Heterogeneous graph construction and node representation learning method of Treatise on Febrile Diseases based on graph convolutional network
	    		
		   		
		   			
		   		
	    	
    	 
    	10.1016/j.dcmed.2022.12.007
   		
        
        	
        	
        	
        		- Author:
	        		
		        		
		        		
			        		Junfeng YAN
			        		
			        		
			        		
			        			1
			        			
			        		
			        		
			        		
			        		
			        		;
		        		
		        		
		        		
			        		Zhihua WEN
			        		
			        		
			        		
			        			2
			        			
			        		
			        		
			        		
			        		
			        		;
		        		
		        		
		        		
			        		Beiji ZOU
			        		
			        		
			        		
			        			3
			        			
			        		
			        		
			        		
			        		
			        		
		        		
		        		
		        		
		        		
		        			
			        		
			        		Author Information
			        		
		        		
		        		
			        		
			        		
			        			1. School of Informatics, Hunan University of Chinese Medicine, Changsha, Hunan 410208, China
			        		
			        			2. School of Informatics, Hunan University of Chinese Medicine, Changsha, Hunan 410208, China;School of Computer Science and Engineering, Hunan University of Technology, Zhuzhou, Hunan 412008, China
			        		
			        			3. School of Informatics, Hunan University of Chinese Medicine, Changsha, Hunan 410208, China;School of Computer Science and Engineering, Central South University, Changsha, Hunan 410083, China
			        		
		        		
	        		
        		 
        	
        	
        	
        		- Publication Type:Journal Article
 
        	
        	
        		- Keywords:
        			
	        			
	        				
	        				
			        		
				        		Graph convolutional network (GCN);
			        		
			        		
			        		
				        		Heterogeneous graph;
			        		
			        		
			        		
				        		Treatise on Febrile Diseases(Shang Han Lun,《伤寒论》);
			        		
			        		
			        		
				        		node representations on heterogeneous graph;
			        		
			        		
			        		
				        		node representation learning
			        		
			        		
	        			
        			
        		
 
        	
            
            
            	- From:
	            		
	            			Digital Chinese Medicine
	            		
	            		 2022;5(4):419-428
	            	
            	
 
            
            
            	- CountryChina
 
            
            
            	- Language:English
 
            
            
            	- 
		        	Abstract:
			       	
			       		
				        
				        	Objective:To construct symptom-formula-herb heterogeneous graphs structured Treatise on Febrile Diseases (Shang Han Lun,《伤寒论》) dataset and explore an optimal learning method represented with node attributes based on graph convolutional network (GCN).
				        	
				        
				        	Methods:Clauses that contain symptoms, formulas, and herbs were abstracted from Treatise on Febrile Diseases to construct symptom-formula-herb heterogeneous graphs, which were used to propose a node representation learning method based on GCN − the Traditional Chinese Medicine Graph Convolution Network (TCM-GCN). The symptom-formula, symptom-herb, and formula-herb heterogeneous graphs were processed with the TCM-GCN to realize high-order propagating message passing and neighbor aggregation to obtain new node representation attributes, and thus acquiring the nodes’ sum-aggregations of symptoms, formulas, and herbs to lay a foundation for the downstream tasks of the prediction models.
				        	
				        
				        	Results:Comparisons among the node representations with multi-hot encoding, non-fusion encoding, and fusion encoding showed that the Precision@10, Recall@10, and F1-score@10 of the fusion encoding were 9.77%, 6.65%, and 8.30%, respectively, higher than those of the non-fusion encoding in the prediction studies of the model.
				        	
				        
				        	Conclusion:Node representations by fusion encoding achieved comparatively ideal results, indicating the TCM-GCN is effective in realizing node-level representations of heterogeneous graph structured Treatise on Febrile Diseases dataset and is able to elevate the performance of the downstream tasks of the diagnosis model.
				        	
				        
				    
			     
	        
	        
	        	- Full text:yanjunfeng.pdf