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Decision Fusion of Multiple Classifiers for Coronary Plaque Characterization from IVUS Images

机译:用于IVUS图像的冠脉斑块表征的多个分类器的决策融合

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Vascular tissue characterization is of great importance concerning the possibility of an Acute Cardiac Syndrome (ACS). Gray-scale intravascular ultrasound (IVUS) is a powerful tomographic modality providing a thorough visualization of coronary arteries. Among the existing methods, virtual histology (VH) is the most popular and clinically available technique for plaque component analysis, it suffers however from a poor longitudinal resolution. In order to surmount this demerit, a new image-based methodology for plaque assessment is suggested here that differentiates tissue components into four classes: calcium, necrotic core, fibrous and fibro-lipid. A rich set of five textural feature families are extracted from IVUS images, computed at different scales. The main contribution of this paper is that tissue classification is accomplished using the principles of multiple classifiers combination approach. At the first stage, an ensemble of base SVM classifiers is constructed from each feature family, separately. The fuzzy outputs of the individual classifiers are then aggregated to provide the final fused results. We investigate four efficient decision fusion schemes of the literature and the SVM fuser. Extensive experimentation is carried out to highlight the merits of the suggested schemes against single SVM classifiers that use reduced feature subsets obtained after feature selection or the entire feature space. The analysis demonstrates that the decision fusion techniques offer improved classification accuracies, compared to single SVM classifiers and existing methods in IVUS imaging. In addition, the method provides accurate assessments of plaque composition in IVUS images.
机译:血管组织表征对于急性心脏综合症(ACS)的可能性非常重要。灰度血管内超声(IVUS)是一种功能强大的断层扫描方式,可对冠状动脉进行彻底的可视化。在现有方法中,虚拟组织学(VH)是用于斑块成分分析的最流行和临床上可用的技术,但是它具有较差的纵向分辨率。为了克服这一缺点,这里提出了一种新的基于图像的斑块评估方法,该方法将组织成分分为四类:钙,坏死芯,纤维和纤维脂。从IVUS图像中提取了丰富的五个纹理特征族,并以不同的比例进行计算。本文的主要贡献是组织的分类是使用多分类器组合方法的原理完成的。在第一阶段,从每个功能族分别构建基本SVM分类器的集合。然后汇总各个分类器的模糊输出,以提供最终的融合结果。我们研究了文献和SVM定影器的四种有效的决策融合方案。进行了广泛的实验,以突出针对单个SVM分类器的建议方案的优点,该分类器使用在特征选择后或整个特征空间中获得的缩减特征子集。分析表明,与单个SVM分类器和IVUS成像中的现有方法相比,决策融合技术提供了改进的分类精度。此外,该方法可以准确评估IVUS图像中的斑块组成。

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