Columbia University Irving Medical Center, 622 W 168th St, New York, NY 10032, United States of America.
Clin Imaging. 2023 Aug;100:64-68. doi: 10.1016/j.clinimag.2023.05.007. Epub 2023 May 13.
Breast ultrasound is a valuable adjunctive tool to mammography in detecting breast cancer, especially in women with dense breasts. Ultrasound also plays an important role in staging breast cancer by assessing axillary lymph nodes. However, its utility is limited by operator dependence, high recall rate, low positive predictive value and low specificity. These limitations present an opportunity for artificial intelligence (AI) to improve diagnostic performance and pioneer novel uses of ultrasound. Research in developing AI for radiology has flourished over the past few years. A subset of AI, deep learning, uses interconnected computational nodes to form a neural network, which extracts complex visual features from image data to train itself into a predictive model. This review summarizes several key studies evaluating AI programs' performance in predicting breast cancer and demonstrates that AI can assist radiologists and address limitations of ultrasound by acting as a decision support tool. This review also touches on how AI programs allow for novel predictive uses of ultrasound, particularly predicting molecular subtypes of breast cancer and response to neoadjuvant chemotherapy, which have the potential to change how breast cancer is managed by providing non-invasive prognostic and treatment data from ultrasound images. Lastly, this review explores how AI programs demonstrate improved diagnostic accuracy in predicting axillary lymph node metastasis. The limitations and future challenges in developing and implementing AI for breast and axillary ultrasound will also be discussed.
乳腺超声是一种在检测乳腺癌方面,尤其是在乳腺致密的女性中,对乳腺 X 线摄影有重要补充作用的工具。超声还通过评估腋窝淋巴结在乳腺癌分期中发挥重要作用。然而,其应用受到操作者依赖性、高召回率、低阳性预测值和低特异性的限制。这些局限性为人工智能(AI)改善诊断性能和开创超声新用途提供了机会。在过去几年中,用于放射学的 AI 研究蓬勃发展。AI 的一个子集,深度学习,使用相互连接的计算节点形成神经网络,从图像数据中提取复杂的视觉特征,从而训练自己成为一个预测模型。这篇综述总结了几项关键研究,评估了 AI 程序在预测乳腺癌方面的性能,并表明 AI 可以通过充当决策支持工具来帮助放射科医生,并解决超声的局限性。这篇综述还探讨了 AI 程序如何允许对超声进行新颖的预测用途,特别是预测乳腺癌的分子亚型和对新辅助化疗的反应,这有可能通过从超声图像中提供非侵入性的预后和治疗数据来改变乳腺癌的管理方式。最后,本综述探讨了 AI 程序在预测腋窝淋巴结转移方面如何提高诊断准确性。还将讨论在开发和实施乳腺和腋窝超声的 AI 方面的局限性和未来挑战。