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Breast MRI Tumor Automatic Segmentation and Triple-Negative Breast Cancer Discrimination Algorithm Based on Deep Learning

Overview
Publisher Hindawi
Date 2022 Sep 12
PMID 36092784
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Abstract

Background: Breast cancer is a kind of cancer that starts in the epithelial tissue of the breast. Breast cancer has been on the rise in recent years, with a younger generation developing the disease. Magnetic resonance imaging (MRI) plays an important role in breast tumor detection and treatment planning in today's clinical practice. As manual segmentation grows more time-consuming and the observed topic becomes more diversified, automated segmentation becomes more appealing. . For MRI breast tumor segmentation, we propose a CNN-SVM network. The labels from the trained convolutional neural network are output using a support vector machine in this technique. During the testing phase, the convolutional neural network's labeled output, as well as the test grayscale picture, is passed to the SVM classifier for accurate segmentation.

Results: We tested on the collected breast tumor dataset and found that our proposed combined CNN-SVM network achieved 0.93, 0.95, and 0.92 on DSC coefficient, PPV, and sensitivity index, respectively. We also compare with the segmentation frameworks of other papers, and the comparison results prove that our CNN-SVM network performs better and can accurately segment breast tumors.

Conclusion: Our proposed CNN-SVM combined network achieves good segmentation results on the breast tumor dataset. The method can adapt to the differences in breast tumors and segment breast tumors accurately and efficiently. It is of great significance for identifying triple-negative breast cancer in the future.

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References
1.
Harbeck N, Penault-Llorca F, Cortes J, Gnant M, Houssami N, Poortmans P . Breast cancer. Nat Rev Dis Primers. 2019; 5(1):66. DOI: 10.1038/s41572-019-0111-2. View

2.
Lu Y, Fu X, Chen F, Wong K . Prediction of fetal weight at varying gestational age in the absence of ultrasound examination using ensemble learning. Artif Intell Med. 2020; 102:101748. DOI: 10.1016/j.artmed.2019.101748. View

3.
MacMahon B, Cole P, Brown J . Etiology of human breast cancer: a review. J Natl Cancer Inst. 1973; 50(1):21-42. DOI: 10.1093/jnci/50.1.21. View

4.
Wong K, Sun Z, Tu J, Worthley S, Mazumdar J, Abbott D . Medical image diagnostics based on computer-aided flow analysis using magnetic resonance images. Comput Med Imaging Graph. 2012; 36(7):527-41. DOI: 10.1016/j.compmedimag.2012.04.003. View

5.
Wang G, Zhu H, Bi S . Pathological features and prognosis of different molecular subtypes of breast cancer. Mol Med Rep. 2012; 6(4):779-82. DOI: 10.3892/mmr.2012.981. View