DSpace Repository

Graph Neural Network-Based Breast Cancer Diagnosis Using Ultrasound Images With Optimized Graph Construction Integrating the Medically Significant Features

Show simple item record

dc.contributor.author Chowa, Sadia Sultana
dc.contributor.author Azam, Sami
dc.contributor.author Montaha, Sidratul
dc.contributor.author Payel, Israt Jahan
dc.contributor.author Bhuiyan, Md Rahad Islam
dc.contributor.author Hasan, Md. Zahid
dc.contributor.author Jonkman, Mirjam
dc.date.accessioned 2024-06-03T06:10:18Z
dc.date.available 2024-06-03T06:10:18Z
dc.date.issued 2023-11-20
dc.identifier.uri http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/12591
dc.description.abstract Purpose An automated computerized approach can aid radiologists in the early diagnosis of breast cancer. In this study, a novel method is proposed for classifying breast tumors into benign and malignant, based on the ultrasound images through a Graph Neural Network (GNN) model utilizing clinically significant features. Method Ten informative features are extracted from the region of interest (ROI), based on the radiologists’ diagnosis mark- ers. The significance of the features is evaluated using density plot and T test statistical analysis method. A feature table is generated where each row represents individual image, considered as node, and the edges between the nodes are denoted by calculating the Spearman correlation coefficient. A graph dataset is generated and fed into the GNN model. The model is configured through ablation study and Bayesian optimization. The optimized model is then evaluated with different cor- relation thresholds for getting the highest performance with a shallow graph. The performance consistency is validated with k-fold cross validation. The impact of utilizing ROIs and handcrafted features for breast tumor classification is evaluated by comparing the model’s performance with Histogram of Oriented Gradients (HOG) descriptor features from the entire ultrasound image. Lastly, a clustering-based analysis is performed to generate a new filtered graph, considering weak and strong relationships of the nodes, based on the similarities. Results The results indicate that with a threshold value of 0.95, the GNN model achieves the highest test accuracy of 99.48%, precision and recall of 100%, and F1 score of 99.28%, reducing the number of edges by 85.5%. The GNN model’s perfor- mance is 86.91%, considering no threshold value for the graph generated from HOG descriptor features. Different threshold values for the Spearman’s correlation score are experimented with and the performance is compared. No significant differ- ences are observed between the previous graph and the filtered graph. Conclusion The proposed approach might aid the radiologists in effective diagnosing and learning tumor pattern of breast cancer. en_US
dc.language.iso en_US en_US
dc.publisher MDPI Publications en_US
dc.subject Automation en_US
dc.subject Computerized approach en_US
dc.subject Breast cancer en_US
dc.subject Diseases en_US
dc.subject Neural networks en_US
dc.title Graph Neural Network-Based Breast Cancer Diagnosis Using Ultrasound Images With Optimized Graph Construction Integrating the Medically Significant Features en_US
dc.type Article en_US


Files in this item

This item appears in the following Collection(s)

Show simple item record

Search DSpace


Browse

My Account

Statistics