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A Machine Learning Approach to Delineating Carotid Atherosclerotic Plaque Structure and Composition by ARFI Ultrasound, In Vivo

机译:体内ARFI超声描述颈动脉粥样硬化斑块结构和成分的机器学习方法

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Vulnerable atherosclerotic plaques have high risk for rupture, with rupture potential related to plaque composition and structure. We have previously shown that soft (intraplaque hemorrhage IPH, and lipid rich necrotic core LRNC) are differentiated from stiff (collagen COL, and calcium CAL) plaque elements in human carotid plaques by Acoustic Radiation Force Impulse (ARFI)-derived peak displacement (PD). However, PD had lower performance for differentiating between features with similar stiffness. Here we evaluate an alternative method to improve intraplaque feature delineation by using machine learning methods. From ARFI imaging data, SNR, cross-correlation coefficient, and displacement were used as inputs to random forests (RaF) and support vector machines (SVM) algorithms. The algorithms were trained to identify IPH, LRNC, COL and CAL by 5-fold cross-validation with ground truth identified from histology. From output likelihood matrices, CNR between plaque components were calculated and compared to the corresponding CNR achieved by ARFI PD and VoA. Results showed that both RaF and SVM achieved higher CNRs for distinguishing between features than ARFI outputs alone. These results suggest that, relative to PD, machine learning improves ARFI discrimination of carotid plaque components that are correlated to vulnerability for rupture.
机译:易损的动脉粥样硬化斑块具有破裂的高风险,其破裂潜力与斑块的组成和结构有关。先前我们已经证明,通过声辐射力脉冲(ARFI)衍生的峰位移(PD),可将人颈动脉斑块中的软性(斑块内出血IPH和富含脂质的坏死核心LRNC)与硬性(胶原蛋白COL和钙CAL)斑块元素区分开来。 )。但是,PD在区分具有相似刚度的特征时性能较低。在这里,我们评估了一种通过使用机器学习方法来改善斑块内特征描绘的替代方法。从ARFI成像数据中,将SNR,互相关系数和位移用作随机森林(RaF)和支持向量机(SVM)算法的输入。该算法经过训练,可以通过5倍交叉验证与组织学确定的地面真相来识别IPH,LRNC,COL和CAL。根据输出似然矩阵,计算斑块成分之间的CNR,并将其与通过ARFI PD和VoA实现的相应CNR进行比较。结果表明,RaF和SVM都比单独的ARFI输出获得了更高的CNR以区分特征。这些结果表明,相对于PD,机器学习改善了与破裂易损性相关的颈动脉斑块成分的ARFI辨别力。

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