Application of graph-curvature features in computer-aided diagnosis for histopathological image identification of gastric cancer

IF 4.4 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Intelligent medicine Pub Date : 2024-08-01 DOI:10.1016/j.imed.2024.02.001
Ruilin He , Chen Li , Xinyi Yang , Jinzhu Yang , Tao Jiang , Marcin Grzegorzek , Hongzan Sun
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Abstract

Background

Histopathology diagnosis is often regarded as the final diagnostic method for malignant tumors; however, it has some drawbacks. This study explored a computer-aided diagnostic method that can be used to identify benign and malignant gastric cancer using histopathological images.

Methods

The most suitable process was selected through multiple experiments by comparing multiple methods and features for classification. First, the U-net was applied to segment the image. Next, the nucleus was extracted from the segmented image, and the minimum spanning tree (MST) diagram structure that can capture the topological information was drawn. The third step was to extract the graph-curvature features of the histopathological image according to the MST image. Finally, by inputting the graph-curvature features into the classifier, the recognition results for benign or malignant cancer can be obtained.

Results

During the experiment, we used various methods for comparison. In the image segmentation stage, U-net, watershed algorithm, and Otsu threshold segmentation methods were used. We found that the U-net method, combined with multiple indicators, was the most suitable for segmentation of histopathological images. In the feature extraction stage, in addition to extracting graph-edge and graph-curvature features, several basic image features were extracted, including the red, green and blue feature, gray-level co-occurrence matrix feature, histogram of oriented gradient feature, and local binary pattern feature. In the classifier design stage, we experimented with various methods, such as support vector machine (SVM), random forest, artificial neural network, K nearest neighbors, VGG-16, and inception-V3. Through comparison and analysis, it was found that classification results with an accuracy of 98.57% can be obtained by inputting the graph-curvature feature into the SVM classifier.

Conclusion

This study created a unique feature, the graph-curvature feature, based on the MST to represent and analyze histopathological images. This graph-based feature could be used to identify benign and malignant cells in histopathological images and assist pathologists in diagnosis.

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图曲率特征在胃癌组织病理图像识别计算机辅助诊断中的应用
背景组织病理学诊断通常被认为是恶性肿瘤的最终诊断方法,但它也有一些缺点。本研究探讨了一种计算机辅助诊断方法,该方法可用于利用组织病理学图像识别良性和恶性胃癌。首先,应用 U-net 对图像进行分割。其次,从分割后的图像中提取细胞核,并绘制能捕捉拓扑信息的最小生成树(MST)图结构。第三步是根据 MST 图像提取组织病理学图像的图曲率特征。最后,将图曲率特征输入分类器,即可得到良性或恶性癌症的识别结果。在图像分割阶段,我们使用了 U-net、分水岭算法和大津阈值分割法。我们发现,结合多种指标的 U-net 方法最适合组织病理学图像的分割。在特征提取阶段,除了提取图边和图曲率特征外,还提取了几个基本的图像特征,包括红绿蓝特征、灰度级共现矩阵特征、定向梯度直方图特征和局部二进制模式特征。在分类器设计阶段,我们尝试了多种方法,如支持向量机(SVM)、随机森林、人工神经网络、K 近邻、VGG-16 和 inception-V3。通过比较和分析,我们发现将图曲率特征输入 SVM 分类器可获得准确率高达 98.57% 的分类结果。 结论 本研究基于 MST 创建了一种独特的特征--图曲率特征,用于表示和分析组织病理学图像。这种基于图的特征可用于识别组织病理学图像中的良性和恶性细胞,帮助病理学家进行诊断。
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来源期刊
Intelligent medicine
Intelligent medicine Surgery, Radiology and Imaging, Artificial Intelligence, Biomedical Engineering
CiteScore
5.20
自引率
0.00%
发文量
19
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