Nie Ji-Yan, Chen Wen-Xi, Zhu Zhi, Zhang Ming-Yu, Zheng Yu-Jin, Wu Qing-De
Department of Radiology, Shunde Hospital of Guangzhou University of Traditional Chinese Medicine, Shunde, China.
Graduate School, Guangzhou University of Chinese Medicine, Guangzhou, China.
Front Neurol. 2024 Feb 16;15:1340202. doi: 10.3389/fneur.2024.1340202. eCollection 2024.
Carotid atherosclerotic ischemic stroke threatens human health and life. The aim of this study is to establish a radiomics model of perivascular adipose tissue (PVAT) around carotid plaque for evaluation of the association between Peri-carotid Adipose Tissue structural changes with stroke and transient ischemic attack.
A total of 203 patients underwent head and neck computed tomography angiography examination in our hospital. All patients were divided into a symptomatic group (71 cases) and an asymptomatic group (132 cases) according to whether they had acute/subacute stroke or transient ischemic attack. The radiomic signature (RS) of carotid plaque PVAT was extracted, and the minimum redundancy maximum correlation, recursive feature elimination, and linear discriminant analysis algorithms were used for feature screening and dimensionality reduction.
It was found that the RS model achieved the best diagnostic performance in the Bagging Decision Tree algorithm, and the training set (AUC, 0.837; 95%CI: 0.775, 0.899), testing set (AUC, 0.834; 95%CI: 0.685, 0.982). Compared with the traditional feature model, the RS model significantly improved the diagnostic efficacy for identifying symptomatic plaques in the testing set (AUC: 0.834 vs. 0.593; Z = 2.114, = 0.0345).
The RS model of PVAT of carotid plaque can be used as an objective indicator to evaluate the risk of plaque and provide a basis for risk stratification of carotid atherosclerotic disease.
颈动脉粥样硬化性缺血性卒中威胁人类健康和生命。本研究旨在建立颈动脉斑块周围血管周围脂肪组织(PVAT)的放射组学模型,以评估颈动脉周围脂肪组织结构变化与卒中和短暂性脑缺血发作之间的关联。
我院共有203例患者接受了头颈部计算机断层扫描血管造影检查。根据患者是否有急性/亚急性卒中或短暂性脑缺血发作,将所有患者分为症状组(71例)和无症状组(132例)。提取颈动脉斑块PVAT的放射组学特征(RS),并使用最小冗余最大相关、递归特征消除和线性判别分析算法进行特征筛选和降维。
发现RS模型在Bagging决策树算法中具有最佳诊断性能,训练集(AUC,0.837;95%CI:0.775,0.899),测试集(AUC,0.834;95%CI:0.685,0.982)。与传统特征模型相比,RS模型在测试集中显著提高了识别有症状斑块的诊断效能(AUC:0.834对0.593;Z = 2.114,P = 0.0345)。
颈动脉斑块PVAT的RS模型可作为评估斑块风险的客观指标,为颈动脉粥样硬化疾病的风险分层提供依据。