Radiomics-Based Predictive Nomogram for Assessing the Risk of Intracranial Aneurysms

Sricharan S. Veeturi, Arshaq Saleem, Diego Ojeda, Elena Sagues, Sebastian Sanchez, Andres S Gudino, E. Levy, David Hasan, Adnan H Siddiqui, V. Tutino, Edgar A Samaniego
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Abstract

Abstract Background: Aneurysm wall enhancement (AWE) has the potential to be used as an imaging biomarker for the risk stratification of intracranial aneurysms (IAs). Radiomics provides a refined approach to quantify and further characterize AWE's textural features. This study examines the performance of AWE quantification combined with clinical information in detecting symptomatic IAs. Methods: Ninety patients harboring 104 IAs (29 symptomatic and 75 asymptomatic) underwent high-resolution magnetic resonance imaging (HR-MRI). The assessment of AWE was performed using two different methods: 3D-AWE mapping and composite radiomics-based score (RadScore). The dataset was split into training and testing subsets. The testing set was used to build two different nomograms using each modality of AWE assessment combined with patients’ demographic information and aneurysm morphological data. Finally, each nomogram was evaluated on an independent testing set. Results: A total of 22 radiomic features were significantly different between symptomatic and asymptomatic IAs. The 3D-AWE Mapping nomogram achieved an area under the curve (AUC) of 0.77 (63% accuracy, 78% sensitivity and 58% specificity). The RadScore nomogram exhibited a better performance, achieving an AUC of 0.83 (77% accuracy, 89% sensitivity and 73% specificity). Conclusions : Combining AWE quantification through radiomic analysis with patient demographic data in a clinical nomogram achieved high accuracy in detecting symptomatic IAs.
基于放射组学的颅内动脉瘤风险评估预测提名图
摘要 背景:动脉瘤壁强化(AWE)有可能被用作颅内动脉瘤(IAs)风险分层的成像生物标志物。放射组学提供了一种精细的方法来量化和进一步描述 AWE 的纹理特征。本研究探讨了 AWE 定量与临床信息相结合在检测无症状 IAs 方面的性能。方法:携带 104 个 IAs 的 90 位患者(29 位有症状,75 位无症状)接受了高分辨率磁共振成像(HR-MRI)检查。AWE 评估采用两种不同的方法:3D-AWE 绘图和基于放射组学的综合评分(RadScore)。数据集分为训练子集和测试子集。测试集用于使用每种 AWE 评估方法结合患者的人口统计学信息和动脉瘤形态学数据建立两种不同的提名图。最后,在独立的测试集上对每个提名图进行评估。结果有症状和无症状动脉瘤之间共有22个放射学特征存在显著差异。3D-AWE Mapping提名图的曲线下面积(AUC)为0.77(准确率63%,灵敏度78%,特异性58%)。RadScore 提名图的表现更好,AUC 为 0.83(准确率为 77%,灵敏度为 89%,特异性为 73%)。结论 :在临床提名图中,通过放射学分析将 AWE 定量与患者人口统计学数据相结合,在检测有症状的 IA 方面达到了很高的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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