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Assessment of Carotid Artery Plaque Components With Machine Learning Classification Using Homodyned-K Parametric Maps and Elastograms

机译:使用Homodyned-K参数图和弹性图通过机器学习分类评估颈动脉斑块成分

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Quantitative ultrasound (QUS) imaging methods, including elastography, echogenicity analysis, and speckle statistical modeling, are available from a single ultrasound (US) radiofrequency data acquisition. Since these US imaging methods provide complementary quantitative tissue information, characterization of carotid artery plaques may gain from their combination. Sixty-six patients with symptomatic (n = 26) and asymptomatic (n = 40) carotid atherosclerotic plaques were included in the study. Of these, 31 underwent magnetic resonance imaging (MRI) to characterize plaque vulnerability and quantify plaque components. US radio-frequency data sequence acquisitions were performed on all patients and were used to compute noninvasive vascular US elastography and other QUS features. Additional QUS features were computed from three types of images: homodyned-K (HK) parametric maps, Nakagami parametric maps, and log-compressed B-mode images. The following six classification tasks were performed: detection of 1) a small area of lipid; 2) a large area of lipid; 3) a large area of calcification; 4) the presence of a ruptured fibrous cap; 5) differentiation of MRI-based classification of nonvulnerable carotid plaques from neovascularized or vulnerable ones; and 6) confirmation of symptomatic versus asymptomatic patients. Feature selection was first applied to reduce the number of QUS parameters to a maximum of three per classification task. A random forest machine learning algorithm was then used to perform classifications. Areas under receiver-operating curves (AUCs) were computed with a bootstrap method. For all tasks, statistically significant higher AUCs were achieved with features based on elastography, HK parametric maps, and B-mode gray levels, when compared to elastography alone or other QUS alone (p < 0.001). For detection of a large area of lipid, the combination yielding the highest AUC (0.90, 95% CI 0.80-0.92, p < 0.001) was based on elastography, HK, and B-mode gray-level features. To detect a large area of calcification, the highest AUC (0.95, 95% CI 0.94-0.96, p < 0.001) was based on HK and B-mode gray level features. For other tasks, AUCs varied between 0.79 and 0.97. None of the best combinations contained Nakagami features. This study shows the added value of combining different features computed from a single US acquisition with machine learning to characterize carotid artery plaques.
机译:可以从单个超声(US)射频数据采集中获得定量超声(QUS)成像方法,包括弹性成像,回声分析和斑点统计建模。由于这些US成像方法可提供补充的定量组织信息,因此可以从它们的组合中获得对颈动脉斑块的表征。该研究纳入了66例有症状(n = 26)和无症状(n = 40)的颈动脉粥样硬化斑块的患者。其中31例接受了磁共振成像(MRI)以表征斑块易损性并量化斑块成分。对所有患者进行US射频数据序列采集,并用于计算无创血管US弹性成像和其他QUS功能。其他QUS功能是从三种类型的图像中计算得出的:同态K(HK)参数图,中上参数图和对数压缩B模式图像。进行了以下六个分类任务:1)检测小面积的脂质; 2)大面积的脂质; 3)钙化面积大; 4)纤维帽破裂; 5)区分基于MRI的非脆弱性颈动脉斑块与新血管化或脆弱血管斑块的分类; 6)有症状和无症状患者的确认。首先应用功能选择,以将QUS参数的数量减少到每个分类任务最多三个。然后使用随机森林机器学习算法进行分类。接收器工作曲线(AUC)下的面积是使用自举法计算的。对于所有任务,与单独使用弹性成像或单独使用其他QUS相比,基于弹性成像,HK参数图和B模式灰度级的功能均实现了统计学上显着更高的AUC(p <0.001)。为了检测大面积的脂质,基于弹性成像,HK和B模式灰度级特征,产生最高AUC(0.90、95%CI 0.80-0.92,p <0.001)的组合。为了检测大范围的钙化,最高的AUC(0.95,95%CI 0.94-0.96,p <0.001)基于HK和B模式灰度特征。对于其他任务,AUC在0.79至0.97之间变化。最好的组合都不包含Nakagami功能。这项研究显示了将单次美国采集所获得的不同特征与机器学习相结合以表征颈动脉斑块的附加价值。

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