A non-invasive preoperative prediction model for predicting axillary lymph node metastasis in breast cancer based on a machine learning approach: combining ultrasonographic parameters and breast gamma specific imaging features.

IF 3.3 2区 医学 Q2 ONCOLOGY
Ranze Cai, Li Deng, Hua Zhang, Hongwei Zhang, Qian Wu
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Abstract

Background: The most common route of breast cancer metastasis is through the mammary lymphatic network. An accurate assessment of the axillary lymph node (ALN) burden before surgery can avoid unnecessary axillary surgery, consequently preventing surgical complications. In this study, we aimed to develop a non-invasive prediction model incorporating breast specific gamma image (BSGI) features and ultrasonographic parameters to assess axillary lymph node status.

Materials and methods: Cohorts of breast cancer patients who underwent surgery between 2012 and 2021 were created (The training set included 1104 ultrasound images and 940 BSGI images from 235 patients, the test set included 568 ultrasound images and 296 BSGI images from 99 patients) for the development of the prediction model. six machine learning (ML) methods and recursive feature elimination were trained in the training set to create a strong prediction model. Based on the best-performing model, we created an online calculator that can make a linear predictor in patients easily accessible to clinicians. The receiver operating characteristic (ROC) and calibration curve are used to verify the model performance respectively and evaluate the clinical effectiveness of the model.

Results: Six ultrasonographic parameters (transverse diameter of tumour, longitudinal diameter of tumour, lymphatic echogenicity, transverse diameter of lymph nodes, longitudinal diameter of lymph nodes, lymphatic color Doppler flow imaging grade) and one BSGI features (axillary mass status) were selected based on the best-performing model. In the test set, the support vector machines' model showed the best predictive ability (AUC = 0.794, sensitivity = 0.641, specificity = 0.8, PPV = 0.676, NPV = 0.774 and accuracy = 0.737). An online calculator was established for clinicians to predict patients' risk of ALN metastasis ( https://wuqian.shinyapps.io/shinybsgi/ ). The result in ROC showed the model could benefit from incorporating BSGI feature.

Conclusion: This study developed a non-invasive prediction model that incorporates variables using ML method and serves to clinically predict ALN metastasis and help in selection of the appropriate treatment option.

基于机器学习方法的无创乳腺癌术前腋窝淋巴结转移预测模型:结合超声参数和乳腺伽马特异性成像特征。
背景:乳腺癌最常见的转移途径是通过乳腺淋巴网络。手术前准确评估腋窝淋巴结(ALN)负担可避免不必要的腋窝手术,从而预防手术并发症。在这项研究中,我们旨在开发一种结合乳腺特异性伽马图像(BSGI)特征和超声参数的无创预测模型,以评估腋窝淋巴结状态:为开发预测模型,创建了2012年至2021年间接受手术的乳腺癌患者队列(训练集包括来自235名患者的1104张超声图像和940张BSGI图像,测试集包括来自99名患者的568张超声图像和296张BSGI图像)。根据表现最佳的模型,我们创建了一个在线计算器,使临床医生可以轻松获得患者的线性预测结果。接受者操作特征(ROC)和校准曲线分别用于验证模型的性能和评估模型的临床效果:根据表现最佳的模型,选出了六个超声参数(肿瘤横径、肿瘤纵径、淋巴回声、淋巴结横径、淋巴结纵径、淋巴彩色多普勒血流成像分级)和一个 BSGI 特征(腋窝肿块状态)。在测试集中,支持向量机模型显示出最佳预测能力(AUC = 0.794、灵敏度 = 0.641、特异性 = 0.8、PPV = 0.676、NPV = 0.774 和准确度 = 0.737)。为临床医生建立了一个在线计算器,用于预测患者发生 ALN 转移的风险 ( https://wuqian.shinyapps.io/shinybsgi/ )。ROC结果显示,该模型可从加入BSGI特征中获益:本研究开发了一种非侵入性预测模型,该模型利用 ML 方法纳入了各种变量,可用于临床预测 ALN 转移并帮助选择适当的治疗方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Radiation Oncology
Radiation Oncology ONCOLOGY-RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING
CiteScore
6.50
自引率
2.80%
发文量
181
审稿时长
3-6 weeks
期刊介绍: Radiation Oncology encompasses all aspects of research that impacts on the treatment of cancer using radiation. It publishes findings in molecular and cellular radiation biology, radiation physics, radiation technology, and clinical oncology.
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