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一种使用PolynetDWTCADx进行结直肠癌检测和U-Net分割的混合框架。

A hybrid framework for colorectal cancer detection and U-Net segmentation using polynetDWTCADx.

作者信息

Raju Akella S Narasimha, Venkatesh K, Rajababu Makineedi, Gatla Ranjith Kumar, Eid Marwa M, Ali Enas, Titova Nataliia, Sharaf Ahmed B Abou

机构信息

Department of Computer Science and Engineering (Data Science), Institute of Aeronautical Engineering, Dundigal, Hyderabad, 500043, Telangana, India.

Department of Networking and Communications, School of Computing, SRM Institute of Science and Technology, Kattankulathur, Chennai, 603203, Tamilnadu, India.

出版信息

Sci Rep. 2025 Jan 5;15(1):847. doi: 10.1038/s41598-025-85156-2.

Abstract

"PolynetDWTCADx" is a sophisticated hybrid model that was developed to identify and distinguish colorectal cancer. In this study, the CKHK-22 dataset, comprising 24 classes, served as the introduction. The proposed method, which combines CNNs, DWTs, and SVMs, enhances the accuracy of feature extraction and classification. The study employs DWT to optimize and enhance two integrated CNN models before classifying them with SVM following a systematic procedure. PolynetDWTCADx was the most effective model that we evaluated. It was capable of attaining a moderate level of recall, as well as an area under the curve (AUC) and accuracy during testing. The testing accuracy was 92.3%, and the training accuracy was 95.0%. This demonstrates that the model is capable of distinguishing between noncancerous and cancerous lesions in the colon. We can also employ the semantic segmentation algorithms of the U-Net architecture to accurately identify and segment cancerous colorectal regions. We assessed the model's exceptional success in segmenting and providing precise delineation of malignant tissues using its maximal IoU value of 0.93, based on intersection over union (IoU) scores. When these techniques are added to PolynetDWTCADx, they give doctors detailed visual information that is needed for diagnosis and planning treatment. These techniques are also very good at finding and separating colorectal cancer. PolynetDWTCADx has the potential to enhance the recognition and management of colorectal cancer, as this study underscores.

摘要

“PolynetDWTCADx”是一种复杂的混合模型,旨在识别和区分结直肠癌。在本研究中,包含24个类别的CKHK - 22数据集作为引入。所提出的方法结合了卷积神经网络(CNNs)、离散小波变换(DWTs)和支持向量机(SVMs),提高了特征提取和分类的准确性。该研究采用离散小波变换来优化和增强两个集成的卷积神经网络模型,然后按照系统程序用支持向量机对其进行分类。PolynetDWTCADx是我们评估的最有效模型。它在测试期间能够达到中等水平的召回率,以及曲线下面积(AUC)和准确率。测试准确率为92.3%,训练准确率为95.0%。这表明该模型能够区分结肠中的非癌性和癌性病变。我们还可以采用U - Net架构的语义分割算法来准确识别和分割结直肠癌区域。基于交并比(IoU)分数,我们使用其最大IoU值0.93评估了该模型在分割和提供恶性组织精确轮廓方面的卓越成效。当将这些技术添加到PolynetDWTCADx中时,它们为医生提供了诊断和治疗规划所需的详细视觉信息。这些技术在发现和分离结直肠癌方面也非常出色。正如本研究所强调的,PolynetDWTCADx有潜力提高结直肠癌的识别和管理水平。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e0ea/11701104/43fcaaacf6af/41598_2025_85156_Fig1_HTML.jpg

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