Medical Imaging Department, Weifang Medical University, Weifang, Shandong, PR China.
Department of Radiology, WeiFang Traditional Chinese Hospital, Weifang, Shandong, PR China.
Acta Radiol. 2024 Feb;65(2):185-194. doi: 10.1177/02841851231215464. Epub 2023 Dec 19.
It has been reported that patients with early breast cancer with 1-2 positive sentinel lymph nodes have a lower risk of non-sentinel lymph node (NSLN) metastasis and cannot benefit from axillary lymph node dissection.
To develop the potential of machine learning based on multiparametric magnetic resonance imaging (MRI) and clinical factors for predicting the risk of NSLN metastasis in breast cancer.
This retrospective study included 144 patients with 1-2 positive sentinel lymph node breast cancer. Multiparametric MRI morphologic findings and the detailed demographical characteristics of the primary tumor and axillary lymph node were extracted. The logistic regression, support vector classification, extreme gradient boosting, and random forest algorithm models were established to predict the risk of NSLN metastasis. The prediction efficiency of a machine-learning-based model was evaluated. Finally, the relative importance of each input variable was analyzed for the best model.
Of the 144 patients, 80 (55.6%) developed NSLN metastasis. A total of 24 imaging features and 14 clinicopathological features were analyzed. The extreme gradient boosting algorithm had the strongest prediction efficiency with an area under curve of 0.881 and 0.781 in the training set and test set, respectively. Five main factors for the metastasis of NSLN were found, including histological grade, cortical thickness, fatty hilum, short axis of lymph node, and age.
The machine-learning model incorporating multiparametric MRI features and clinical factors can predict NSLN metastasis with high accuracy for breast cancer and provide predictive information for clinical protocol.
据报道,1-2 枚前哨淋巴结阳性的早期乳腺癌患者发生非前哨淋巴结(NSLN)转移的风险较低,不能从腋窝淋巴结清扫中获益。
基于多参数磁共振成像(MRI)和临床因素,开发机器学习预测乳腺癌 NSLN 转移风险的潜力。
本回顾性研究纳入了 144 例 1-2 枚前哨淋巴结阳性的乳腺癌患者。提取多参数 MRI 形态学发现以及原发肿瘤和腋窝淋巴结的详细人口统计学特征。建立逻辑回归、支持向量分类、极端梯度增强和随机森林算法模型,以预测 NSLN 转移的风险。评估基于机器学习的模型的预测效率。最后,分析最佳模型中每个输入变量的相对重要性。
在 144 例患者中,80 例(55.6%)发生了 NSLN 转移。共分析了 24 个影像学特征和 14 个临床病理特征。极端梯度增强算法的预测效率最强,在训练集和测试集中的曲线下面积分别为 0.881 和 0.781。发现了 5 个导致 NSLN 转移的主要因素,包括组织学分级、皮质厚度、脂肪门、淋巴结短轴和年龄。
结合多参数 MRI 特征和临床因素的机器学习模型可以准确预测乳腺癌的 NSLN 转移,为临床方案提供预测信息。