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基于 DCE-MRI 无监督分解的肿瘤及周围实质成像异质性的放射组学分析预测乳腺癌分子亚型。

Radiomic analysis of imaging heterogeneity in tumours and the surrounding parenchyma based on unsupervised decomposition of DCE-MRI for predicting molecular subtypes of breast cancer.

机构信息

Institute of Biomedical Engineering and Instrumentation, Hangzhou Dianzi University, Hangzhou, China.

Department of Electrical and Computer Engineering, Virginia Polytechnic Institute and State University, Arlington, VA, 22203, USA.

出版信息

Eur Radiol. 2019 Aug;29(8):4456-4467. doi: 10.1007/s00330-018-5891-3. Epub 2019 Jan 7.

Abstract

OBJECTIVES

This study aimed to predict the molecular subtypes of breast cancer via intratumoural and peritumoural radiomic analysis with subregion identification based on the decomposition of contrast-enhanced magnetic resonance imaging (DCE-MRI).

METHODS

The study included 211 women with histopathologically confirmed breast cancer. We utilised a completely unsupervised convex analysis of mixtures (CAM) method by unmixing dynamic imaging series from heterogeneous tissues. Each tumour and the surrounding parenchyma were thus decomposed into multiple subregions, representing different vascular characterisations, from which radiomic features were extracted. A random forest model was trained and tested using a leave-one-out cross-validation (LOOCV) method to predict breast cancer subtypes. The predictive models from tumoural and peritumoural subregions were fused for classification.

RESULTS

Tumour and peritumour DCE-MR images were decomposed into three compartments, representing plasma input, fast-flow kinetics, and slow-flow kinetics. The tumour subregion related to fast-flow kinetics showed the best performance among the subregions for differentiating between patients with four molecular subtypes (area under the receiver operating characteristic curve (AUC) = 0.832), exhibiting an AUC value significantly (p < 0.0001) higher than that obtained with the entire tumour (AUC = 0.719). When the tumour- and parenchyma-based predictive models were fused, the performance, measured as the AUC, increased to 0.897; this value was significantly higher than that obtained with other tumour partition methods.

CONCLUSIONS

Radiomic analysis of intratumoural and peritumoural heterogeneity based on the decomposition of image time-series signals has the potential to more accurately identify tumour kinetic features and serve as a valuable clinical marker to enhance the prediction of breast cancer subtypes.

KEY POINTS

• Decomposition of image time-series signals has the potential to more accurately identify tumour kinetic features. • Fusion of intratumoural- and peritumoural-based predictive models improves the prediction of breast cancer subtypes.

摘要

目的

本研究旨在通过基于对比增强磁共振成像(DCE-MRI)分解的肿瘤内和肿瘤周围放射组学分析,预测乳腺癌的分子亚型。

方法

本研究纳入了 211 名经组织病理学证实的乳腺癌患者。我们利用非监督凸分析混合物(CAM)方法,对异质组织的动态成像系列进行解混。由此,每个肿瘤及其周围实质被分解为多个亚区,代表不同的血管特征,从中提取放射组学特征。采用留一法交叉验证(LOOCV)方法训练和测试随机森林模型,以预测乳腺癌亚型。对肿瘤和肿瘤周围亚区的预测模型进行融合分类。

结果

肿瘤和肿瘤周围 DCE-MRI 图像被分解为三个腔室,分别代表血浆输入、快血流动力学和慢血流动力学。肿瘤亚区中与快血流动力学相关的部分在区分四种分子亚型的患者时表现最佳(受试者工作特征曲线下面积(AUC)=0.832),其 AUC 值明显(p<0.0001)高于整个肿瘤(AUC=0.719)。当融合肿瘤和实质基于的预测模型时,其性能(以 AUC 衡量)增加到 0.897;这一数值明显高于其他肿瘤分区方法。

结论

基于图像时间序列信号分解的肿瘤内和肿瘤周围异质性的放射组学分析有可能更准确地识别肿瘤动力学特征,并作为增强乳腺癌亚型预测的有价值的临床标志物。

关键点

• 图像时间序列信号的分解有可能更准确地识别肿瘤动力学特征。

• 肿瘤内和肿瘤周围基于模型的融合可改善乳腺癌亚型的预测。

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