7T-high resolution MRI-derived radiomic analysis for the identification of symptomatic intracranial atherosclerotic plaques.

IF 1.7 4区 医学 Q3 Medicine
Sebastian Sanchez, Sricharan Veeturi, Tatsat Patel, Diego J Ojeda, Elena Sagues, Jacob M Miller, Vincent M Tutino, Edgar A Samaniego
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引用次数: 0

Abstract

Introduction: High-resolution magnetic resonance imaging (HR-MRI) allows for detailed visualization of intracranial atherosclerotic plaques. Radiomics can be used as a tool for objective quantification of the plaque's characteristics. We analyzed the radiomics features (RFs) obtained from 7 T HR-MRI of patients with intracranial atherosclerotic disease (ICAD) to determine distinct characteristics of culprit and non-culprit plaques.

Methods: Patients with stroke due to ICAD underwent HR-MRI. Culprit plaques in the vascular territory of the stroke were identified. Degree of stenosis, area degree of stenosis and plaque burden were calculated. A three-dimensional segmentation of the plaque was performed, and RFs were obtained. A machine learning model for prediction and identification of culprit plaques using significantly different RFs was evaluated.

Results: The study included 33 patients with ICAD as stroke etiology. Univariate analysis revealed 24 RFs in pre-contrast MRI, 21 in post-contrast MRI, 13 RFs that were different between pre and post contrast MRIs. Additionally, six shape-based RFs significantly differed from culprit and non-culprit plaques. The random forest model achieved an accuracy rate of 81% (88% sensitivity and 75% specificity) in identifying culprit plaques in the independent testing dataset. This model successfully identified the culprit plaques in all patients during the testing phase.

Discussion: Symptomatic plaques had a distinct signature RFs compared to other plaques within the same subject. A machine learning model built with RFs successfully identified the symptomatic atherosclerotic plaques in most cases. Radiomics is a promising tool for stratification of plaques in patients with ICAD.

用于识别无症状颅内动脉粥样硬化斑块的 7T 高分辨率磁共振成像衍生放射学分析。
简介高分辨率磁共振成像(HR-MRI)可详细观察颅内动脉粥样硬化斑块。放射组学可用作客观量化斑块特征的工具。我们分析了从颅内动脉粥样硬化疾病(ICAD)患者的 7 T HR-MRI 中获得的放射组学特征(RFs),以确定罪魁祸首斑块和非罪魁祸首斑块的不同特征:方法:对因 ICAD 导致中风的患者进行 HR-MRI 检查。方法:对因 ICAD 导致中风的患者进行 HR-MRI 检查,确定中风血管区域内的罪魁祸首斑块。计算狭窄程度、狭窄面积和斑块负荷。对斑块进行三维分割,并获得射频。评估了使用明显不同的射频值预测和识别罪魁祸首斑块的机器学习模型:研究共纳入了 33 名脑卒中病因为 ICAD 的患者。单变量分析显示,对比前磁共振成像中有 24 个 RFs,对比后磁共振成像中有 21 个 RFs,对比前和对比后磁共振成像中有 13 个 RFs 不同。此外,6个基于形状的RFs在罪魁祸首斑块和非罪魁祸首斑块之间存在显著差异。在独立测试数据集中,随机森林模型识别罪魁祸首斑块的准确率达到 81%(灵敏度 88%,特异度 75%)。该模型在测试阶段成功识别了所有患者的罪魁祸首斑块:讨论:与同一受试者的其他斑块相比,症状斑块具有明显的射频特征。利用射频信号建立的机器学习模型在大多数情况下都能成功识别出有症状的动脉粥样硬化斑块。放射组学是对ICAD患者斑块进行分层的有效工具。
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来源期刊
CiteScore
2.80
自引率
11.80%
发文量
192
审稿时长
6-12 weeks
期刊介绍: Interventional Neuroradiology (INR) is a peer-reviewed clinical practice journal documenting the current state of interventional neuroradiology worldwide. INR publishes original clinical observations, descriptions of new techniques or procedures, case reports, and articles on the ethical and social aspects of related health care. Original research published in INR is related to the practice of interventional neuroradiology...
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