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Deep learning of contrast-coated serrated polyps for computer-aided detection in CT colonography

机译:在CT上影中的计算机辅助检测中对比涂层癌息肉的深度学习

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Serrated polyps were previously believed to be benign lesions with no cancer potential. However, recent studies have revealed a novel molecular pathway where also serrated polyps can develop into colorectal cancer. CT colonography (CTC) can detect serrated polyps using the radiomic biomarker of contrast coating, but this requires expertise from the reader and current computer-aided detection (CADe) systems have not been designed to detect the contrast coating. The purpose of this study was to develop a novel CADe method that makes use of deep learning to detect serrated polyps based on their contrast-coating biomarker in CTC. In the method, volumetric shape-based features are used to detect polyp sites over soft-tissue and fecal-tagging surfaces of the colon. The detected sites are imaged using multi-angular 2D image patches. A deep convolutional neural network (DCNN) is used to review the image patches for the presence of polyps. The DCNN-based polyp-likelihood estimates are merged into an aggregate likelihood index where highest values indicate the presence of a polyp. For pilot evaluation, the proposed DCNN-CADe method was evaluated with a 10-fold cross-validation scheme using 101 colonoscopy-confirmed cases with 144 biopsy-confirmed serrated polyps from a CTC screening program, where the patients had been prepared for CTC with saline laxative and fecal tagging by barium and iodine-based diatrizoate. The average per-polyp sensitivity for serrated polyps >6 mm in size was 93±7% at 0.8±1.8 false positives per patient on average. The detection accuracy was substantially higher that of a conventional CADe system. Our results indicate that serrated polyps can be detected automatically at high accuracy in CTC.
机译:锯齿状息肉以前认为是良性病变,没有癌症的潜力。然而,最近的研究已经揭示了一种新的分子途径,其中还锯齿状息肉可发展为大肠癌。 CT结肠(CTC)可检测锯齿状使用对比涂层的生物标志物radiomic息肉,但是这需要从读取器和电流计算机辅助检测(凯德)系统专业技术没有被设计成检测对比度涂层。这项研究的目的是开发一种新型人工喂养的方法,该方法利用深度学习的检测基于在CTC它们的对比度涂锯齿状的生物标志物的息肉。在该方法中,体积基于形状的特征被用来检测在软组织和结肠的粪便标记表面息肉位点。所检测到的站点使用多角度的2D图像补丁成像。深卷积神经网络(DCNN)用于审查息肉的存在的图像块。基于DCNN-息肉似然估计被合并成一个聚合可能性索引,其中最高值表示息肉的存在。用于导频评估,所提出的DCNN-人工喂养方法用使用101结肠镜检查确认的病例与来自CTC筛选程序,其中该患者已对CTC制备用生理盐水144活检证实锯齿状息肉10倍交叉验证方案评价泻药和由钡和碘系泛影葡胺粪便标记。为锯齿状的息肉的平均每息肉灵敏度> 6mm的大小为93±7%以每患者0.8±1.8假阳性上平均。的检测精度是一个常规凯德系统的显着更高。我们的研究结果表明,锯齿状息肉可自动在CTC高精度地检测。

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