Artificial intelligence-assisted endoscopic ultrasound diagnosis of esophageal subepithelial lesions.

IF 2.4 2区 医学 Q2 SURGERY
Ai-Meng Zhang, Dai-Min Jiang, Shu-Peng Wang, Wen Liu, Bei-Bei Sun, Zhe Wang, Guo-Yi Zhou, Yao-Fu Wu, Qing-Yun Cai, Jin-Tao Guo, Si-Yu Sun
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引用次数: 0

Abstract

Background: Endoscopic ultrasound (EUS) is one of the most accurate methods for determining the originating layer of subepithelial lesions (SELs). However, the accuracy is greatly influenced by the expertise and proficiency of the endoscopist. In this study, we aimed to develop an artificial intelligence (AI) model to identify the originating layer of SELs in the esophagus and evaluate its efficacy.

Methods: A total of 1445 cases of esophageal SELs were used to develop the model. An AI model stemming from YOLOv8s-seg and MobileNetv2 was developed to detect esophageal lesions and identify the originating layer. Two seniors and two junior endoscopists independently diagnosed the same test set.

Results: The precision, recall, mean average precision @ 0.5, and F1-score of the AI model were 92.2%, 73.6%, 0.832, and 81.9%, respectively. The overall accuracy of the originating layer recognition model was 55.2%. The F1-scores of the second, third, and fourth layers were 47.1%, 51.7%, and 66.1%, respectively. The accuracy of the AI system in differentiating layers 2 and 3 from four was 76.5% and was similar to that of senior endoscopists (74.9-79.8%, P = 0.585) but higher than that of junior endoscopists (65.6-66.7%, P = 0.045).

Conclusions: The EUS-AI model has shown high diagnostic potential for detecting esophageal SELs and identifying their originating layers. EUS-AI has the potential to enhance the diagnostic ability of junior endoscopists in clinical practice.

人工智能辅助食管上皮下病变的内镜超声诊断。
背景:内镜超声(EUS)是确定上皮下病变(SELs)起源层最准确的方法之一。然而,准确性受到内窥镜医师的专业知识和熟练程度的极大影响。在这项研究中,我们旨在开发一个人工智能(AI)模型来识别食管中sel的起源层并评估其疗效。方法:采用1445例食管SELs建立模型。基于YOLOv8s-seg和MobileNetv2开发的人工智能模型用于检测食管病变并识别起源层。两名高级内窥镜医师和两名初级内窥镜医师独立诊断同一组测试。结果:人工智能模型的准确率为92.2%,召回率为73.6%,平均准确率@ 0.5为0.832,f1评分为81.9%。原始层识别模型的总体准确率为55.2%。第二、三、四层的f1得分分别为47.1%、51.7%、66.1%。人工智能系统区分第2、3层与第4层的准确率为76.5%,与高级内镜医师(74.9 ~ 79.8%,P = 0.585)相近,但高于初级内镜医师(65.6 ~ 66.7%,P = 0.045)。结论:EUS-AI模型对食管sel的检测和起源层的识别具有较高的诊断潜力。EUS-AI有潜力提高初级内镜医师在临床实践中的诊断能力。
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来源期刊
CiteScore
6.10
自引率
12.90%
发文量
890
审稿时长
6 months
期刊介绍: Uniquely positioned at the interface between various medical and surgical disciplines, Surgical Endoscopy serves as a focal point for the international surgical community to exchange information on practice, theory, and research. Topics covered in the journal include: -Surgical aspects of: Interventional endoscopy, Ultrasound, Other techniques in the fields of gastroenterology, obstetrics, gynecology, and urology, -Gastroenterologic surgery -Thoracic surgery -Traumatic surgery -Orthopedic surgery -Pediatric surgery
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