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首页> 外文期刊>Medical Imaging, IEEE Transactions on >Spatio-Temporal Tensor Decomposition of a Polyaffine Motion Model for a Better Analysis of Pathological Left Ventricular Dynamics
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Spatio-Temporal Tensor Decomposition of a Polyaffine Motion Model for a Better Analysis of Pathological Left Ventricular Dynamics

机译:多仿射运动模型的时空张量分解,用于更好地分析病理性左心室动力学

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摘要

Given that heart disease can cause abnormal motion dynamics over the cardiac cycle, understanding and quantifying cardiac motion can provide insight for clinicians to aid with diagnosis, therapy planning, and determining prognosis. The goal of this paper is to extract population-specific motion patterns from 3D displacements in order to identify the mean motion in a population, and to describe pathology-specific motion patterns in terms of the spatial and temporal components. Since there are common motion patterns observed in patients with the same condition, extracting these can lead towards a better understanding of the disease. Quantifying cardiac motion at a population level is not a simple task since images can vary widely in terms of image quality, size, resolution, and pose. To overcome this, we analyze the parameters obtained from a cardiac-specific Polyaffine motion-tracking algorithm, which are aligned both spatially and temporally to a common reference space. Once all parameters are aligned, different subjects can be compared and analyzed in the space of Polyaffine transformations by projecting the transformations to a reduced order subspace in which dominant motion patterns in each population can be extracted. Using tensor decomposition, the spatial and temporal aspects can be decoupled in order to study the components individually. The proposed method was validated on healthy volunteers and Tetralogy of Fallot patients according to known spatial and temporal behavior for each population. A key advantage of this method is the ability to regenerate motion sequences from the models, which can be visualized in terms of the full motion.
机译:鉴于心脏病会导致整个心动周期的异常动态变化,因此了解和量化心脏运动可为临床医生提供见解,以帮助其诊断,治疗计划和确定预后。本文的目的是从3D位移中提取特定于人群的运动模式,以便识别总体中的平均运动,并根据时空成分描述特定于病理的运动模式。由于在相同状况的患者中观察到常见的运动模式,因此提取这些运动模式可以更好地了解该疾病。在人群水平上量化心脏运动不是一件容易的事,因为图像在图像质量,大小,分辨率和姿势方面可以有很大差异。为了克服这个问题,我们分析了从特定于心脏的Polyaffine运动跟踪算法获得的参数,这些参数在空间和时间上都与公共参考空间对齐。一旦所有参数都对齐,就可以通过将变换投影到降阶子空间来比较和分析Polyaffine变换空间中的不同对象,在该子空间中可以提取每个总体中的主导运动模式。使用张量分解,可以将时空方面解耦,以便分别研究分量。根据每个人群的已知时空行为,对健康志愿者和法洛患者四联症进行了验证。该方法的主要优点是能够从模型中重新生成运动序列,可以通过完整运动将其可视化。

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