2019
DOI: 10.1101/786236
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Structure-Based Protein Function Prediction using Graph Convolutional Networks

Abstract: Recent massive increases in the number of sequences available in public databases challenges current experimental approaches to determining protein function. These methods are limited by both the large scale of these sequences databases and the diversity of protein functions. We present a deep learning Graph Convolutional Network (GCN) trained on sequence and structural data and evaluate it on~40k proteins with known structures and functions from the Protein Data Bank (PDB). Our GCN predicts functions more acc… Show more

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Cited by 114 publications
(199 citation statements)
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“…Our work continues upon two recent studies involving protein representation learning (Heinzinger et al, 2019) and its combination with contact maps applied in AFP (Gligorijevic et al, 2019). We confirm the power of the unsupervised ELMo embeddings in capturing relevant biological information about proteins (Heinzinger et al, 2019).…”
Section: Discussionsupporting
confidence: 78%
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“…Our work continues upon two recent studies involving protein representation learning (Heinzinger et al, 2019) and its combination with contact maps applied in AFP (Gligorijevic et al, 2019). We confirm the power of the unsupervised ELMo embeddings in capturing relevant biological information about proteins (Heinzinger et al, 2019).…”
Section: Discussionsupporting
confidence: 78%
“…Equation (1) describes the diffusion of information about each amino acid to the neighboring residues, where the neighborhood is defined by the graph. We tested the model proposed by (Gligorijevic et al, 2019) that has three convolutional layers (GCN3_{E,1h,SA}_CM, Fig. S2).…”
Section: Function Prediction Methodsmentioning
confidence: 99%
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