Suzuki Kenji, Yoshida Hiroyuki, Näppi Janne, Dachman Abraham H
Department of Radiology, The University of Chicago, 5841 South Maryland Avenue, Chicago, Illinois 60637, USA.
Med Phys. 2006 Oct;33(10):3814-24. doi: 10.1118/1.2349839.
One of the limitations of the current computer-aided detection (CAD) of polyps in CT colonography (CTC) is a relatively large number of false-positive (FP) detections. Rectal tubes (RTs) are one of the typical sources of FPs because a portion of a RT, especially a portion of a bulbous tip, often exhibits a cap-like shape that closely mimics the appearance of a small polyp. Radiologists can easily recognize and dismiss RT-induced FPs; thus, they may lose their confidence in CAD as an effective tool if the CAD scheme generates such "obvious" FPs due to RTs consistently. In addition, RT-induced FPs may distract radiologists from less common true positives in the rectum. Therefore, removal RT-induced FPs as well as other types of FPs is desirable while maintaining a high sensitivity in the detection of polyps. We developed a three-dimensional (3D) massive-training artificial neural network (MTANN) for distinction between polyps and RTs in 3D CTC volumetric data. The 3D MTANN is a supervised volume-processing technique which is trained with input CTC volumes and the corresponding "teaching" volumes. The teaching volume for a polyp contains a 3D Gaussian distribution, and that for a RT contains zeros for enhancement of polyps and suppression of RTs, respectively. For distinction between polyps and nonpolyps including RTs, a 3D scoring method based on a 3D Gaussian weighting function is applied to the output of the trained 3D MTANN. Our database consisted of CTC examinations of 73 patients, scanned in both supine and prone positions (146 CTC data sets in total), with optical colonoscopy as a reference standard for the presence of polyps. Fifteen patients had 28 polyps, 15 of which were 5-9 mm and 13 were 10-25 mm in size. These CTC cases were subjected to our previously reported CAD scheme that included centerline-based segmentation of the colon, shape-based detection of polyps, and reduction of FPs by use of a Bayesian neural network based on geometric and texture features. Application of this CAD scheme yielded 96.4% (27/28) by-polyp sensitivity with 3.1 (224/73) FPs per patient, among which 20 FPs were caused by RTs. To eliminate the FPs due to RTs and possibly other normal structures, we trained a 3D MTANN with ten representative polyps and ten RTs, and applied the trained 3D MTANN to the above CAD true- and false-positive detections. In the output volumes of the 3D MTANN, polyps were represented by distributions of bright voxels, whereas RTs and other normal structures partly similar to RTs appeared as darker voxels, indicating the ability of the 3D MTANN to suppress RTs as well as other normal structures effectively. Application of the 3D MTANN to the CAD detections showed that the 3D MTANN eliminated all RT-induced 20 FPs, as well as 53 FPs due to other causes, without removal of any true positives. Overall, the 3D MTANN was able to reduce the FP rate of the CAD scheme from 3.1 to 2.1 FPs per patient (33% reduction), while the original by-polyp sensitivity of 96.4% was maintained.
当前CT结肠成像(CTC)中息肉的计算机辅助检测(CAD)的局限性之一是假阳性(FP)检测数量相对较多。直肠管(RT)是FP的典型来源之一,因为RT的一部分,尤其是球根状末端的一部分,通常呈现出帽状形状,与小息肉的外观非常相似。放射科医生可以轻松识别并忽略由RT引起的FP;因此,如果CAD方案持续产生这种由RT引起的“明显”FP,他们可能会对CAD作为一种有效工具失去信心。此外,由RT引起的FP可能会使放射科医生从直肠中不太常见的真正阳性病变上分心。因此,在保持息肉检测高灵敏度的同时,去除由RT引起的FP以及其他类型的FP是很有必要的。我们开发了一种三维(3D)大规模训练人工神经网络(MTANN),用于在3D CTC体积数据中区分息肉和RT。3D MTANN是一种监督体积处理技术,它使用输入的CTC体积和相应的“教学”体积进行训练。息肉的教学体积包含三维高斯分布,而RT的教学体积分别包含零,以增强息肉并抑制RT。为了区分息肉和包括RT在内的非息肉,基于三维高斯加权函数的三维评分方法应用于经过训练的3D MTANN的输出。我们的数据库由73例患者的CTC检查组成,患者均进行了仰卧位和俯卧位扫描(共146个CTC数据集),以光学结肠镜检查作为息肉存在的参考标准。15例患者有28个息肉,其中15个息肉大小为5 - 9毫米,13个息肉大小为10 - 25毫米。这些CTC病例采用了我们之前报道的CAD方案,该方案包括基于中心线的结肠分割、基于形状的息肉检测以及使用基于几何和纹理特征的贝叶斯神经网络减少FP。应用该CAD方案,息肉的灵敏度为96.4%(27/28),每位患者有3.1个(224/73)FP,其中20个FP是由RT引起的。为了消除由RT以及可能的其他正常结构引起的FP,我们用10个代表性息肉和10个RT训练了一个3D MTANN,并将训练后的3D MTANN应用于上述CAD的真阳性和假阳性检测。在3D MTANN的输出体积中,息肉由明亮体素的分布表示,而RT和其他与RT部分相似的正常结构则表现为较暗的体素,这表明3D MTANN能够有效抑制RT以及其他正常结构。将3D MTANN应用于CAD检测表明,3D MTANN消除了所有由RT引起的20个FP以及53个由其他原因引起的FP,且未去除任何真阳性。总体而言,3D MTANN能够将CAD方案的FP率从每位患者3.1个降低到2.1个(降低了33%),同时保持了原始的息肉灵敏度96.4%。