Kim Min Chong, Kwon Sun Young, Choi Jung Eun, Kang Su Hwan, Bae Young Kyung
Department of Pathology, Yeungnam University College of Medicine, Daegu, Korea.
Department of Pathology, Keimyung University School of Medicine, Daegu, Korea.
J Breast Cancer. 2023 Apr;26(2):105-116. doi: 10.4048/jbc.2023.26.e19.
Oncotype DX (ODX) is a well-validated multigene assay that is increasingly used in Korean clinical practice. This study aimed to develop a clinicopathological prediction (CPP) model for the ODX recurrence scores (RSs).
A total of 297 patients (study group, n = 175; external validation group, n = 122) with estrogen receptor-positive, human epidermal growth factor receptor 2 (HER2)-negative, T1-3N0-1M0 breast cancer, and available ODX test results were included in the study. Risk categorization as determined by ODX RSs concurred with the TAILORx study (low-risk, RS ≤ 25; high-risk, RS > 25). Univariate and multivariate logistic regression analyses were used to assess the relationships between clinicopathological variables and risk stratified by the ODX RSs. A CPP model was constructed based on regression coefficients (β values) for clinicopathological variables significant by multivariate regression analysis.
Progesterone receptor (PR) negativity, high Ki-67 index, and nuclear grade (NG) 3 independently predicted high-risk RS, and these variables were used to construct the CPP model. The C-index, which represented the discriminatory ability of our CPP model for predicting a high-risk RS, was 0.915 (95% confidence interval [CI], 0.859-0.971). When the CPP model was applied to the external validation group, the C-index was 0.926 (95% CI, 0.873-0.978).
Our CPP model based on PR, Ki-67 index, and NG could aid in the selection of patients with breast cancer requiring an ODX test.
Oncotype DX(ODX)是一种经过充分验证的多基因检测方法,在韩国临床实践中的应用越来越广泛。本研究旨在开发一种针对ODX复发评分(RS)的临床病理预测(CPP)模型。
本研究纳入了297例雌激素受体阳性、人表皮生长因子受体2(HER2)阴性、T1 - 3N0 - 1M0乳腺癌患者(研究组,n = 175;外部验证组,n = 122),且均有可用的ODX检测结果。ODX RS确定的风险分类与TAILORx研究一致(低风险,RS≤25;高风险,RS>25)。采用单因素和多因素逻辑回归分析来评估临床病理变量与ODX RS分层风险之间的关系。基于多因素回归分析中具有统计学意义的临床病理变量的回归系数(β值)构建CPP模型。
孕激素受体(PR)阴性、高Ki-67指数和核分级(NG)3独立预测高风险RS,这些变量用于构建CPP模型。代表我们的CPP模型预测高风险RS的鉴别能力的C指数为0.915(95%置信区间[CI],0.859 - 0.971)。当将CPP模型应用于外部验证组时,C指数为0.926(95%CI,0.873 - 0.978)。
我们基于PR、Ki-67指数和NG的CPP模型有助于选择需要进行ODX检测的乳腺癌患者。