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																		 Connection
 
																		 Lu Huang to Disease Models, Animal  
																		
																	 
																		This is a "connection" page, showing publications Lu Huang has written about Disease Models, Animal.   
																		
																	 
																			
																					
	
						
				
		
			
			
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					|  | Connection Strength |  |  
					|  |   |  |  
					|  | 0.343 |  |  |  |  
		
		
			
				Andrews JT, Zhang Z, Prasad GVRK, Huey F, Nazarova EV, Wang J, Ranaraja A, Weinkopff T, Li LX, Mu S, Birrer MJ, Huang SC, Zhang N, Arg?ello RJ, Philips JA, Mattila JT, Huang L. Metabolically active neutrophils represent a permissive niche for Mycobacterium tuberculosis. Mucosal Immunol. 2024 Oct; 17(5):825-842.	
				
				
					Score: 0.154
				
				Huang L, Beiting DP, Gebreselassie NG, Gagliardo LF, Ruyechan MC, Lee NA, Lee JJ, Appleton JA. Eosinophils and IL-4 Support Nematode Growth Coincident with an Innate Response to Tissue Injury. PLoS Pathog. 2015 Dec; 11(12):e1005347.	
				
				
					Score: 0.086
				
				Dai L, Choudhary A, Fan J, Huang L, Lin Z, Qin Z. Identification of RP-54745, an IL-1 Inhibitor Displaying Anticancer Activities for KSHV-Related Primary Effusion Lymphoma. J Med Virol. 2025 Feb; 97(2):e70200.	
				
				
					Score: 0.040
				
				Benson LN, Liu Y, Wang X, Xiong Y, Rhee SW, Guo Y, Deck KS, Mora CJ, Li LX, Huang L, Andrews JT, Qin Z, Hoover RS, Ko B, Williams RM, Heller DA, Jaimes EA, Mu S. The IFN?-PDL1 Pathway Enhances CD8T-DCT Interaction to Promote Hypertension. Circ Res. 2022 05 13; 130(10):1550-1564.	
				
				
					Score: 0.033
				
				Pisu D, Huang L, Rin Lee BN, Grenier JK, Russell DG. Dual RNA-Sequencing of Mycobacterium tuberculosis-Infected Cells from a Murine Infection Model. STAR Protoc. 2020 12 18; 1(3):100123.	
				
				
					Score: 0.030
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																					              Connection Strength             
  The connection strength for concepts is the sum of the scores for each matching publication.
 Publication scores are based on many factors, including how long ago they were written and whether the person is a first or senior author.
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