain a structural model. Our approach paves the way for determining protein structures from cryo-EM densities at a fraction of the time of existing approaches and without the need for human intervention.
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关键词
Machine learning,Computational biology,Electron microscopy,Recurrent neural networks,Neural networks
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