Publication | Open Access
Identification of Cancer Driver Genes by Integrating Multiomics Data with Graph Neural Networks
14
Citations
44
References
2023
Year
EngineeringMachine LearningPathologyMultiomicsData ScienceBiological NetworkCancer Driver GenesBiostatisticsBiological Network VisualizationFramework GgraphsageDeep GraphGraph Neural NetworkOmicsPathway AnalysisDeep LearningMultiomics DataFunctional GenomicsBioinformaticsGraph Neural NetworksComputational BiologyCancer GenomicsRegulatory Network ModellingSystems BiologyMedicine
Cancer is a heterogeneous disease that is driven by the accumulation of both genetic and nongenetic alterations, so integrating multiomics data and extracting effective information from them is expected to be an effective way to predict cancer driver genes. In this paper, we first generate comprehensive instructive features for each gene from genomic, epigenomic, transcriptomic levels together with protein-protein interaction (PPI)-networks-derived attributes and then propose a novel semisupervised deep graph learning framework GGraphSAGE to predict cancer driver genes according to the impact of the alterations on a biological system. When applied to eight tumor types, experimental results suggest that GGraphSAGE outperforms several state-of-the-art computational methods for driver genes identification. Moreover, it broadens our current understanding of cancer driver genes from multiomics level and identifies driver genes specific to the tumor type rather than pan-cancer. We expect GGraphSAGE to open new avenues in precision medicine and even further predict drivers for other complex diseases.
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