Division of Gastroenterology, Department of Internal Medicine, Gachon University Gil Medical Center, Gachon University College of Medicine, 21, Namdong-daero 774 beon-gil, Namdong-gu, Incheon, 21565, Republic of Korea.
Health IT Research Center, Gachon University Gil Medical Center, Incheon, Republic of Korea.
Sci Rep. 2024 Oct 26;14(1):25453. doi: 10.1038/s41598-024-77079-1.
Colon polyp detection and removal via colonoscopy are essential for colorectal cancer screening and prevention. This study aimed to develop a colon polyp detection program based on the RetinaNet algorithm and verify its clinical utility. To develop the AI-assisted program, the dataset was fully anonymized and divided into 10 folds for 10-fold cross-validation. Each fold consisted of 9,639 training images and 1,070 validation images. Video data from 56 patients were used for model training, and transfer learning was performed using the developed still image-based model. The final model was developed as a real-time polyp-detection program for endoscopy. To evaluate the model's performance, a prospective randomized controlled trial was conducted at six institutions to compare the polyp detection rates (PDR). A total of 805 patients were included. The group that utilized the AI model showed significantly higher PDR and adenoma detection rate (ADR) than the group that underwent colonoscopy without AI assistance. Multivariate analysis revealed an OR of 1.50 for cases where polyps were detected. The AI-assisted polyp-detection program is clinically beneficial for detecting polyps during colonoscopy. By utilizing this AI-assisted program, clinicians can improve adenoma detection rates, ultimately leading to enhanced cancer prevention.
结肠镜下结肠息肉的检测和切除对于结直肠癌的筛查和预防至关重要。本研究旨在基于 RetinaNet 算法开发一种结肠息肉检测程序,并验证其临床实用性。为了开发 AI 辅助程序,数据集进行了充分的匿名化处理,并分为 10 折进行 10 折交叉验证。每折包含 9639 张训练图像和 1070 张验证图像。从 56 名患者的视频数据中进行模型训练,并使用开发的基于静态图像的模型进行迁移学习。最终模型被开发为一种用于内窥镜检查的实时息肉检测程序。为了评估模型的性能,在六个机构进行了前瞻性随机对照试验,以比较息肉检测率(PDR)。共有 805 名患者纳入研究。与未使用 AI 辅助的结肠镜检查组相比,使用 AI 模型的组显示出显著更高的 PDR 和腺瘤检测率(ADR)。多变量分析显示,检测到息肉的病例的 OR 为 1.50。该 AI 辅助的息肉检测程序在结肠镜检查中有助于检测息肉。通过使用这种 AI 辅助程序,临床医生可以提高腺瘤的检测率,最终实现癌症的预防。