Jin He, Gao Yunhai
Department of General Surgery, Liaoning University of Traditional Chinese Medicine Affiliated Hospital Shenyang 110032, Liaoning, China.
Am J Cancer Res. 2024 Dec 25;14(12):5987-5998. doi: 10.62347/VTEW9920. eCollection 2024.
The involvement of axillary lymph nodes (ALNs) is a critical prognostic factor affecting patient management and outcomes in breast cancer (BC). This study aims to comprehensively analyze the clinical data of BC patients, evaluate ultrasonic signs of ALNs, and explore the implications of a prediction model for ALN metastasis (ALNM) in early-stage BC patients based on ultrasonic features and clinical data. This study retrospectively analyzed ultrasonic features and clinical data from 216 patients diagnosed with unilateral invasive BC. The dataset was divided into a training (n = 162) and a validation set (n = 54) in a 3:1 ratio. Patients were then assigned into metastasis and non-metastasis groups depending on ALNM determined by pathological findings. Univariate analysis of various indicators followed by multivariate Logistic regression analysis was performed on the training set. A prediction model for ALNM in BC was established using binary logistic regression analysis, with its prediction performance evaluated by receiver operating characteristic curves (ROC) and area under the curve (AUC), and its reproducibility verified by the validation set. The pathological findings identified 57 (35.2%) cases of ALNM among 162 BC patients in the training set. Risk factors for ALNM included poorly differentiated type, high Ki-67 expression, lymph node (LN) aspect ratio ≥2, LN cortical thickness ≥1/2 of lymphatic hilum diameter, and mixed or peripheral LN blood flow. Protective factors included mass location in the outer upper quadrant and LN size >1 cm. A prediction model was established based on risk factors, with the equation being Logit (P) = -4.881 - 1.285 * differentiation degree + 1.485 * Ki-67 - 1.090 * lump quadrant - 0.956 * lymph node size + 1.244 * lymph aspect ratio + 1.032 * LN cortical thickness + 1.454 * LN medullary disappearance + 1.266 * LN blood flow. ROC analysis of the model yielded an AUC of 0.866, with a sensitivity of 80.7% and a specificity of 80.0%. The prediction model was validated using the validation set, producing an AUC of 0.809. These results demonstrate that color Doppler ultrasound effectively evaluates ALN status in BC patients. The prediction model for ALNM in BC shows strong accuracy and has potential clinical application.
腋窝淋巴结(ALNs)受累是影响乳腺癌(BC)患者管理和预后的关键预后因素。本研究旨在全面分析BC患者的临床资料,评估ALNs的超声征象,并基于超声特征和临床数据探索早期BC患者ALN转移(ALNM)预测模型的意义。本研究回顾性分析了216例单侧浸润性BC患者的超声特征和临床资料。数据集按3:1的比例分为训练集(n = 162)和验证集(n = 54)。然后根据病理结果确定的ALNM将患者分为转移组和非转移组。对训练集进行各种指标的单因素分析,随后进行多因素Logistic回归分析。采用二元Logistic回归分析建立BC患者ALNM的预测模型,通过受试者工作特征曲线(ROC)和曲线下面积(AUC)评估其预测性能,并通过验证集验证其可重复性。病理结果显示,训练集162例BC患者中有57例(35.2%)发生ALNM。ALNM的危险因素包括低分化类型、高Ki-67表达、淋巴结(LN)纵横比≥2、LN皮质厚度≥淋巴门直径的1/2以及混合或周边LN血流。保护因素包括肿块位于外上象限和LN大小>1 cm。基于危险因素建立了预测模型,方程为Logit(P)=-4.881 - 1.285×分化程度 + 1.485×Ki-67 - 1.090×肿块象限 - 0.956×淋巴结大小 + 1.244×淋巴纵横比 + 1.032×LN皮质厚度 + 1.454×LN髓质消失 + 1.