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Automated Breast Tumor Ultrasound Image Segmentation With Hybrid UNet and Classification Using Fine-Tuned CNN Model

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dc.contributor.author Hossain, Shahed
dc.contributor.author Azam, Sami
dc.contributor.author Montaha, Sidratul
dc.contributor.author Karim, Asif
dc.contributor.author Chowa, Sadia Sultana
dc.contributor.author Mondol, Chaity
dc.contributor.author Hasan, Md Zahid
dc.contributor.author Jonkman, Mirjam
dc.date.accessioned 2024-04-28T10:10:47Z
dc.date.available 2024-04-28T10:10:47Z
dc.date.issued 2023-10-20
dc.identifier.uri http://dspace.daffodilvarsity.edu.bd:8080/handle/123456789/12196
dc.description.abstract Introduction Breast cancer stands as the second most deadly form of cancer among women worldwide. Early diagnosis and treatment can significantly mitigate mortality rates. Purpose The study aims to classify breast ultrasound images into benign and malignant tumors. This approach involves segmenting the breast's region of interest (ROI) employing an optimized UNet architecture and classifying the ROIs through an optimized shallow CNN model utilizing an ablation study. Method Several image processing techniques are utilized to improve image quality by removing text, artifacts, and speckle noise, and statistical analysis is done to check the enhanced image quality is satisfactory. With the processed dataset, the segmentation of breast tumor ROI is carried out, optimizing the UNet model through an ablation study where the architectural configuration and hyperparameters are altered. After obtaining the tumor ROIs from the fine-tuned UNet model (RKO-UNet), an optimized CNN model is employed to classify the tumor into benign and malignant classes. To enhance the CNN model's performance, an ablation study is conducted, coupled with the integration of an attention unit. The model's performance is further assessed by classifying breast cancer with mammogram images. Result The proposed classification model (RKONet-13) results in an accuracy of 98.41 %. The performance of the proposed model is further compared with five transfer learning models for both pre-segmented and post-segmented datasets. K-fold cross-validation is done to assess the proposed RKONet-13 model's performance stability. Furthermore, the performance of the proposed model is compared with previous literature, where the proposed model outperforms existing methods, demonstrating its effectiveness in breast cancer diagnosis. Lastly, the model demonstrates its robustness for breast cancer classification, delivering an exceptional performance of 96.21 % on a mammogram dataset. Conclusion The efficacy of this study relies on image pre-processing, segmentation with hybrid attention UNet, and classification with fine-tuned robust CNN model. This comprehensive approach aims to determine an effective technique for detecting breast cancer within ultrasound images. en_US
dc.language.iso en_US en_US
dc.publisher Elsevier en_US
dc.subject Breast cancer en_US
dc.subject Treatment en_US
dc.subject Diseases en_US
dc.subject Image segmentation en_US
dc.title Automated Breast Tumor Ultrasound Image Segmentation With Hybrid UNet and Classification Using Fine-Tuned CNN Model en_US
dc.type Article en_US


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