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3D deep learning for computer-aided detection of serrated polyps in CT colonography

机译:3D深度学习,用于CT结肠术中锯齿状息肉的计算机辅助检测

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Serrated polyps were historically believed to be benign lesions that have no cancer potential. However, recent studies have revealed a molecular pathway where serrated polyps can develop into colorectal cancers. Because serrated polyps tend to be flat and pale lesions, they are challenging to detect in colonoscopy, whereas CT colonography can detect serrated polyps based on a phenomenon called contrast coating. However, the differentiation of contrast coating from tagged feces requires great skill from the reader. The purpose of this pilot study was to explore the performance of 3D deep learning in the detection of serrated polyps. The materials included 94 CT colonography cases with biopsy-confirmed serrated polyps. We explored how to adapt the architecture of our baseline 3D DenseNet into the limited dataset by modification of the architectural parameters. The detection performance of the different 3D DenseNets and a reference 3D ResNet and a 3D AlexNet were compared by use of 10-fold cross-validation in terms of their sensitivity and false-positive rate within a clinically meaningful performance range by use of the free-response operating characteristic analysis. Our preliminary results indicate that the optimized 3D DenseNet can yield a high detection performance for serrated polyps that is comparable to those of state-of-the-art conventional CADe systems for traditional polyps in CT colonography.
机译:历史上据信锯齿息肉是没有癌症潜力的良性病变。然而,最近的研究揭示了一种分子途径,其中锯齿状息肉可以发展成结直肠癌。由于锯齿状息肉倾向于平坦和淡损伤,因此在结肠镜检查中检测到挑战,而CT上影可以基于称为对比涂层的现象检测锯齿息肉。然而,从标记的粪便中的对比度涂层的分化需要来自读者的巨大技能。该试点研究的目的是探讨3D深度学习在检测锯齿息肉中的表现。该材料包括94克CT上核患者,具有活组织检查证实的锯齿状息肉。我们探讨了如何通过修改架构参数来使基线3D DenSenet的体系结构调整到有限数据集中。通过使用自由的临床有意义的性能范围内的敏感性和假阳性率在临床上有意义的性能范围内使用10倍交叉验证来比较不同的3D DENENET和参考3D RESET和3D AlexNET的检测性能。响应操作特征分析。我们的初步结果表明,优化的3D DenSenet可以为锯齿状息肉产生高检测性能,该息肉可与用于CT上影术中的传统息肉的现有息肉系统相当。

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