Breast Service, Department of Surgery, Memorial Sloan Kettering Cancer Center, New York, NY, 10065, USA.
Department of Pathology, Memorial Sloan Kettering Cancer Center, New York, NY, 10065, USA.
Breast Cancer Res Treat. 2022 Dec;196(3):565-570. doi: 10.1007/s10549-022-06763-5. Epub 2022 Oct 21.
The use of the Oncotype DX recurrence score (RS) to predict chemotherapy benefit in patients with hormone receptor-positive/HER2 negative (HR+/HER2-) breast cancer has recently expanded to include postmenopausal patients with N1 disease. RS availability is limited in resource-poor settings, however, prompting the development of statistical models that predict RS using clinicopathologic features. We sought to assess the performance of our supervised machine learning model in a cohort of patients > 50 years of age with N1 disease.
We identified patients > 50 years of age with pT1-2N1 HR+/HER2- breast cancer and applied the statistical model previously developed in a node-negative cohort, which uses age, pathologic tumor size, histology, progesterone receptor expression, lymphovascular invasion, and tumor grade to predict RS. We measured the model's ability to predict RS risk category (low: RS ≤ 25; high: RS > 25).
Our cohort included 401 patients, 60.6% of whom had macrometastases, with a median of 1 positive node. The majority of patients had a low-risk observed RS (85.8%). For predicting RS category, the model had specificity of 97.3%, sensitivity of 31.8%, a negative predictive value of 87.9%, and a positive predictive value of 70.0%.
Our model, developed in a cohort of node-negative patients, was highly specific for identifying cN1 patients > 50 years of age with a low RS who could safely avoid chemotherapy. The use of this model for identifying patients in whom genomic testing is unnecessary would help decrease the cost burden in resource-poor settings as reliance on RS for adjuvant treatment recommendations increases.
最近,Oncotype DX 复发评分(RS)被用于预测激素受体阳性/HER2 阴性(HR+/HER2-)乳腺癌患者的化疗获益,其中包括绝经后 N1 期患者。然而,在资源匮乏的环境中,RS 的可用性有限,因此开发了使用临床病理特征预测 RS 的统计模型。我们试图在一组年龄>50 岁且患有 N1 疾病的患者中评估我们的监督机器学习模型的性能。
我们确定了年龄>50 岁、患有 pT1-2N1 HR+/HER2-乳腺癌且应用之前在淋巴结阴性队列中开发的统计模型的患者,该模型使用年龄、病理肿瘤大小、组织学、孕激素受体表达、脉管侵犯和肿瘤分级来预测 RS。我们测量了该模型预测 RS 风险类别的能力(低:RS≤25;高:RS>25)。
我们的队列包括 401 名患者,其中 60.6%有巨转移,中位阳性淋巴结数为 1 个。大多数患者的观察 RS 风险较低(85.8%)。对于预测 RS 类别,该模型的特异性为 97.3%,敏感性为 31.8%,阴性预测值为 87.9%,阳性预测值为 70.0%。
我们的模型是在一组淋巴结阴性患者中开发的,对于识别年龄>50 岁且 RS 较低的 cN1 患者,特异性很高,这些患者可以安全地避免化疗。在资源匮乏的环境中,使用该模型来识别不需要进行基因组检测的患者,有助于降低成本负担,因为对 RS 用于辅助治疗建议的依赖增加。