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基于 3D 高分辨率磁共振成像的放射组学和机器学习识别高危颅内斑块。

Identification of high-risk intracranial plaques with 3D high-resolution magnetic resonance imaging-based radiomics and machine learning.

机构信息

Department of Medical Imaging, The First School of Clinical Medicine, Jinling Hospital, Southern Medical University, Nanjing, 210002, Jiangsu, China.

Department of Medical Imaging, Xuzhou Medical University, Xuzhou, Jiangsu, China.

出版信息

J Neurol. 2022 Dec;269(12):6494-6503. doi: 10.1007/s00415-022-11315-4. Epub 2022 Aug 11.

Abstract

BACKGROUND

Identifying high-risk intracranial plaques is significant for the treatment and prevention of stroke.

OBJECTIVE

To develop a high-risk plaque model using three-dimensional (3D) high-resolution magnetic resonance imaging (HRMRI) based radiomics features and machine learning.

METHODS

136 patients with documented symptomatic intracranial artery stenosis and available HRMRI data were included. Among these patients, 136 and 92 plaques were identified as symptomatic and asymptomatic plaques, respectively. A conventional model was developed by recording and quantifying the radiological plaque characteristics. Radiomics features from T1-weighted images (T1WI) and contrast-enhanced T1WI (CE-T1WI) were used to construct a high-risk plaque model with linear support vector classification (linear SVC). The radiological and radiomics features were combined to build a combined model. Receiver operating characteristic (ROC) curves were used to evaluate these models.

RESULTS

Plaque length, burden, and enhancement were independently associated with clinical symptoms and were included in the conventional model, which had an AUC of 0.853 vs. 0.837 in the training and test sets. While the radiomics and the combined model showed an improved AUC: 0.923 vs. 0.925 for the training sets and 0.906 vs. 0.903 in the test sets. Both the radiomics model (p = 0.024, p = 0.018) and combined model (p = 0.042, p = 0.049) outperformed the conventional model in the two sets, whereas the performance of the combined model was not significantly different from that of the radiomics model in the two sets (p = 0.583 and p = 0.606).

CONCLUSION

The radiomics model based on 3D HRMRI can accurately differentiate symptomatic from asymptomatic intracranial arterial plaques and significantly outperforms the conventional model.

摘要

背景

识别颅内高危斑块对于中风的治疗和预防具有重要意义。

目的

利用三维(3D)高分辨率磁共振成像(HRMRI)的放射组学特征和机器学习开发一种高危斑块模型。

方法

纳入了 136 名有明确症状性颅内动脉狭窄且有可用 HRMRI 数据的患者。在这些患者中,分别确定了 136 个和 92 个斑块为有症状和无症状斑块。通过记录和量化放射学斑块特征,建立了一个常规模型。使用 T1 加权图像(T1WI)和对比增强 T1WI(CE-T1WI)的放射组学特征,构建了一个具有线性支持向量分类(linear SVC)的高危斑块模型。将放射学和放射组学特征相结合,构建了一个联合模型。使用接收者操作特征(ROC)曲线来评估这些模型。

结果

斑块长度、负荷和强化与临床症状独立相关,被纳入常规模型,在训练集和测试集的 AUC 分别为 0.853 和 0.837。而放射组学模型和联合模型的 AUC 有所提高:训练集分别为 0.923 和 0.925,测试集分别为 0.906 和 0.903。放射组学模型(p=0.024,p=0.018)和联合模型(p=0.042,p=0.049)在两个数据集均优于常规模型,而联合模型的性能在两个数据集与放射组学模型无显著差异(p=0.583 和 p=0.606)。

结论

基于 3D HRMRI 的放射组学模型可以准确区分有症状和无症状的颅内动脉斑块,显著优于常规模型。

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