从CCE图像中检测和分割结肠息肉的CNN架构

A. Tashk, Kasim E. Şahin, J. Herp, E. Nadimi
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引用次数: 2

摘要

结肠胶囊内窥镜(CCE)作为一种新型的基于可见光的二维生物医学成像方式,比传统的结肠镜检查提供了更高的视角来观察小肠和大肠息肉等潜在的胃肠道病变。由于通过CCE图像获得的图像质量较低,因此提出了人工智能方法来帮助在可接受的效率和性能水平下检测和定位息肉。本文提出了一种新的深度神经网络结构,称为AID-U-Net。AID-U-Net由两种不同类型的路径组成:a)两条主承包/扩展路径,b)两条分包/扩展路径。主路径的作用是将息肉以高分辨率、多尺度的方式定位为目标目标,而两个子路径则负责低分辨率、低尺度目标目标的信息保存和传递。此外,所提出的网络体系结构提供了简单性,使模型可以部署用于实时处理。与使用ImageNet、VGG19、ResNeXt50、Resnet50、InceptionV3和InceptionResNetV2等不同预训练骨干网的传统U-Net、u - net++和U-Net3+等先进U-Net模型相比,使用VGG19骨干网实现的AID-U-Net在CCE图像中显示出更好的息肉检测性能。
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A CNN Architecture for Detection and Segmentation of Colorectal Polyps from CCE Images
Colon capsule endoscopy (CCE) as a novel 2D biomedical image modality based on visible light provides a higher perspective of the potential gastrointestinal lesions like polyps within the small and large intestines than the conventional colonoscopy. As the quality of images acquired via CCE imagery is low, so the artificial intelligence methods are proposed to help detect and localize polyps within an acceptable level of efficiency and performance. In this paper, a new deep neural network architecture known as AID-U-Net is proposed. AID-U-Net consists of two distinct types of paths: a) Two main contracting/expansive paths, and b) Two sub-contracting/expansive paths. The playing role of the main paths is to localize polyps as the target objectives in high resolution and multi-scale manner, while the two sub paths are responsible for preserving and conveying the information of low resolution and low-scale target objects. Furthermore, the proposed network architecture provides simplicity so that the model can be deployed for real time processing. AID-U-Net with an implementation of a VGG19 backbone shows better performance to detect polyps in CCE images in comparison with the other state-of-the-art U-Net models like conventional U-Net, U-Net++, and U-Net3+ with different pre-trained backbones like ImageNet, VGG19, ResNeXt50, Resnet50, InceptionV3 and InceptionResNetV2.
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