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应用机器学习模型改善乳腺癌患者非前哨淋巴结转移状态的预测

Application of the Machine-Learning Model to Improve Prediction of Non-Sentinel Lymph Node Metastasis Status Among Breast Cancer Patients.

作者信息

Wu Qian, Deng Li, Jiang Ying, Zhang Hongwei

机构信息

Department of General Surgery, Shanghai Public Health Center, Shanghai, China.

Department of General Surgery, Zhongshan Hospital, Fudan University, Shanghai, China.

出版信息

Front Surg. 2022 Apr 25;9:797377. doi: 10.3389/fsurg.2022.797377. eCollection 2022.

Abstract

BACKGROUND

Performing axillary lymph node dissection (ALND) is the current standard option after a positive sentinel lymph node (SLN). However, whether 1-2 metastatic SLNs require ALND is debatable. The probability of metastasis in non-sentinel lymph nodes (NSLNs) can be calculated using nomograms. In this study, we developed an individualized model using machine-learning (ML) methods to select potential variables, which influence NSLN metastasis.

MATERIALS AND METHODS

Cohorts of patients with early breast cancer who underwent SLN biopsy and ALND between 2012 and 2021 were created (training cohort, N 157 and validation cohort, N 58) for the development of the nomogram. Three ML methods were trained in the training set to create a strong predictive model. Finally, the multiple iterations of the least absolute shrinkage and selection operator regression method were used to determine the variables associated with NSLN status.

RESULTS

Four independent variables (positive SLN number, absence of lymph node hilum, lymphovascular invasion (LVI), and total number of SLNs harvested) were combined to generate the nomogram. The area under the receiver operating characteristic curve (AUC) value of 0.759 was obtained in the entire set. The AUC values for the training set and the test set were 0.782 and 0.705, respectively. The Hosmer-Lemeshow test of the model fit accuracy was identified with = 0.759.

CONCLUSION

This study developed a nomogram that incorporates ultrasound (US)-related variables using the ML method and serves to clinically predict the non-metastatic status of NSLN and help in the selection of the appropriate treatment option.

摘要

背景

前哨淋巴结(SLN)活检阳性后进行腋窝淋巴结清扫(ALND)是目前的标准选择。然而,1 - 2枚转移前哨淋巴结是否需要进行ALND仍存在争议。非前哨淋巴结(NSLN)转移的概率可通过列线图计算。在本研究中,我们使用机器学习(ML)方法开发了一个个体化模型,以选择影响NSLN转移的潜在变量。

材料与方法

创建了2012年至2021年间接受SLN活检和ALND的早期乳腺癌患者队列(训练队列,N = 157;验证队列,N = 58),用于列线图的开发。在训练集中训练了三种ML方法,以创建一个强大的预测模型。最后,使用最小绝对收缩和选择算子回归方法的多次迭代来确定与NSLN状态相关的变量。

结果

四个独立变量(阳性前哨淋巴结数量、无淋巴结门、淋巴管浸润(LVI)和获取的前哨淋巴结总数)被组合以生成列线图。在整个数据集中获得的受试者工作特征曲线(AUC)下面积值为0.759。训练集和测试集的AUC值分别为0.782和0.705。模型拟合准确性的Hosmer - Lemeshow检验结果为P = 0.759。

结论

本研究使用ML方法开发了一个纳入超声(US)相关变量的列线图,用于临床预测NSLN的非转移状态,并有助于选择合适的治疗方案。

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