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False positive reduction for wall thickness-based detection of colonic flat polyps via CT colonography

机译:通过CT上析术基于壁厚的基于结肠平息息肉的假阳性降低

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Computer-aided detection (CAD) of flat polyps, in contrast to other polyp types, is challenging due to their lack of projections from the colonic surface and limited geometrical features that can be extracted from such polyps. In this paper, we present a new approach for CAD of flat polyps via colon wall thickness mapping, texture feature extraction and analysis. First, we integrated our previous work of detecting flat polyp candidates via colon wall thickness mapping into this study for automated detection of initial polyp candidates (IPCs). The colon wall segmentation is established on a coupled level-set method after the lumen is electronically cleansed by a sophisticated statistical algorithm, which considers the partial volume effect to preserve the mucosa layer details. The IPC detection was performed based on the wall thickness local pattern. From each IPC volume, we extracted the 14 Haralick texture features and 16 additional features that were previously demonstrated to improve polyp classification performance. Then, we adopted the Rpackage "randomForest" to classify the features for false positive (FP) reduction. We evaluated our method via 16 patient datasets. The proposed scheme achieved a high capacity in terms of the well-known area under the curve value of 0.930. The FPs was reduced to less than 3 FPs/per polyp. The experiment results demonstrate the feasibility of our method in achieving computer aided detection of flat polyps, therefore, improving the screening capability of computed tomography cololongraphy.
机译:与其他息肉类型相比,扁平息肉的计算机辅助检测(CAD)是挑战,这是由于它们缺乏来自离子表面的凸起和可以从这些息肉中提取的有限的几何特征而挑战。本文通过结肠壁厚映射,纹理特征提取和分析,为扁平息肉的CAD提出了一种新方法。首先,我们通过结肠壁厚度映射来综合我们通过结肠壁厚度映射来检测扁平息肉候选,以自动检测初始息肉候选者(IPC)。在通过复杂的统计算法通过复杂的统计算法电子地清洁后,在耦合水平设定方法上建立结肠壁分割,这考虑了部分体积效应以保持粘膜层细节。基于壁厚局部图案执行IPC检测。从每个IPC卷,我们提取了14个Haralick纹理功能和16个以前演示的其他功能,以改善息肉分类性能。然后,我们采用了RPackage“randomforest”来对伪正(FP)减少的功能进行分类。我们通过16名患者数据集评估了我们的方法。所提出的方案根据曲线值的众所周知的面积达到高容量,曲线值为0.930。 FPS降至少于3个FPS / PerPyp。实验结果表明,我们在实现计算机辅助息肉的计算机辅助检测方面的可行性,从而提高了计算机断层扫描的筛选能力。

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