Bizjak Žiga, Pernuš Franjo, Špiclin Žiga
Laboratory of Imaging Technologies, Faculty of Electrical Engineering, University of Ljubljana, Ljubljana, Slovenia.
Front Physiol. 2021 Jul 1;12:644349. doi: 10.3389/fphys.2021.644349. eCollection 2021.
Intracranial aneurysms (IAs) are a common vascular pathology and are associated with a risk of rupture, which is often fatal. Aneurysm growth is considered a surrogate of rupture risk; therefore, the study aimed to develop and evaluate prediction models of future artificial intelligence (AI) growth based on baseline aneurysm morphology as a computer-aided treatment decision support. Follow-up CT angiography (CTA) and magnetic resonance angiography (MRA) angiograms of 39 patients with 44 IAs were classified by an expert as growing and stable (25/19). From the angiograms vascular surface meshes were extracted and the aneurysm shape was characterized by established morphologic features and novel deep shape features. The features corresponding to the baseline aneurysms were used to predict future aneurysm growth using univariate thresholding, multivariate random forest and multi-layer perceptron (MLP) learning, and deep shape learning based on the PointNet++ model. The proposed deep shape feature learning method achieved an accuracy of 0.82 (sensitivity = 0.96, specificity = 0.63), while the multivariate learning and univariate thresholding methods were inferior with an accuracy of up to 0.68 and 0.63, respectively. High-performing classification of future growing IAs renders the proposed deep shape features learning approach as the key enabling tool to manage rupture risk in the "no treatment" paradigm of patient follow-up imaging.
颅内动脉瘤(IAs)是一种常见的血管病变,与破裂风险相关,破裂往往是致命的。动脉瘤生长被认为是破裂风险的一个替代指标;因此,本研究旨在开发并评估基于基线动脉瘤形态的未来人工智能(AI)生长预测模型,作为计算机辅助治疗决策支持。39例患有44个颅内动脉瘤的患者的随访CT血管造影(CTA)和磁共振血管造影(MRA)血管造影图像由一位专家分类为生长型和稳定型(25/19)。从血管造影图像中提取血管表面网格,并通过既定的形态学特征和新颖的深度形状特征对动脉瘤形状进行表征。对应于基线动脉瘤的特征用于通过单变量阈值法、多变量随机森林和多层感知器(MLP)学习以及基于PointNet++模型的深度形状学习来预测未来动脉瘤的生长。所提出的深度形状特征学习方法的准确率达到0.82(敏感性 = 0.96,特异性 = 0.63),而多变量学习和单变量阈值法的准确率分别高达0.68和0.63,表现较差。对未来生长型颅内动脉瘤进行高性能分类,使得所提出的深度形状特征学习方法成为在患者随访成像的“不治疗”模式下管理破裂风险的关键支持工具。