2022
DOI: 10.3390/cells11162485
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Integration of Human Protein Sequence and Protein-Protein Interaction Data by Graph Autoencoder to Identify Novel Protein-Abnormal Phenotype Associations

Abstract: Understanding gene functions and their associated abnormal phenotypes is crucial in the prevention, diagnosis and treatment against diseases. The Human Phenotype Ontology (HPO) is a standardized vocabulary for describing the phenotype abnormalities associated with human diseases. However, the current HPO annotations are far from completion, and only a small fraction of human protein-coding genes has HPO annotations. Thus, it is necessary to predict protein-phenotype associations using computational methods. Pr… Show more

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Cited by 6 publications
(2 citation statements)
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“…Several studies have applied representation learning and autoencoders for auxiliary PPI prediction tasks. Liu et al [ 72 ] designed GraphPheno, a semi-supervised method based on graph autoencoders, for predicting relationships between human proteins and abnormal phenotypes. Nourani et al [ 73 ] presented TripletProt, a deep representation learning approach for proteins, based on Siamese neural networks.…”
Section: Representation Learning and Autoencoder For Protein–protein ...mentioning
confidence: 99%
“…Several studies have applied representation learning and autoencoders for auxiliary PPI prediction tasks. Liu et al [ 72 ] designed GraphPheno, a semi-supervised method based on graph autoencoders, for predicting relationships between human proteins and abnormal phenotypes. Nourani et al [ 73 ] presented TripletProt, a deep representation learning approach for proteins, based on Siamese neural networks.…”
Section: Representation Learning and Autoencoder For Protein–protein ...mentioning
confidence: 99%
“…Complex network in the real world can be abstracted in the form of graphs [1] , such as social networks, transportation networks and biological protein structure networks [2] , etc. Community is an important substructure on the graph, which reflects the internal similarity between nodes on the graph.…”
Section: Introductionmentioning
confidence: 99%