Ma Xiaowen, Gong Jing, Hu Feixiang, Tang Wei, Gu Yajia, Peng Weijun
Department of Radiology, Fudan University Shanghai Cancer Center, Shanghai, China.
Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China.
J Magn Reson Imaging. 2023 Feb;57(2):633-645. doi: 10.1002/jmri.28286. Epub 2022 Jun 3.
Preoperative pathological grading assessment is important for patients with breast phyllodes tumors (PTs).
To develop and validate a clinical-radiomics model based on multiparametric MRI and clinical information for the pretreatment differential diagnosis of PTs.
Retrospective.
A total of 216 patients with PTs, 133 in the training cohort (55 benign PTs [BPTs] and 78 borderline/malignant PTs [BMPTs]) and 83 in the validation cohort (28 BPTs and 55 BMPTs).
FIELD STRENGTH/SEQUENCE: 1.5 T and 3 T; T2-weighted imaging (T2WI), precontrast T1-weighted imaging (T1WI) and dynamic contrast-enhanced T1-weighted imaging (DCE-T1WI).
A total of 3138 radiomics features were computed to decode the imaging phenotypes of PTs. To build the classification models, the following workflow was followed: minimum-maximum scaling normalization method, recursive feature elimination based on ridge regression (Ridge-RFE), synthetic minority oversampling technique, and support vector machine classifier. We established several models based on the statistically significant features (Ridge-RFE selected) of each sequence to distinguish BPTs from BMPTs, including precontrast T1WI model, DCE-T1WI phase 1 model, T1WI feature fusion model, T2WI model, T1WI + T2WI model, clinical feature model, conventional MRI characteristics model, and combined clinical-radiomics model.
Univariate analysis was utilized to compare variables between the BPT and BMPT groups. The receiver operating characteristic curve (ROC) analysis was used to evaluate the diagnostic performance of these models.
In the training cohort, the clinical-radiomics model had excellent diagnostic efficiency, with an area under ROC (AUC) of 0.91 ± 0.02 (95% CI: 0.87-0.94). In the validation cohort, the AUCs were 0.79 ± 0.05 (95% CI: 0.70-0.87) for the combined model and 0.77 ± 0.05 (95% CI: 0.67-0.85) for the radiomics model.
Compared with conventional MRI characteristics, radiomics features extracted from multiparametric MRI are helpful for improving the accuracy of differentiating the pathological grades of PTs preoperatively. The model based on radiomics and clinical information is expected to become a potential noninvasive tool for the assessment of PTs grades.
4 TECHNICAL EFFICACY: Stage 2.
术前病理分级评估对乳腺叶状肿瘤(PTs)患者很重要。
基于多参数MRI和临床信息开发并验证一种临床-影像组学模型,用于PTs的术前鉴别诊断。
回顾性研究。
共216例PTs患者,其中133例纳入训练队列(55例良性PTs [BPTs]和78例交界性/恶性PTs [BMPTs]),83例纳入验证队列(28例BPTs和55例BMPTs)。
场强/序列:1.5T和3T;T2加权成像(T2WI)、平扫T1加权成像(T1WI)和动态对比增强T1加权成像(DCE-T1WI)。
共计算3138个影像组学特征以解码PTs的影像表型。为构建分类模型,采用以下工作流程:最小-最大缩放归一化方法、基于岭回归的递归特征消除(Ridge-RFE)、合成少数过采样技术和支持向量机分类器。我们基于每个序列的统计学显著特征(Ridge-RFE选择的)建立了多个模型,以区分BPTs和BMPTs,包括平扫T1WI模型、DCE-T1WI第1期模型、T1WI特征融合模型、T2WI模型、T1WI + T2WI模型、临床特征模型、传统MRI特征模型和临床-影像组学联合模型。
采用单因素分析比较BPT组和BMPT组之间的变量。采用受试者工作特征曲线(ROC)分析评估这些模型的诊断性能。
在训练队列中,临床-影像组学模型具有出色的诊断效率,ROC曲线下面积(AUC)为0.91±0.02(95%CI:0.87 - 0.94)。在验证队列中,联合模型的AUC为0.79±0.05(95%CI:0.70 - 0.87),影像组学模型的AUC为0.77±0.05(95%CI:0.67 - 0.85)。
与传统MRI特征相比,从多参数MRI中提取的影像组学特征有助于提高术前鉴别PTs病理分级的准确性。基于影像组学和临床信息的模型有望成为评估PTs分级的潜在非侵入性工具。
4 技术效能:2级