Colorectal polyps are abnormal tissues growing on the intima of the colon or rectum with a high risk of developing into colorectal cancer, the third leading cause of cancer death worldwide. Early detection and removal of colon polyps via colonoscopy have proved to be an effective approach to prevent colorectal cancer. Recently, various CNN-based computer-aided systems have been developed to help physicians detect polyps. However, these systems do not perform well in real-world colonoscopy operations due to the significant difference between images in a real colonoscopy and those in the public datasets. Unlike the well-chosen clear images with obvious polyps in the public datasets, images from a colonoscopy are often blurry and contain various artifacts such as fluid, debris, bubbles, reflection, specularity, contrast, saturation, and medical instruments, with a wide variety of polyps of different sizes, shapes, and textures. All these factors pose a significant challenge to effective polyp detection in a colonoscopy. To this end, we collect a private dataset that contains 7,313 images from 224 complete colonoscopy procedures. This dataset represents realistic operation scenarios and thus can be used to better train the models and evaluate a system's performance in practice. We propose an integrated system architecture to address the unique challenges for polyp detection. Extensive experiments results show that our system can effectively detect polyps in a colonoscopy with excellent performance in real time.
翻译:在结肠或直肠上生长的异常组织,在结肠或直肠上生长的异常组织,具有发展成结肠癌的高度风险,是全世界癌症死亡的第三个主要原因。通过结肠镜检查早期发现和移除结肠聚,已证明是预防结肠癌的有效办法。最近,开发了各种CNN计算机辅助系统,帮助医生检测多胞。然而,这些系统在现实世界结肠镜或直肠镜检查操作中效果不佳,因为真实结肠镜检查和公共数据集中图像之间的差别很大。与在公共数据集中明显出现多胞癌的精选清晰图像不同,结肠镜检查中的图像往往模糊不清,包含各种人工制品,例如液体、碎片、泡、反射镜、光谱、对比、饱和和医疗仪器。由于各种不同大小、形状和纹理的多胞骨镜检查操作。所有这些因素都对在结肠镜检查中有效检测多胞谱多胞的图像构成重大挑战。为此,我们收集了一种私人的清晰清晰图像,因此,在实际的检测中收集了一种真实的模型。我们所使用的系统,可以展示一个精确的模型。我们所使用的系统,可以展示一个精确的模型。我们用来的模型,可以展示一个对一个对一个精确的模拟的模型进行结果进行。