Optimized Breast Cancer Premature Detection Method With Computational Segmentation

S. Saeed, N. Jhanjhi, M. Naqvi, Mamoona Humyun, Muneer Ahmad, Loveleen Gaur
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引用次数: 10

Abstract

Breast cancer is the most common cancer in women aged 59 to 69 years old. Studies have shown that early detection and treatment of breast cancer increases the chances of survival significantly. They also demonstrated that detecting small lesions early improves forecasting and results in a significant reduction in death cases. The most effective screening diagnostic technique in this case is mammography. However, interpretation of mammograms is difficult due to small differences in tissue densities within mammographic images. This is especially true for dense breasts, and this study suggests that screening mammography is more effective in fatty breast tissue than in dense breast tissue. This study focuses on breast cancer diagnosis as well as identifying risk factors and their assessments of breast cancer as well as premature detection of breast cancer by analyzing 3D MRI mammography methods and segmentation of mammographic images using machine learning.
基于计算分割优化的乳腺癌早期检测方法
乳腺癌是59至69岁女性最常见的癌症。研究表明,乳腺癌的早期发现和治疗大大增加了生存的机会。他们还证明,早期发现小病变可以改善预测,并显著减少死亡病例。在这种情况下,最有效的筛查诊断技术是乳房x光检查。然而,由于乳房x光片图像中组织密度的微小差异,解释乳房x光片是困难的。对于致密的乳房尤其如此,这项研究表明,乳房x光筛查在脂肪性乳房组织中比在致密性乳房组织中更有效。本研究通过分析3D MRI乳房x线摄影方法和使用机器学习对乳房x线摄影图像进行分割,重点研究乳腺癌的诊断、识别乳腺癌的危险因素及其评估以及乳腺癌的早期检测。
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