Department of Radiology, Netherlands Cancer Institute (NKI), Amsterdam, The Netherlands; Department of Medical Imaging, Radboud University Medical Center, Nijmegen, The Netherlands.
Department of Medical Imaging, Radboud University Medical Center, Nijmegen, The Netherlands; Department of Radiation Oncology, Netherlands Cancer Institute (NKI), Amsterdam, The Netherlands.
Semin Nucl Med. 2022 Sep;52(5):584-596. doi: 10.1053/j.semnuclmed.2022.02.003. Epub 2022 Mar 24.
This review gives an overview of the current state of deep learning research in breast cancer imaging. Breast imaging plays a major role in detecting breast cancer at an earlier stage, as well as monitoring and evaluating breast cancer during treatment. The most commonly used modalities for breast imaging are digital mammography, digital breast tomosynthesis, ultrasound and magnetic resonance imaging. Nuclear medicine imaging techniques are used for detection and classification of axillary lymph nodes and distant staging in breast cancer imaging. All of these techniques are currently digitized, enabling the possibility to implement deep learning (DL), a subset of Artificial intelligence, in breast imaging. DL is nowadays embedded in a plethora of different tasks, such as lesion classification and segmentation, image reconstruction and generation, cancer risk prediction, and prediction and assessment of therapy response. Studies show similar and even better performances of DL algorithms compared to radiologists, although it is clear that large trials are needed, especially for ultrasound and magnetic resonance imaging, to exactly determine the added value of DL in breast cancer imaging. Studies on DL in nuclear medicine techniques are only sparsely available and further research is mandatory. Legal and ethical issues need to be considered before the role of DL can expand to its full potential in clinical breast care practice.
这篇综述概述了深度学习在乳腺癌成像中的研究现状。乳腺成像在早期检测乳腺癌、监测和评估治疗期间的乳腺癌方面发挥着重要作用。乳腺成像最常用的方式是数字乳腺 X 线摄影、数字乳腺断层合成、超声和磁共振成像。核医学成像技术用于乳腺癌成像中腋窝淋巴结的检测和分类以及远处分期。所有这些技术目前都已数字化,使得在乳腺成像中实现深度学习(DL),即人工智能的一个子集,成为可能。DL 如今被嵌入到许多不同的任务中,例如病变分类和分割、图像重建和生成、癌症风险预测,以及治疗反应的预测和评估。研究表明,DL 算法的性能与放射科医生相似,甚至更好,尽管显然需要进行大规模试验,特别是对于超声和磁共振成像,以确切确定 DL 在乳腺癌成像中的附加价值。关于核医学技术中的 DL 的研究很少,需要进一步研究。在 DL 在临床乳腺护理实践中的作用充分发挥之前,需要考虑法律和伦理问题。