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Your search keyword '"Graph Attention Network"' showing total 18 results

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18 results on '"Graph Attention Network"'

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1. scMGATGRN: a multiview graph attention network–based method for inferring gene regulatory networks from single-cell transcriptomic data.

2. Integrating spatial transcriptomics and bulk RNA-seq: predicting gene expression with enhanced resolution through graph attention networks.

3. MUSCLE: multi-view and multi-scale attentional feature fusion for microRNA–disease associations prediction.

4. Advancing single-cell RNA-seq data analysis through the fusion of multi-layer perceptron and graph neural network.

5. HTCL-DDI: a hierarchical triple-view contrastive learning framework for drug–drug interaction prediction.

6. Orchestrating information across tissues via a novel multitask GAT framework to improve quantitative gene regulation relation modeling for survival analysis.

7. MHTAN-DTI: Metapath-based hierarchical transformer and attention network for drug–target interaction prediction.

8. Inferring disease-associated circRNAs by multi-source aggregation based on heterogeneous graph neural network.

9. Multi-view contrastive heterogeneous graph attention network for lncRNA–disease association prediction.

10. SPRDA: a link prediction approach based on the structural perturbation to infer disease-associated Piwi-interacting RNAs.

11. GraphCDA: a hybrid graph representation learning framework based on GCN and GAT for predicting disease-associated circRNAs.

12. Attention-wise masked graph contrastive learning for predicting molecular property.

13. Prediction of biomarker–disease associations based on graph attention network and text representation.

14. deep learning method for predicting metabolite–disease associations via graph neural network.

15. DTI-HETA: prediction of drug–target interactions based on GCN and GAT on heterogeneous graph.

16. DSGAT: predicting frequencies of drug side effects by graph attention networks.

17. PHPGAT: predicting phage hosts based on multimodal heterogeneous knowledge graph with graph attention network.

18. Drug–target interaction predication via multi-channel graph neural networks.

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