论文标题
借助阻抗心脏照相,检测和定位冠状动脉病变
Detection and localization of Coronary Arterial Lesion with the Aid of Impedance Cardiography
论文作者
论文摘要
近年来,冠状动脉疾病正在升级,可能会在2030年假设流行病。常规CAG是一种侵入性程序。常规的CAG和CT(计算机断层扫描)血管造影,都需要对介入心脏病专家或放射科医生的专家监督。在这项工作中,我们提出了一种新型的设计和方法,用于使用阻抗心脏摄影(ICG)(ICG)对冠状动脉病变进行非侵入性检测和定位。建议的设备记录的ICG信号用于提取特征点并计算增强索引,振幅和其他相关参数。提取的特征用作训练有素的人工神经网络的输入,以检测和预测冠状动脉病变。训练有素的网络生成专门模型,用于诊断动脉病变。所提出的方法可检测左主冠状动脉(LMCA),左前降动脉(LAD),对角支枝,左绕弯曲动脉(LCX)和右冠状动脉(RCA),精度分别为92%,82%,76%,76%,84%,84%。共同的个体也可以使用所提出的装置在没有任何专家监督的情况下检测动脉病变。拟议的算法消除了CAG诊断冠状动脉病变(狭窄)的需求,并提供了一种新方法,可用于非侵入性监测心血管血流动力学,检测和冠状动脉病变的定位。
In recent years, coronary artery disease is escalating and is likely to assume an epidemic proportion by 2030. Currently the reliable methods for detection of coronary arterial lesions are either conventional coronary angiogram (CAG) or MDCT (Multiple Detector Computed Tomography) coronary angiogram. Conventional CAG is an invasive procedure. Conventional CAG and CT (Computed Tomography) angiogram, both require expert supervision of either an interventional cardiologist or a radiologist. In this work, we have proposed a novel design and method for non-invasive detection and localization of coronary arterial lesion using Impedance Cardiography (ICG). The ICG signal recorded by the proposed device is used to extract feature points and compute augmentation index, amplitude and other time related parameters. The extracted features are used as input to a trained artificial neural network, for detection and prediction of coronary arterial lesions. The trained network generates specialized models, to be used for diagnosis of arterial lesions. The proposed methodology detects lesion in Left main coronary artery (LMCA), Left anterior descending artery (LAD), Diagonal branch, Left circumflex artery (LCX), and Right coronary artery (RCA) with an accuracy of 92%, 82%, 76%, 76%, 84% respectively. The proposed device could be also used by a common individual for detection of arterial lesion without any expert supervision, unassisted. The proposed algorithm eliminates the need of CAG for diagnosis of coronary arterial lesions (stenosis), and provides an insight into a new method for non-invasive monitoring of cardiovascular haemodynamics, detection and localization of coronary arterial lesion.