Breast cancer is a disease that threatens many women's life, thus, early and accurate detection plays a key role in reducing the mortality rate. Mammography stands as the reference technique for breast cancer screening; nevertheless, many countries still lack access to mammograms due to economic, social, and cultural issues. Last advances in computational tools, infrared cameras, and devices for bio-impedance quantification allowed the development of parallel techniques like thermography, infrared imaging, and electrical impedance tomography, these being faster, reliable and cheaper. In the last decades, these have been considered as complement procedures for breast cancer diagnosis, where many studies concluded that false positive and false negative rates are greatly reduced. This work aims to review the last breakthroughs about the three above-mentioned techniques describing the benefits of mixing several computational skills to obtain a better global performance. In addition, we provide a comparison between several machine learning techniques applied to breast cancer diagnosis going from logistic regression, decision trees, and random forest to artificial, deep, and convolutional neural networks. Finally, it is mentioned several recommendations for 3D breast simulations, pre-processing techniques, biomedical devices in the research field, prediction of tumor location and size.
翻译:乳腺癌是一种威胁许多妇女生命的疾病,因此,早期和准确的检测在降低死亡率方面起着关键作用。乳房造影是乳腺癌筛查的参考技术;然而,由于经济、社会和文化问题,许多国家仍然缺乏获得乳房X光照片的机会。计算工具、红外摄像头和生物抑制定量装置的最新进展使得可以开发平行技术,如热量成像、红外成像和妨碍电气成像造影等,这些技术速度更快、可靠而且费用更低。在过去几十年中,这些被认为是乳腺癌诊断的补充程序,许多研究的结论是,假正反率大大降低。这项工作的目的是审查上述三种技术的最后突破,这些技术说明了混合几种计算技能以取得更好的全球性能的好处。此外,我们比较了用于乳腺癌诊断的若干机器学习技术,这些技术来自逻辑回归、决策树和随机森林,以及人工、深层和进化神经网络。最后,它提到了关于3D乳房模拟、预处理技术、研究领域生物医学设备、肿瘤位置和大小预测的若干建议。