Automatic Polyp Segmentation with Multiple Kernel Dilated Convolution Network.

Nikhil Kumar Tomar, Abhishek Srivastava, Ulas Bagci, Debesh Jha
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引用次数: 6

Abstract

The detection and removal of precancerous polyps through colonoscopy is the primary technique for the prevention of colorectal cancer worldwide. However, the miss rate of colorectal polyp varies significantly among the endoscopists. It is well known that a computer-aided diagnosis (CAD) system can assist endoscopists in detecting colon polyps and minimize the variation among endoscopists. In this study, we introduce a novel deep learning architecture, named MKDCNet, for automatic polyp segmentation robust to significant changes in polyp data distribution. MKDCNet is simply an encoder-decoder neural network that uses the pre-trained ResNet50 as the encoder and novel multiple kernel dilated convolution (MKDC) block that expands the field of view to learn more robust and heterogeneous representation. Extensive experiments on four publicly available polyp datasets and cell nuclei dataset show that the proposed MKDCNet outperforms the state-of-the-art methods when trained and tested on the same dataset as well when tested on unseen polyp datasets from different distributions. With rich results, we demonstrated the robustness of the proposed architecture. From an efficiency perspective, our algorithm can process at ( 45) frames per second on RTX 3090 GPU. MKDCNet can be a strong benchmark for building real-time systems for clinical colonoscopies. The code of the proposed MKDCNet is available at https://github.com/nikhilroxtomar/MKDCNet.

基于多核扩展卷积网络的息肉自动分割。
通过结肠镜检查发现和切除癌前息肉是世界范围内预防结直肠癌的主要技术。然而,内镜医师对结直肠息肉的漏诊率差异很大。众所周知,计算机辅助诊断(CAD)系统可以帮助内窥镜医师发现结肠息肉,并最大限度地减少内窥镜医师之间的差异。在本研究中,我们引入了一种名为MKDCNet的新型深度学习架构,用于对息肉数据分布的显著变化进行自动息肉分割。MKDCNet是一个简单的编码器-解码器神经网络,它使用预训练的ResNet50作为编码器和新的多核扩展卷积(MKDC)块,扩展视野以学习更鲁棒和异构的表示。在四个公开可用的息肉数据集和细胞核数据集上进行的大量实验表明,所提出的MKDCNet在同一数据集上训练和测试以及在来自不同分布的未见过的息肉数据集上测试时都优于最先进的方法。通过丰富的结果,我们证明了所提出体系结构的鲁棒性。从效率的角度来看,我们的算法可以在RTX 3090 GPU上以每秒(≈45)帧的速度处理。MKDCNet可以成为构建临床结肠镜检查实时系统的有力基准。建议的MKDCNet的代码可在https://github.com/nikhilroxtomar/MKDCNet上获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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