MRI Radiomics-Based Machine Learning to Predict Lymphovascular Invasion of HER2-Positive Breast Cancer.

Fang Han, Wenfei Li, Yurui Hu, Huiping Wang, Tianyu Liu, Jianlin Wu
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Abstract

This study aims to develop and prospectively validate radiomic models based on MRI to predict lymphovascular invasion (LVI) status in patients with HER2-positive breast cancer. A total of 225 patients with HER2-positive breast cancer who preoperatively underwent breast MRI were selected, forming the training set (n = 99 LVI-positive, n = 126 LVI-negative). A prospective validation cohort included 130 patients with breast cancer from the Affiliated Zhongshan Hospital of Dalian University (n = 57 LVI-positive, n = 73 LVI-negative). A total of 390 radiomic features and eight conventional radiological characteristics were extracted. For the optimum feature selection phase, the LASSO regression model with tenfold cross-validation (CV) was employed to identify features with non-zero coefficients. The conventional radiological (CR) model was determined based on visual morphological (VM) features and the optimal radiomic features correlated with LVI, identified through multivariate logistic analyses. Subsequently, various machine learning (ML) models were developed using algorithms such as support vector machine (SVM), k-nearest neighbor (KNN), gradient boosting machine (GBM), and random forest (RF). The performance of ML and CR models. The results show that the AUC of the CR model in the training and validation sets were 0.81 (95% confidence interval [CI], 0.74-0.86) and 0.82 (95% CI, 0.69-0.89), respectively. The ML model achieved the best performance, with AUCs of 0.96 (95% CI, 0.99-1.00) in the training set and 0.95 (95% CI, 0.89-0.96) in the validation set. There were significant differences between the CR and ML models in predicting LVI status. Our study demonstrated that the machine learning models exhibited superior performance in predicting LVI status based on pretreatment MRI compared to the CR model, which does not necessarily rely on a priori knowledge of visual morphology.

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基于核磁共振成像放射组学的机器学习预测 HER2 阳性乳腺癌的淋巴管侵犯
本研究旨在开发和前瞻性验证基于核磁共振成像的放射学模型,以预测HER2阳性乳腺癌患者的淋巴管侵犯(LVI)状态。研究共选取了 225 名术前接受了乳腺核磁共振成像检查的 HER2 阳性乳腺癌患者作为训练集(n = 99 LVI 阳性,n = 126 LVI 阴性)。前瞻性验证队列包括大连大学附属中山医院的 130 名乳腺癌患者(n = 57 LVI 阳性,n = 73 LVI 阴性)。共提取了 390 个放射学特征和 8 个常规放射学特征。在最佳特征选择阶段,采用了十倍交叉验证(CV)的 LASSO 回归模型来识别系数不为零的特征。根据视觉形态学(VM)特征确定了常规放射学(CR)模型,并通过多变量逻辑分析确定了与 LVI 相关的最佳放射学特征。随后,使用支持向量机(SVM)、k-近邻(KNN)、梯度提升机(GBM)和随机森林(RF)等算法开发了各种机器学习(ML)模型。ML 和 CR 模型的性能。结果显示,CR 模型在训练集和验证集的 AUC 分别为 0.81(95% 置信区间 [CI],0.74-0.86)和 0.82(95% 置信区间,0.69-0.89)。ML 模型性能最佳,训练集的 AUC 为 0.96(95% CI,0.99-1.00),验证集的 AUC 为 0.95(95% CI,0.89-0.96)。在预测 LVI 状态方面,CR 模型和 ML 模型之间存在明显差异。我们的研究表明,机器学习模型在根据治疗前 MRI 预测 LVI 状态方面的表现优于 CR 模型,因为 CR 模型并不一定依赖于视觉形态学的先验知识。
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