Department of Radiology, Zhongshan Hospital, Fudan University and Shanghai Institute of Medical Imaging, 180 Fenglin Road, Shanghai, 200032, China.
Division of Gastroenterology and Hepatology, Key Laboratory of Gastroenterology and Hepatology, Ministry of Health, Renji Hospital, School of Medicine, Shanghai Jiao Tong University, Shanghai Institute of Digestive Disease, 145 Middle Shandong Road, Shanghai, China.
Eur Radiol. 2021 May;31(5):3116-3126. doi: 10.1007/s00330-020-07361-z. Epub 2020 Oct 17.
We sought to build a high-risk plaque MRI-based model (HRPMM) using radiomics features and machine learning for differentiating symptomatic from asymptomatic carotid plaques.
One hundred sixty-two patients with carotid stenosis were randomly divided into training and test cohorts. Multi-contrast MRI including time of flight (TOF), T1- and T2-weighted imaging, and contrast-enhanced imaging was done. Radiological characteristics of the carotid plaques were recorded and calculated to build a traditional model. After extracting the radiomics features on these images, we constructed HRPMM with least absolute shrinkage and selection operator algorithm in the training cohort and evaluated its performance in the test cohort. A combined model was also built using both the traditional and radiomics features. The performance of all the models in the identification of high-risk carotid plaque was compared.
Intraplaque hemorrhage and lipid-rich necrotic core were independently associated with clinical symptoms and were used to build the traditional model, which achieved an area under the curve (AUC) of 0.825 versus 0.804 in the training and test cohorts. The HRPMM and the combined model achieved an AUC of 0.988 versus 0.984 and of 0.989 versus 0.986 respectively in the two cohorts. Both the radiomics model and combined model outperformed the traditional model, whereas the combined model showed no significant difference with the HRPMM.
Our MRI-based radiomics model can accurately distinguish symptomatic from asymptomatic carotid plaques. It is superior to the traditional model in the identification of high-risk plaques.
• Carotid plaque multi-contrast MRI stores other valuable information to be further exploited by radiomics analysis. • Radiomics analysis can accurately distinguish symptomatic from asymptomatic carotid plaques. • The radiomics model is superior to the traditional model in the identification of high-risk plaques.
我们旨在构建一种基于高风险斑块 MRI 的放射组学模型(HRPMM),并结合机器学习方法,以区分有症状和无症状颈动脉斑块。
162 名颈动脉狭窄患者被随机分为训练集和测试集。进行多对比度 MRI 检查,包括时间飞跃(TOF)、T1 加权和 T2 加权成像以及对比增强成像。记录颈动脉斑块的放射学特征并进行计算,以构建传统模型。在这些图像上提取放射组学特征后,我们在训练集中使用最小绝对收缩和选择算子算法构建 HRPMM,并在测试集中评估其性能。还构建了一个包含传统和放射组学特征的联合模型。比较了所有模型在识别高危颈动脉斑块方面的性能。
斑块内出血和富含脂质的坏死核心与临床症状独立相关,被用于构建传统模型,其在训练集和测试集中的曲线下面积(AUC)分别为 0.825 和 0.804。HRPMM 和联合模型在两个队列中的 AUC 分别为 0.988 和 0.984,以及 0.989 和 0.986。放射组学模型和联合模型均优于传统模型,而联合模型与 HRPMM 之间无显著差异。
我们基于 MRI 的放射组学模型可以准确区分有症状和无症状颈动脉斑块。在识别高危斑块方面,它优于传统模型。
颈动脉斑块多对比度 MRI 存储了其他有价值的信息,可进一步通过放射组学分析进行挖掘。
放射组学分析可以准确区分有症状和无症状颈动脉斑块。
放射组学模型在识别高危斑块方面优于传统模型。