Cho Minwoo, Kim Jee Hyun, Kong Hyoun Joong, Hong Kyoung Sup, Kim Sungwan
Interdisciplinary Program for Bioengineering, Graduate School, Seoul National University, Seoul, 08826, South Korea.
Department of Gastroenterology, Seoul National University Boramae Medical Center, Seoul, 07061, South Korea.
Int J Colorectal Dis. 2018 May;33(5):549-559. doi: 10.1007/s00384-018-2980-3. Epub 2018 Mar 8.
The colonoscopy adenoma detection rate depends largely on physician experience and skill, and overlooked colorectal adenomas could develop into cancer. This study assessed a system that detects polyps and summarizes meaningful information from colonoscopy videos.
One hundred thirteen consecutive patients had colonoscopy videos prospectively recorded at the Seoul National University Hospital. Informative video frames were extracted using a MATLAB support vector machine (SVM) model and classified as bleeding, polypectomy, tool, residue, thin wrinkle, folded wrinkle, or common. Thin wrinkle, folded wrinkle, and common frames were reanalyzed using SVM for polyp detection. The SVM model was applied hierarchically for effective classification and optimization of the SVM.
The mean classification accuracy according to type was over 93%; sensitivity was over 87%. The mean sensitivity for polyp detection was 82.1%, and the positive predicted value (PPV) was 39.3%. Polyps detected using the system were larger (6.3 ± 6.4 vs. 4.9 ± 2.5 mm; P = 0.003) with a more pedunculated morphology (Yamada type III, 10.2 vs. 0%; P < 0.001; Yamada type IV, 2.8 vs. 0%; P < 0.001) than polyps missed by the system. There were no statistically significant differences in polyp distribution or histology between the groups. Informative frames and suspected polyps were presented on a timeline. This summary was evaluated using the system usability scale questionnaire; 89.3% of participants expressed positive opinions.
We developed and verified a system to extract meaningful information from colonoscopy videos. Although further improvement and validation of the system is needed, the proposed system is useful for physicians and patients.
结肠镜腺瘤检出率在很大程度上取决于医生的经验和技能,而被忽视的结直肠腺瘤可能会发展成癌症。本研究评估了一种能够检测息肉并从结肠镜视频中总结有意义信息的系统。
首尔国立大学医院前瞻性记录了113例连续患者的结肠镜视频。使用MATLAB支持向量机(SVM)模型提取信息丰富的视频帧,并将其分类为出血、息肉切除、工具、残留物、细皱襞、折叠皱襞或普通帧。使用SVM对细皱襞、折叠皱襞和普通帧进行重新分析以检测息肉。SVM模型被分层应用以实现SVM的有效分类和优化。
根据类型划分的平均分类准确率超过93%;灵敏度超过87%。息肉检测的平均灵敏度为82.1%,阳性预测值(PPV)为39.3%。使用该系统检测到的息肉比系统遗漏的息肉更大(6.3±6.4 vs. 4.9±2.5 mm;P = 0.003),且带蒂形态更多见(山田III型,10.2% vs. 0%;P < 0.001;山田IV型,2.8% vs. 0%;P < 0.001)。两组之间息肉分布或组织学无统计学显著差异。信息丰富的帧和疑似息肉在时间轴上呈现。使用系统可用性量表问卷对该总结进行评估;89.3%的参与者表达了积极意见。
我们开发并验证了一种从结肠镜视频中提取有意义信息的系统。尽管该系统需要进一步改进和验证,但所提出的系统对医生和患者有用。