A logistic regression model for prediction of glioma grading based on radiomics.
	    		
		   		
		   			
		   		
	    	
    	 
    	10.11817/j.issn.1672-7347.2021.200074
   		
        
        	
        	
        	
        		- Author:
	        		
		        		
		        		
			        		Xianting SUN
			        		
			        		
			        		
			        			1
			        			,
			        		
			        			2
			        			,
			        		
			        			3
			        			
			        		
			        		
			        		
			        		
			        		;
		        		
		        		
		        		
			        		Weihua LIAO
			        		
			        		
			        		
			        			1
			        			
			        		
			        		
			        		
			        		
			        		;
		        		
		        		
		        		
			        		Dong CAO
			        		
			        		
			        		
			        			1
			        			
			        		
			        		
			        		
			        		
			        		;
		        		
		        		
		        		
			        		Yuelong ZHAO
			        		
			        		
			        		
			        			4
			        			
			        		
			        		
			        		
			        		
			        		;
		        		
		        		
		        		
			        		Gaofeng ZHOU
			        		
			        		
			        		
			        			1
			        			
			        		
			        		
			        		
			        		
			        		;
		        		
		        		
		        		
			        		Dongcui WANG
			        		
			        		
			        		
			        			1
			        			
			        		
			        		
			        		
			        		
			        		;
		        		
		        		
		        		
			        		Yitao MAO
			        		
			        		
			        		
			        			1
			        			,
			        		
			        			5
			        			
			        		
			        		
			        		
			        		
			        		
		        		
		        		
		        		
		        		
		        			
			        		
			        		Author Information
			        		
		        		
		        		
			        		
			        		
			        			1. Department of Radiology, Xiangya Hospital, Central South University, Changsha
			        		
			        			2. sunxianting2009@
			        		
			        			3. com.
			        		
			        			4. School of Computer Science and Engineering, South China University of Technology, Guangzhou 510640, China.
			        		
			        			5. maoyt@csu.edu.cn.
			        		
		        		
	        		
        		 
        	
        	
        	
        		- Publication Type:Journal Article
 
        	
        	
        		- Keywords:
        			
	        			
	        				
	        				
			        		
				        		glioma;
			        		
			        		
			        		
				        		grading;
			        		
			        		
			        		
				        		least absolute shrinkage and selection operator;
			        		
			        		
			        		
				        		logistic regression;
			        		
			        		
			        		
				        		radiomics
			        		
			        		
	        			
        			
        		
 
        	
            
            	- MeSH:
            	
	        			
	        				
	        				
				        		
					        		Brain Neoplasms/diagnostic imaging*;
				        		
			        		
				        		
					        		Glioma/diagnostic imaging*;
				        		
			        		
				        		
					        		Humans;
				        		
			        		
				        		
					        		Logistic Models;
				        		
			        		
				        		
					        		Magnetic Resonance Imaging;
				        		
			        		
				        		
					        		ROC Curve;
				        		
			        		
				        		
					        		Retrospective Studies
				        		
			        		
	        			
	        			
            	
            	
 
            
            
            	- From:
	            		
	            			Journal of Central South University(Medical Sciences)
	            		
	            		 2021;46(4):385-392
	            	
            	
 
            
            
            	- CountryChina
 
            
            
            	- Language:English
 
            
            
            	- 
		        	Abstract:
			       	
			       		
				        
				        	OBJECTIVES:Glioma is the most common intracranial primary tumor in central nervous system. Glioma grading possesses important guiding significance for the selection of clinical treatment and follow-up plan, and the assessment of prognosis. This study aims to explore the feasibility of logistic regression model based on radiomics to predict glioma grading.
				        	
				        
				        	METHODS:Retrospective analysis was performed on 146 glioma patients with confirmed pathological diagnosis from January, 2012 to December, 2018. A total of 41 radiomics features were extracted from contrast-enhanced T
				        	
				        
				        	RESULTS:A total of 5 imaging features selected by LASSO were used to establish a logistic regression model for predicting glioma grading. The model showed good discrimination with AUC value of 0.919. Hosmer-Lemeshow test showed no significant difference between the calibration curve and the ideal curve (
				        	
				        
				        	CONCLUSIONS:The logistic regression model using radiomics exhibits a relatively high accuracy for predicting glioma grading, which may serve as a complementary tool for preoperative prediction of giloma grading.