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Automated detection of chronic kidney disease using image fusion and graph embedding techniques with ultrasound images

机译:使用超声图像融合和图形嵌入技术自动检测慢性肾病

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摘要

Chronic Kidney disease (CKD) is a progressive disease affecting more than twenty million individuals in the United States. Disease progression is often characterized by complications such as cardiovascular diseases, anemia, hyperlipidemia and metabolic bone diseases etc., Based on estimated GFR values, the disease is categorized in 5 stages which significantly influence patient outcome. Cardiovascular ultrasound (US) (echocardiography) imagery demonstrate significant hemodynamic alterations that are secondary to CKD in the form of volume/ pressure overload. As the CKD pathology directly impacts cardiovascular disease, the US imaging shows structural and hemodynamic adaptation. Hence, the development of a computer-aided diagnosis (CAD) model to predict CKD would be desirable, and can potentially improve treatment. Several prior studies have utilized kidney features for quantitative analysis. In this paper, acquisition of the four-chamber heart US image is employed to predict CKD stage. The method combines image and feature fusion techniques under a graph embedding framework to characterize heart chamber properties. Moreover, a support vector machine is incorporated to classify heart US images. The proposed method achieved 100 % accuracy for a two-class system, and 99.09 % accuracy for a multi-class categorization scenario. Hence, our proposed CAD tool is deployable in both clinic and hospital settings for computer-aided screening of CKD.
机译:慢性肾病(CKD)是一种影响美国超过二百万人的进步疾病。疾病进展通常是基于估计的GFR值的心血管疾病,贫血,高脂血症和代谢骨病等的并发症的特征,该疾病分类为5个阶段,这显着影响了患者结果。心血管超声(US)(超声心动图)图像表明,以体积/压力过载的形式缩放到CKD的显着血液动力学改变。随着CKD病理学直接影响心血管疾病,美国成像显示结构和血液动力学适应。因此,将需要开发一种计算机辅助诊断(CAD)模型来预测CKD,并且可以潜在地改善治疗。几项现有研究利用肾功能进行定量分析。在本文中,采用四室心脏的图像来预测CKD阶段。该方法在嵌入框架下将图像和特征融合技术组合在于表征心脏室属性。此外,结合了支持向量机以对心脏图像进行分类。该方法为两级系统实现了100%的精度,为多级分类方案的精度为99.09%。因此,我们提出的CAD工具可在CKD的计算机辅助筛选中部署在诊所和医院环境中。

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