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Deep transfer learning of virtual endoluminal views for the detection of polyps in CT colonography

机译:虚拟腔内视图的深度转移学习用于CT结肠造影中息肉的检测

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Proper training of deep convolutional neural networks (DCNNs) requires large annotated image databases that are currently not available in CT colonography (CTC). In this study, we employed a deep transfer learning (DETALE) scheme to circumvent this problem in automated polyp detection for CTC. In our method, a DCNN that had been pre-trained with millions of non-medical images was adapted to identify polyps using virtual endoluminal images of the polyp candidates prompted by a computer-aided detection (CADe) system. For evaluation, 154 CTC cases with and without fecal tagging were divided randomly into a development set and an external validation set including 107 polyps ≥6 mm in size. A CADe system was trained to detect polyp candidates using the development set, and the virtual endoluminal images of the polyp candidates were labeled manually into true-positive and several false-positive (FP) categories for transfer learning of the DCNN. Next, the trained CADe system was used to detect polyp candidates from the external validation set, and the DCNN reviewed their images to determine the final detections. The detection sensitivity of the standalone CADe system was 93% at 6.4 FPs per patient on average, whereas the DCNN reduced the number of FPs to 2.0 per patient without reducing detection sensitivity. Most of the remaining FP detections were caused by untagged stool. In fecal-tagged CTC cases, the detection sensitivity was 94% at only 0.78 FPs per patient on average. These preliminary results indicate that DETALE can yield substantial improvement in the accuracy of automated polyp detection in CTC.
机译:正确地训练深层卷积神经网络(DCNN),需要大型的带注释的图像数据库,而这些图像数据库目前在CT结肠造影(CTC)中不可用。在这项研究中,我们采用了深度转移学习(DETALE)方案来规避CTC的息肉自动检测中的这一问题。在我们的方法中,使用计算机辅助检测(CADe)系统提示的息肉候选物的虚拟腔内图像,对经过数百万个非医学图像预训练的DCNN进行修改,以识别息肉。为了进行评估,将154例带或不带粪​​便标签的CTC病例随机分为一个发育组和一个外部验证组,其中包括107个≥6 mm的息肉。训练了一个CADe系统,以使用开发套件检测息肉候选物,并将息肉候选物的虚拟腔内图像手动标记为真阳性和几个假阳性(FP)类别,以进行DCNN的转移学习。接下来,使用训练有素的CADe系统从外部验证集中检测息肉候选者,然后DCNN复查其图像以确定最终的检测结果。独立CADe系统的检测灵敏度为93%,平均每位患者6.4 FP,而DCNN却将FP的数量减少到每位患者2.0,而没有降低检测灵敏度。其余大部分FP检测是由未加标签的粪便引起的。在粪便标记的CTC病例中,每位患者平均只有0.78 FPs时,检测灵敏度为94%。这些初步结果表明,DETALE可以大大改善CTC中自动息肉检测的准确性。

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