利用深度语义特征和 GLCM 纹理特征对胃癌癌期进行分类

Sikandar Ali, Samman Fatima, Ali Hussain, Maisam Ali, Muhammad Yaseen, Tagne Poupi Theodore Armand, Hee-Cheol Kim
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引用次数: 0

摘要

胃癌是导致癌症相关死亡的主要健康问题之一。癌症的棘手之处在于,它往往在较高阶段才被发现,这使得治疗效果大打折扣。胃癌的致死率很高,这凸显了精确和及时诊断的重要性。本文旨在通过提出一种对胃癌早期和晚期进行分类的方法来解决这一问题。这项研究的重要性源于其双管齐下的策略,即利用纹理分析和深度学习加深对胃癌分期的理解。我们利用深度学习特征、灰度共现矩阵(GLCM)特征和机器学习算法的优势,创造出一种更精确、更准确的诊断工具。为开发该模型,我们采用了胃癌数据集中显示早期和晚期胃癌癌变的医学图像。我们的方法结合了从 GLCM 提取的纹理特征和深度语义特征,并使用机器学习模型对阶段进行分类。我们仔细评估了机器学习分类器,即支持向量机(SVM)、决策树(DT)和 K-近邻(KNN),以对早期和晚期进行分类。每个分类器都采用了不同的性能指标进行评估。支持向量机(SVM)分类器的准确率高达 96.93%,表现最佳。这凸显了 SVM 在诊断不同癌症分期方面的潜力,对临床实践具有积极意义。
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Classifying Gastric Cancer Carcinoma Stages with Deep Semantic Features and GLCM Texture Features
Gastric cancer is one of the leading health issues that contributes to cancer related deaths. The tricky thing about cancer is that it often goes undetected until at higher stages, which makes treatment less effective. The significant death rate from gastric cancer highlights the importance of a precise and prompt diagnosis. This paper aims to tackle this problem by proposing an approach to classify the early and advanced stages of gastric cancer. This importance of this study stems from its two-pronged strategy, which provides a deeper understanding of stomach cancer stages using texture analysis and deep learning. We take advantage of the strengths of deep learning features, Gray Level Co-occurrence Matrix (GLCM) features, and machine learning algorithm to create a diagnostic tool that is more precise and accurate. Medical images from gastric cancer dataset showing early and advanced stages of gastric cancers carcinoma are included to develop this model. Our method combines the effectiveness of texture features extracted from GLCM combined with deep semantic features and classify the stages with machine learning model. We carefully evaluated Machine learning classifiers namely Support Vector Machine (SVM), Decision Tree (DT), and K-nearest neighbour (KNN) to classify the early and advanced stages. Each classifier was evaluated with different performance measures. The Support Vector Machine (SVM) classifier demonstrated the best performance with an accuracy of 96.93%. This highlights the potential of SVM for diagnosing different cancer stages, which could have positive implications, for clinical practice.
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