1.Real-World Application of Artificial Intelligence for Detecting Pathologic Gastric Atypia and Neoplastic Lesions
Young Hoon CHANG ; Cheol Min SHIN ; Hae Dong LEE ; Jinbae PARK ; Jiwoon JEON ; Soo-Jeong CHO ; Seung Joo KANG ; Jae-Yong CHUNG ; Yu Kyung JUN ; Yonghoon CHOI ; Hyuk YOON ; Young Soo PARK ; Nayoung KIM ; Dong Ho LEE
Journal of Gastric Cancer 2024;24(3):327-340
		                        		
		                        			 Purpose:
		                        			Results of initial endoscopic biopsy of gastric lesions often differ from those of the final pathological diagnosis. We evaluated whether an artificial intelligence-based gastric lesion detection and diagnostic system, ENdoscopy as AI-powered Device Computer Aided Diagnosis for Gastroscopy (ENAD CAD-G), could reduce this discrepancy. 
		                        		
		                        			Materials and Methods:
		                        			We retrospectively collected 24,948 endoscopic images of early gastric cancers (EGCs), dysplasia, and benign lesions from 9,892 patients who underwent esophagogastroduodenoscopy between 2011 and 2021. The diagnostic performance of ENAD CAD-G was evaluated using the following real-world datasets: patients referred from community clinics with initial biopsy results of atypia (n=154), participants who underwent endoscopic resection for neoplasms (Internal video set, n=140), and participants who underwent endoscopy for screening or suspicion of gastric neoplasm referred from community clinics (External video set, n=296). 
		                        		
		                        			Results:
		                        			ENAD CAD-G classified the referred gastric lesions of atypia into EGC (accuracy, 82.47%; 95% confidence interval [CI], 76.46%–88.47%), dysplasia (88.31%; 83.24%– 93.39%), and benign lesions (83.12%; 77.20%–89.03%). In the Internal video set, ENAD CAD-G identified dysplasia and EGC with diagnostic accuracies of 88.57% (95% CI, 83.30%– 93.84%) and 91.43% (86.79%–96.07%), respectively, compared with an accuracy of 60.71% (52.62%–68.80%) for the initial biopsy results (P<0.001). In the External video set, ENAD CAD-G classified EGC, dysplasia, and benign lesions with diagnostic accuracies of 87.50% (83.73%–91.27%), 90.54% (87.21%–93.87%), and 88.85% (85.27%–92.44%), respectively. 
		                        		
		                        			Conclusions
		                        			ENAD CAD-G is superior to initial biopsy for the detection and diagnosis of gastric lesions that require endoscopic resection. ENAD CAD-G can assist community endoscopists in identifying gastric lesions that require endoscopic resection. 
		                        		
		                        		
		                        		
		                        	
2.Erratum: Real-World Application of Artificial Intelligence for Detecting Pathologic Gastric Atypia and Neoplastic Lesions
Young Hoon CHANG ; Cheol Min SHIN ; Hae Dong LEE ; Jinbae PARK ; Jiwoon JEON ; Soo-Jeong CHO ; Seung Joo KANG ; Jae-Yong CHUNG ; Yu Kyung JUN ; Yonghoon CHOI ; Hyuk YOON ; Young Soo PARK ; Nayoung KIM ; Dong Ho LEE
Journal of Gastric Cancer 2024;24(4):480-
		                        		
		                        		
		                        		
		                        	
            
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