Modeling Seismocardiographic Signal using Finite Element Modeling and Medical Image Processing

P. Gamage, M. K. Azad, R. Sandler, H. Mansy
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引用次数: 2

Abstract

Seismocardiography (SCG) is the measurement of the chest surface accelerations that are primarily produced by a combination of mechanical activities of the heart, such as valve closures and openings, blood momentum changes and myocardial movements [ 1 – 3 ]. The complex nature of these processes has made it challenging to relate the morphology of the SCG signal to its genesis. Certain studies have used medical imaging to identify several feature points of the SCG signal by correlating their occurrence time with the corresponding cardiac events seen in imaging [4 , 5] . However, these findings remain inconclusive [6] . The localized movements (i.e. valve openings and closures, ventricular contractions, blood flow accelerations etc.) may superimpose causing complex movements where original movements may amplify or nullify as they reach the chest surface and affect SCG morphology. Hence, SCG signal can also be described as the propagated vibrations generated by individual sources (i.e., valve closures and openings, blood flow accelerations). These vibrations displace their more immediate boundaries (e.g., pericardium, Aorta wall) and surrounding tissues (e.g. lung tissue, ribs, chest wall muscle and skin) before they are detected at the chest surface. Hence, modeling the propagation of overall cardiac wall motion to the chest surface may help enhance our understanding of SCG genesis.
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用有限元建模和医学图像处理建模地震心动图信号
地震心动图(Seismocardiography, SCG)是对胸表面加速度的测量,这种加速度主要是由心脏的机械活动组合产生的,如瓣膜关闭和打开、血流动量变化和心肌运动[1 - 3]。这些过程的复杂性使得将SCG信号的形态与其起源联系起来具有挑战性。一些研究利用医学成像将SCG信号的几个特征点的出现时间与成像中看到的相应心脏事件相关联,从而识别出SCG信号的几个特征点[4,5]。然而,这些发现仍然没有定论[6]。局部运动(即瓣膜开闭、心室收缩、血流加速等)可能叠加导致复杂运动,其中原始运动在到达胸部表面时可能放大或消失,并影响SCG形态。因此,SCG信号也可以被描述为由单个源(即阀门关闭和打开,血流加速)产生的传播振动。这些振动在胸部表面被检测到之前,就会取代它们更直接的边界(如心包、主动脉壁)和周围组织(如肺组织、肋骨、胸壁肌肉和皮肤)。因此,模拟整个心壁运动到胸部表面的传播可能有助于我们对SCG发生的理解。
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