Fully Automatic Polyp Detection Based on a Novel U-Net Architecture and Morphological Post-Process

A. Tashk, J. Herp, E. Nadimi
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引用次数: 11

Abstract

Colorectal lesions known as polyps are one of the diagnostic symptoms for colorectal disease. So, their accurate detection and localization based on a computer-aided diagnosis can assist colonists for prescribing more effective treatments. The computer vision and machine learning methods like pattern recognition and deep learning neural networks are the most popular strategies for automatic polyp detection purpose. The proposed approach in this paper is an innovative deep learning neural network. The proposed network has a novel U-Net architecture. The architecture of proposed network includes fully 3D layers which enable the network to be fed with multi or hyperspectral images or even video streams. Moreover, there is a dice prediction output layer. This type of output layer employs probabilistic approaches and benefits from more accurate prediction abilities. The proposed method is applied to international standard optical colonoscopy datasets known as CVC-ClinicDB, CVC-ColonDB and ETIS-Larib. The implementation and evaluation results demonstrate that the proposed U-Net outperforms other competitive methods for automatic polyp detection based on accuracy, precision, recall and F-Score criteria. The proposed method can assist experts and physicians to localize colonial polyps with more accuracy and speed. In addition, the proposed network can be used on live colonoscopy observations due to its high performance and fast operability.
基于新型U-Net结构和形态学后处理的全自动息肉检测
结直肠病变称为息肉,是结直肠疾病的诊断症状之一。因此,基于计算机辅助诊断的准确检测和定位可以帮助殖民者开出更有效的治疗处方。计算机视觉和机器学习方法,如模式识别和深度学习神经网络是最流行的自动息肉检测策略。本文提出的方法是一种创新的深度学习神经网络。该网络具有新颖的U-Net体系结构。所提出的网络架构包括全3D层,这使得网络能够被多光谱或高光谱图像甚至视频流馈送。此外,还有一个骰子预测输出层。这种类型的输出层采用概率方法,并受益于更准确的预测能力。该方法应用于国际标准光学结肠镜检查数据集,如CVC-ClinicDB、CVC-ColonDB和ETIS-Larib。实施和评估结果表明,基于准确性、精密度、召回率和F-Score标准,所提出的U-Net优于其他竞争对手的自动息肉检测方法。该方法可以帮助专家和医生更加准确和快速地定位群体息肉。此外,该网络具有高性能和快速可操作性,可用于实时结肠镜观察。
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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