Cheng Chen, Wang Yan, Zhao Jine, Wu Di, Li Honge, Zhao Hongyan
Department of Ultrasound, Lianyungang Traditional Chinese Medicine Hospital, Lianyungang, 222004, People's Republic of China.
Department of Ultrasound, Lianyungang Municipal Oriental Hospital, Lianyungang, 222046, People's Republic of China.
J Multidiscip Healthc. 2025 Jan 21;18:319-327. doi: 10.2147/JMDH.S509004. eCollection 2025.
Triple-negative breast cancer (TNBC) is a unique breast cancer subtype characterized by the lack of estrogen receptor (ER), progesterone receptor (PR), and human epidermal growth factor receptor 2 (HER2) expression in tumor cells. TNBC represents about 15% to 20% of all breast cancers and is aggressive and highly malignant. Currently, TNBC diagnosis primarily depends on pathological examination, while treatment efficacy is assessed through imaging, biomarker detection, pathological evaluation, and clinical symptom improvement. Among these, biomarker detection and pathological assessments are invasive, time-intensive procedures that may be difficult for patients with severe comorbidities and high complication risks. Thus, there is an urgent need for new, supportive tools in TNBC diagnosis and treatment. Deep learning and radiomics techniques represent advanced machine learning methodologies and are also emerging outcomes in the medical-engineering field in recent years. They are extensions of conventional imaging diagnostic methods and have demonstrated tremendous potential in image segmentation, reconstruction, recognition, and classification. These techniques hold certain application prospects for the diagnosis of TNBC, assessment of treatment response, and long-term prognosis prediction. This article reviews recent progress in the application of deep learning, ultrasound, MRI, and radiomics for TNBC diagnosis and treatment, based on research from both domestic and international scholars.
三阴性乳腺癌(TNBC)是一种独特的乳腺癌亚型,其特征是肿瘤细胞中缺乏雌激素受体(ER)、孕激素受体(PR)和人表皮生长因子受体2(HER2)的表达。TNBC约占所有乳腺癌的15%至20%,具有侵袭性且恶性程度高。目前,TNBC的诊断主要依赖于病理检查,而治疗效果则通过影像学检查、生物标志物检测、病理评估和临床症状改善来评估。其中,生物标志物检测和病理评估是侵入性的、耗时的程序,对于患有严重合并症和高并发症风险的患者来说可能具有难度。因此,在TNBC的诊断和治疗中迫切需要新的辅助工具。深度学习和放射组学技术代表了先进的机器学习方法,也是近年来医学工程领域的新兴成果。它们是传统影像诊断方法的延伸,在图像分割、重建、识别和分类方面已显示出巨大潜力。这些技术在TNBC的诊断、治疗反应评估和长期预后预测方面具有一定的应用前景。本文基于国内外学者的研究,综述了深度学习、超声、MRI和放射组学在TNBC诊断和治疗中的应用进展。