ETIS UMR CNRS 8051, ENSEA, University of Cergy-Pontoise, 6 av. du Ponceau, 95000 , Cergy-Pontoise, France.
Int J Comput Assist Radiol Surg. 2014 Mar;9(2):283-93. doi: 10.1007/s11548-013-0926-3. Epub 2013 Sep 15.
Wireless capsule endoscopy (WCE) is commonly used for noninvasive gastrointestinal tract evaluation, including the detection of mucosal polyps. A new embeddable method for polyp detection in wireless capsule endoscopic images was developed and tested.
First, possible polyps within the image were extracted using geometric shape features. Next, the candidate regions of interest were evaluated with a boosting based method using textural features. Each step was carefully chosen to accommodate hardware implementation constraints. The method's performance was evaluated on WCE datasets including 300 images with polyps and 1,200 images without polyps. Hardware implementation of the proposed approach was evaluated to quantitatively demonstrate the feasibility of such integration into the WCE itself.
The boosting based polyp classification demonstrated a sensitivity of 91.0 %, a specificity of 95.2 % and a false detection rate of 4.8 %. This performance is close to that reported recently in systems developed for an online analysis of video colonoscopy images.
A new method for polyp detection in videoendoscopic WCE examinations was developed using boosting based approach. This method achieved good classification performance and can be implemented in situ with embedded hardware.
无线胶囊内镜(WCE)常用于非侵入性胃肠道评估,包括黏膜息肉的检测。本文开发并测试了一种新的无线胶囊内镜图像中用于息肉检测的嵌入式方法。
首先,使用几何形状特征提取图像中的可能息肉。然后,使用基于提升的方法结合纹理特征评估候选感兴趣区域。每个步骤都经过精心选择,以适应硬件实现的约束。该方法在包含 300 张有息肉图像和 1200 张无息肉图像的 WCE 数据集上进行了评估。对所提出方法的硬件实现进行了评估,以定量证明将其集成到 WCE 本身的可行性。
基于提升的息肉分类方法的灵敏度为 91.0%,特异性为 95.2%,假阳性率为 4.8%。该性能接近最近在用于视频结肠镜图像在线分析的系统中报道的性能。
本文使用基于提升的方法开发了一种用于视频内镜 WCE 检查的新的息肉检测方法。该方法实现了良好的分类性能,并可以在嵌入式硬件中进行现场实现。