高分辨率磁共振成像放射组学用于识别高危颅内斑块。

IF 3.8 2区 医学 Q1 CLINICAL NEUROLOGY
Fang Wu, Hai-Ning Wei, Miao Zhang, Qing-Feng Ma, Rui Li, Jie Lu
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引用次数: 0

摘要

易损斑块的破裂是急性缺血性卒中腔内血栓形成的主要原因。对斑块特征的识别表明有破裂的风险,可以预测脑血管事件。在这里,我们的目的是建立一个高风险的颅内斑块模型,利用基于高分辨率磁共振成像(HRMRI)的放射学特征来区分有症状和无症状的斑块。我们招募了172名有188个颅内动脉粥样硬化斑块的患者(100名有症状的,88名无症状的),这些患者有可用的HRMRI数据。测量临床特征及HRMRI常规斑块特征,包括t1加权高信号(HST1)、狭窄程度、归一化壁指数、重构指数、增强比(ER)。进行单因素和多因素分析,建立传统模型来区分有症状和无症状斑块。从对比前和对比后的HRMRI中提取放射学特征。基于随机森林、脊线、最小绝对收缩和选择算子以及深度学习,构建了基于HRMRI的放射学模型。在放射学模型和传统模型的基础上,建立了混合模型。性别、HST1、ER与症状性斑块相关,纳入传统模型,训练集曲线下面积(AUC)为0.697,测试集AUC为0.704。放射组学模型在训练集中的AUC为0.982,在测试集中的AUC为0.867,用于识别症状斑块。在训练集中,MIX模型的AUC为0.977。在测试集中,MIX模型的改进AUC为0.895,优于传统模型(p = 0.032)。基于深度学习和机器学习的放射组学分析可以准确识别颅内高危斑块。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Resolution Magnetic Resonance Imaging Radiomics for Identifying High-Risk Intracranial Plaques.

The rupture of vulnerable plaques is the principal cause of luminal thrombosis in acute ischemic stroke. The identification of plaque features that indicate risk for disruption may predict cerebrovascular events. Here, we aimed to build a high-risk intracranial plaque model that differentiates symptomatic from asymptomatic plaques using radiomic features based on high-resolution magnetic resonance imaging (HRMRI). One hundred and seventy-two patients with 188 intracranial atherosclerotic plaques (100 symptomatic and 88 asymptomatic) with available HRMRI data were recruited. Clinical characteristics and conventional plaque features on HRMRI were measured, including high signal on T1-weighted images (HST1), the degree of stenosis, normalized wall index, remodeling index, and enhancement ratio (ER). Univariate and multivariate analyses were performed to build a traditional model to differentiate between symptomatic and asymptomatic plaques. Radiomic features were extracted from pre-contrast and post-contrast HRMRI. A radiomic model based on HRMRI was constructed using random forests, ridge, least absolute shrinkage and selection operator, and deep learning (DL). A MIX model was constructed based on the radiomic model and the traditional model. Gender, HST1, and ER were associated with symptomatic plaques and were included in the traditional model, which had an area under the curve (AUC) of 0.697 in the training set and 0.704 in the test set. The radiomic model achieved an AUC of 0.982 in the training set and 0.867 in the test dataset for identifying symptomatic plaques. In the training set, the MIX model showed an AUC of 0.977. In the test set, the MIX model exhibited an improved AUC of 0.895, which outperformed the traditional model (p = 0.032). Radiomic analysis based on DL and machine learning can accurately identify high-risk intracranial plaques.

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来源期刊
Translational Stroke Research
Translational Stroke Research CLINICAL NEUROLOGY-NEUROSCIENCES
CiteScore
13.80
自引率
4.30%
发文量
130
审稿时长
6-12 weeks
期刊介绍: Translational Stroke Research covers basic, translational, and clinical studies. The Journal emphasizes novel approaches to help both to understand clinical phenomenon through basic science tools, and to translate basic science discoveries into the development of new strategies for the prevention, assessment, treatment, and enhancement of central nervous system repair after stroke and other forms of neurotrauma. Translational Stroke Research focuses on translational research and is relevant to both basic scientists and physicians, including but not restricted to neuroscientists, vascular biologists, neurologists, neuroimagers, and neurosurgeons.
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