Abstract

IntroductionEndoscopy is an important tool for the diagnosis of early gastric cancer. Therefore, a combination of artificial intelligence and endoscopy has the ability to increase the speed and efficiency of early gastric cancer diagnosis. YOU ONLY LOOK ONCE (YOLO) is an advanced object detection depth neural network algorithm that has not been widely used in gastrointestinal image recognition.ObjectiveWe developed an artificial intelligence system herein referred to as “EGC-YOLO” for the rapid and accurate diagnosis of endoscopic images from early gastric cancer.MethodsMore than 40000 gastroscopic images from 1653 patients in Yixing people’s Hospital were used as the training set for the system, while endoscopic images from the other two hospitals were used as external validation test sets. The sensitivity, specificity, positive predictive value, Youden index and ROC curve were analyzed to evaluate detection efficiencies for EGC-YOLO.ResultsEGC-YOLO was able to diagnose early gastric cancer in the two test sets with a high superiority and efficiency. The accuracy, sensitivity, specificity and positive predictive value for Test Sets 1 and 2 were 85.15% and 86.02%, 85.36% and 83.02%, 84.41% and 92.21%, and 95.22% and 95.65%, respectively. In Test Sets 1 and 2, the corresponding Threshold-values were 0.02, 0.16 and 0.17 at the maximum of the Youden index. An increase in Threshold-values was associated with a downward trend in sensitivity and accuracy, while specificity remained relatively stable at more than 80%.ConclusionsThe EGC-YOLO system is superior for the efficient, accurate and rapid detection of early gastric cancer lesions. For different data sets, it is important to select the appropriate threshold-value in advance to achieve the best performance of the EGC-YOLO system.

Highlights

  • Endoscopy is an important tool for the diagnosis of early gastric cancer

  • We developed the EGC-YOU ONLY LOOK ONCE (YOLO) diagnostic system based on artificial intelligence by training more than 40000 gastroscopic images to distinguish between early gastric cancer and benign lesion

  • Our findings indicated that EGC-YOLO has good potential for application in the intelligent diagnosis of early gastric cancer

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Summary

Introduction

Endoscopy is an important tool for the diagnosis of early gastric cancer. a combination of artificial intelligence and endoscopy has the ability to increase the speed and efficiency of early gastric cancer diagnosis. The 5-year survival rate of patients with early gastric cancer is more than 90%. As a result, improving the efficiency of endoscopic diagnosis of early gastric cancer is the most effective measure to reduce the mortality rates associated with gastric cancer. Several endoscopic aids such as magnifying gastroscopy, chromoendoscopy and narrow band imaging (NBI) have been developed to improve the detection rate of early gastric cancer [9,10,11,12,13,14]. These areas include the identification or classification of skin cancer [15,16,17], radiation oncology [18,19,20], the diagnosis of retinopathy [21,22,23], histological classification of pathological biopsies [24,25,26,27], and the characterization of colorectal lesions

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