Department of Pathology, National Taiwan University Hospital, Taipei, Taiwan.
Center for Intelligent Healthcare, National Taiwan University Hospital, Taipei, Taiwan.
Histopathology. 2024 May;84(6):983-1002. doi: 10.1111/his.15144. Epub 2024 Jan 30.
Risk stratification of atypical ductal hyperplasia (ADH) and ductal carcinoma in situ (DCIS), diagnosed using breast biopsy, has great clinical significance. Clinical trials are currently exploring the possibility of active surveillance for low-risk lesions, whereas axillary lymph node staging may be considered during surgical planning for high-risk lesions. We aimed to develop a machine-learning algorithm based on whole-slide images of breast biopsy specimens and clinical information to predict the risk of upstaging to invasive breast cancer after wide excision.
Patients diagnosed with ADH/DCIS on breast biopsy were included in this study, comprising 592 (740 slides) and 141 (198 slides) patients in the development and independent testing cohorts, respectively. Histological grading of the lesions was independently evaluated by two pathologists. Clinical information, including biopsy method, lesion size, and Breast Imaging Reporting and Data System (BI-RADS) classification of ultrasound and mammograms, were collected. Deep DCIS consisted of three deep neural networks to evaluate nuclear grade, necrosis, and stromal reactivity. Deep DCIS output comprised five parameters: total patches, lesion extent, Deep Grade, Deep Necrosis, and Deep Stroma. Deep DCIS highly correlated with the pathologists' evaluations of both slide- and patient-level labels. All five parameters of Deep DCIS were significantly associated with upstaging to invasive carcinoma in subsequent wide excisional specimens. Using multivariate logistic regression, Deep DCIS predicted upstaging to invasive carcinoma with an area under the curve (AUC) of 0.81, outperforming pathologists' evaluation (AUC, 0.71 and 0.69). After including clinical and hormone receptor status information, performance further improved (AUC, 0.87). This combined model retained its predictive power in two subgroup analyses: the first subgroup included unequivocal DCIS (excluding cases of ADH and DCIS suspicious for microinvasion) (AUC, 0.83), while the second excluded cases of high-grade DCIS (AUC, 0.81). The model was validated in an independent testing cohort (AUC, 0.81).
This study demonstrated that deep-learning models can refine histological evaluation of ADH and DCIS on breast biopsies, which may help guide future treatment planning.
对经乳腺活检诊断的非典型导管增生(ADH)和导管原位癌(DCIS)进行风险分层具有重要的临床意义。目前,临床试验正在探索对低风险病变进行主动监测的可能性,而对于高风险病变,在手术规划时可能需要考虑腋窝淋巴结分期。我们旨在开发一种基于乳腺活检标本全切片图像和临床信息的机器学习算法,以预测广泛切除后浸润性乳腺癌升级的风险。
本研究纳入了经乳腺活检诊断为 ADH/DCIS 的患者,其中发展队列和独立测试队列分别包含 592 例(740 张切片)和 141 例(198 张切片)患者。两名病理学家独立评估病变的组织学分级。收集了临床信息,包括活检方法、病变大小以及超声和乳房 X 线摄影的乳腺影像报告和数据系统(BI-RADS)分类。深度 DCIS 由三个深度神经网络组成,用于评估核级、坏死和基质反应性。深度 DCIS 的输出包括五个参数:总斑块、病变范围、深度等级、深度坏死和深度基质。深度 DCIS 与病理学家对切片和患者水平标签的评估高度相关。深度 DCIS 的所有五个参数均与随后广泛切除标本中浸润性癌的升级显著相关。使用多变量逻辑回归,深度 DCIS 预测浸润性癌升级的曲线下面积(AUC)为 0.81,优于病理学家的评估(AUC 为 0.71 和 0.69)。在包括临床和激素受体状态信息后,性能进一步提高(AUC 为 0.87)。该联合模型在两个亚组分析中保留了其预测能力:第一个亚组包括明确的 DCIS(不包括 ADH 和疑似微浸润的 DCIS 病例)(AUC 为 0.83),第二个亚组排除了高级别 DCIS 病例(AUC 为 0.81)。该模型在独立测试队列中得到验证(AUC 为 0.81)。
本研究表明,深度学习模型可以细化乳腺活检中 ADH 和 DCIS 的组织学评估,这可能有助于指导未来的治疗计划。