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Development of Computer-Aided Diagnostic (CADx) System for Distinguishing Neoplastic from Nonneoplastic Lesions in CT Colonography (CTC): Toward CTC beyond Detection

机译:开发计算机辅助诊断(CADx)系统以区分CT结肠造影(CTC)中的非肿瘤性病变:超越检测范围的CTC

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Half of the polyps surgically removed during conventional colonoscopy are benign with no malignant potential. Our purpose was to develop a CADx system for distinction between neoplastic and non-neoplastic lesions in CTC to reduce "unnecessary" colonoscopic polypectomy. Although computer aided detection (CADe) systems have been developed, less attention was given to the development of CADx systems. Our CADx system consists of shape-index-based coarse segmentation of lesions, 3D volume growing and sub-voxel refinement for fine segmentation of lesions, morphologic and texture feature analysis, Wilks' lambda-based stepwise feature selection, linear discriminant analysis for providing an integrated imaging biomarker for diagnosis of neoplastic lesions. Our database contained biopsy-confirmed 54 neoplastic lesions in 29 patients and 14 non-neoplastic lesions in 10 patients. Our CADx system integrating the selected features was able to determine an accurate likelihood of being a neoplasm and distinguish 87% (47/54) neoplastic lesions from 57% (8/14) non-neoplastic lesions correctly only using computed tomography (CT) images, achieving an area under the receiver operating characteristic curve (AUC) of 0.82. This study showed the potential of the use of CTC as a diagnostic tool beyond already accepted detection, thus, CTC with CADx would be potentially useful for reducing "unnecessary" polypectomy.
机译:在常规结肠镜检查中通过手术切除的息肉的一半是良性的,没有恶性潜能。我们的目的是开发一种CADx系统,以区分CTC中的肿瘤性病变和非肿瘤性病变,以减少“不必要的”结肠镜息肉切除术。尽管已经开发了计算机辅助检测(CADe)系统,但对CADx系统的开发却很少关注。我们的CADx系统包括基于形状指数的病变粗分割,3D体积增长和亚体素细化以对病变进行细分割,形态和纹理特征分析,基于Wilks基于lambda的逐步特征选择,线性判别分析以提供集成成像生物标志物用于诊断肿瘤性病变。我们的数据库包含活检证实的29例患者中的54例肿瘤性病变和10例患者中的14例非肿瘤性病变。我们的CADx系统集成了所选功能,仅使用计算机断层扫描(CT)图像即可正确确定是肿瘤的可能性,并能正确区分87%(47/54)的肿瘤性病变与57%(8/14)的非肿瘤性病变,使接收器工作特性曲线(AUC)下方的面积达到0.82。这项研究表明,将CTC用作诊断工具的潜力已超出公认的检测范围,因此,带有CADx的CTC对于减少“不必要的”息肉切除术可能很有用。

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