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Prediction of axillary lymph node metastases in breast cancer patients based on pathologic information of the primary tumor

机译:基于原发肿瘤的病理信息预测乳腺癌患者的腋窝淋巴结转移

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Background Axillary lymph nodes (ALN) are the most commonly involved site of disease in breast cancer that has spread outside the primary lesion. Although sentinel node biopsy is a reliable way to manage ALN, there are still no good methods of predicting ALN status before surgery. Since morbidity in breast cancer surgery is predominantly related to ALN dissection, predictive models for lymph node involvement may provide a way to alert the surgeon in subgroups of patients. Material and Methods A total of 1325 invasive breast cancer patients were analyzed using tumor biological parameters that included age, tumor size, grade, estrogen receptor, progesterone receptor, lymphovascular invasion, and HER2, to test their ability to predict ALN involvement. A support vector machine (SVM) was used as a classification model. The SVM is a machine-learning system developed using statistical learning theories to classify data points into 2 classes. Notably, SVM models have been applied in bioinformatics. Results The SVM model correctly predicted ALN metastases in 74.7% of patients using tumor biological parameters. The predictive ability of luminal A, luminal B, triple negative, and HER2 subtypes using subgroup analysis showed no difference, and this predictive performance was inferior, with only 60% accuracy. Conclusions With an SVM model based on clinical pathologic parameters obtained in the primary tumor, it is possible to predict ALN status in order to alert the surgeon about breast cancer counseling and in decision-making for ALN management.
机译:背景腋窝淋巴结(ALN)是乳腺癌中最常见的疾病部位,已扩散到原发灶外。尽管前哨淋巴结活检是管理ALN的可靠方法,但仍没有预测术前ALN状态的好方法。由于乳腺癌手术的发病率主要与ALN夹层有关,因此淋巴结受累的预测模型可能为提醒亚组患者的外科医生提供一种方法。材料与方法使用年龄,肿瘤大小,等级,雌激素受体,孕激素受体,淋巴管浸润和HER2等肿瘤生物学参数对总共1325例浸润性乳腺癌患者进行了分析,以测试其预测ALN参与的能力。支持向量机(SVM)被用作分类模型。 SVM是一种使用统计学习理论开发的机器学习系统,可将数据点分为2类。值得注意的是,SVM模型已应用于生物信息学中。结果SVM模型使用肿瘤生物学参数正确预测了74.7%的患者ALN转移。使用亚组分析对管腔A,管腔B,三阴性和HER2亚型的预测能力没有差异,并且这种预测性能较差,准确性仅为60%。结论使用基于在原发性肿瘤中获得的临床病理参数的SVM模型,可以预测ALN的状态,以提醒外科医生有关乳腺癌咨询和ALN管理决策的信息。

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