Application of Graph Based Features in Computer Aided Diagnosis for Histopathological Image Classification of Gastric Cancer
Haiqing Zhang, Chen Li, Shiliang Ai, Haoyuan Chen, Yuchao Zheng, Yixin, Li, Xiaoyan Li, Hongzan Sun, Xinyu Huang, Marcin Grzegorzek

TL;DR
This study introduces a graph-based feature extraction method combined with advanced segmentation and classification techniques to improve gastric cancer detection accuracy in histopathological images, achieving 94.29% accuracy.
Contribution
It presents a novel combination of graph-based features and deep learning segmentation methods for enhanced gastric cancer cell classification.
Findings
U-Net segmentation with graph features yields best results.
RBF SVM classifier achieves 94.29% accuracy.
Comparison of multiple segmentation and classification methods.
Abstract
The gold standard for gastric cancer detection is gastric histopathological image analysis, but there are certain drawbacks in the existing histopathological detection and diagnosis. In this paper, based on the study of computer aided diagnosis system, graph based features are applied to gastric cancer histopathology microscopic image analysis, and a classifier is used to classify gastric cancer cells from benign cells. Firstly, image segmentation is performed, and after finding the region, cell nuclei are extracted using the k-means method, the minimum spanning tree (MST) is drawn, and graph based features of the MST are extracted. The graph based features are then put into the classifier for classification. In this study, different segmentation methods are compared in the tissue segmentation stage, among which are Level-Set, Otsu thresholding, watershed, SegNet, U-Net and Trans-U-Net…
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Taxonomy
TopicsRadiomics and Machine Learning in Medical Imaging · E-commerce and Technology Innovations
MethodsSoftmax · Average Pooling · Auxiliary Classifier · Dropout · Dense Connections · 1x1 Convolution · Kaiming Initialization · Batch Normalization · Label Smoothing · Inception-v3 Module
