SAMU-Net: A dual-stage polyp segmentation network with a custom attention-based U-Net and segment anything model for enhanced mask prediction

IF 2.3 Q2 COMPUTER SCIENCE, THEORY & METHODS Array Pub Date : 2024-11-16 DOI:10.1016/j.array.2024.100370
Radiful Islam , Rashik Shahriar Akash , Md Awlad Hossen Rony, Md Zahid Hasan
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引用次数: 0

Abstract

Early detection of colorectal cancer through the proper segmentation of polyps in the colonoscopy images is crucial. Polyps' complex morphology and varied appearances are the greatest obstacles for the segmentation approaches. The paper introduces SAMU-Net, a novel deep learning-based dual-stage architecture consisting of a custom attention-based U-Net and modified Segment Anything Model (SAM) for better polyp segmentation. In our model, we used the custom U-Net architecture with an attention mechanism to obtain polyp segmentation masks as the first stage. This mask is then used to generate a bounding box input for the second stage that contains the modified Segment Anything Model. The modified SAM relies on the use of High-Quality token-based architecture along with global and local properties to segment polyps accurately, even in cases where the shapes and sizes of polyps are diverse and the polyps have different appearances. The efficiency of SAMU-Net generated from four different datasets of colonoscopy images was examined. Our process produced a dice coefficient score of 0.94, which is very impressive and has a considerable improvement over the existing state-of-the-art polyp segmentation methods. Moreover, the qualitative results also visualize that the SAMU-Net is capable of accurately segmenting polyps of wide ranges, thus, it is a relevant tool for computer-aided detection as well as the diagnosis of colorectal cancer.
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SAMU-Net:双阶段息肉分割网络,采用定制的基于注意力的 U-Net 和分割内容模型,用于增强掩膜预测功能
通过对结肠镜图像中的息肉进行正确分割来早期检测结肠直肠癌至关重要。息肉形态复杂、外观各异,是分割方法的最大障碍。本文介绍了 SAMU-Net,这是一种基于深度学习的新型双阶段架构,由定制的基于注意力的 U-Net 和改进的 Segment Anything Model(SAM)组成,用于更好地分割息肉。在我们的模型中,我们使用带有注意力机制的定制 U-Net 架构,作为第一阶段获得息肉分割掩码。然后使用该掩码为第二阶段生成边界框输入,第二阶段包含修改后的 "任意模型"。修改后的 SAM 依靠使用基于高质量标记的架构以及全局和局部属性来准确分割息肉,即使息肉的形状和大小各不相同,息肉的外观也各不相同。我们对从四个不同的结肠镜图像数据集生成的 SAMU-Net 的效率进行了检验。我们的处理过程产生了 0.94 的骰子系数分数,这非常令人印象深刻,与现有的最先进息肉分割方法相比有了相当大的改进。此外,定性结果还直观地表明,SAMU-Net 能够准确分割大范围的息肉,因此是计算机辅助检测和诊断结直肠癌的相关工具。
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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来源期刊
Array
Array Computer Science-General Computer Science
CiteScore
4.40
自引率
0.00%
发文量
93
审稿时长
45 days
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