Aoyama Naoki, Nakajo Keiichiro, Sasabe Maasa, Inaba Atsushi, Nakanishi Yuki, Seno Hiroshi, Yano Tomonori
Department of Gastroenterology and Endoscopy National Cancer Center Hospital East Chiba Japan.
Department of Gastroenterology and Hepatology Kyoto University Graduate School of Medicine Kyoto Japan.
DEN Open. 2025 May 2;6(1):e70083. doi: 10.1002/deo2.70083. eCollection 2026 Apr.
Superficial esophageal squamous cell carcinoma (ESCC) detection is crucial. Although narrow-band imaging improves detection, its effectiveness is diminished by inexperienced endoscopists. The effects of artificial intelligence (AI) assistance on ESCC detection by endoscopists remain unclear. Therefore, this study aimed to develop and validate an AI model for ESCC detection using endoscopic video analysis and evaluate diagnostic improvements.
Endoscopic videos with and without ESCC lesions were collected from May 2020 to January 2022. The AI model trained on annotated videos and 18 endoscopists (eight experts, 10 non-experts) evaluated their diagnostic performance. After 4 weeks, the endoscopists re-evaluated the test data with AI assistance. Sensitivity, specificity, and accuracy were compared between endoscopists with and without AI assistance.
Training data comprised 280 cases (140 with and 140 without lesions), and test data, 115 cases (52 with and 63 without lesions). In the test data, the median lesion size was 14.5 mm (range: 1-100 mm), with pathological depths ranging from high-grade intraepithelial to submucosal neoplasia. The model's sensitivity, specificity, and accuracy were 76.0%, 79.4%, and 77.2%, respectively. With AI assistance, endoscopist sensitivity (57.4% vs. 66.5%) and accuracy (68.6% vs. 75.9%) improved significantly, while specificity increased slightly (87.0% vs. 91.6%). Experts demonstrated substantial improvements in sensitivity (59.1% vs. 70.0%) and accuracy (72.1% vs. 79.3%). Non-expert accuracy increased significantly (65.8% vs. 73.3%), with slight improvements in sensitivity (56.1% vs. 63.7%) and specificity (81.9% vs. 89.2%).
AI assistance enhances ESCC detection and improves endoscopists' diagnostic performance, regardless of experience.
浅表性食管鳞状细胞癌(ESCC)的检测至关重要。尽管窄带成像可提高检测率,但经验不足的内镜医师会降低其有效性。人工智能(AI)辅助对内镜医师检测ESCC的影响仍不明确。因此,本研究旨在开发并验证一种使用内镜视频分析检测ESCC的AI模型,并评估其诊断改善情况。
收集2020年5月至2022年1月有和无ESCC病变的内镜视频。在标注视频上训练AI模型,并让18名内镜医师(8名专家,10名非专家)评估其诊断性能。4周后,内镜医师在AI辅助下重新评估测试数据。比较有和无AI辅助时内镜医师的敏感性、特异性和准确性。
训练数据包括280例(140例有病变,140例无病变),测试数据包括115例(52例有病变,63例无病变)。在测试数据中,病变的中位大小为14.5毫米(范围:1 - 100毫米),病理深度从高级别上皮内瘤变到黏膜下肿瘤不等。该模型的敏感性、特异性和准确性分别为76.0%、79.4%和77.2%。在AI辅助下,内镜医师的敏感性(57.4%对66.5%)和准确性(68.6%对75.9%)显著提高,而特异性略有增加(87.0%对91.6%)。专家的敏感性(59.1%对70.0%)和准确性(72.1%对79.3%)有显著提高。非专家的准确性显著提高(65.8%对73.3%),敏感性(56.1%对63.7%)和特异性(81.9%对89.2%)略有改善。
无论经验如何,AI辅助均可增强ESCC检测并提高内镜医师的诊断性能。