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Contour Tracking and Probabilistic Segmentation of Tissue Phase Mapping MRI

机译:组织相图MRI的轮廓跟踪和概率分割

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Many cardiovascular diseases manifest as an abnormal motion pattern of the heart muscle (myocardium). Local cardiac motion can be non-invasively quantified with magnetic resonance imaging (MRI), using methods such as tissue phase mapping (TPM), which directly measures the local myocardial velocities over time with high temporal and spatial resolution. The challenges for routine clinical use of TPM for the diagnosis and monitoring of cardiac function lie in providing a fast and accurate myocardium segmentation and a robust quantitative analysis of the velocity field. Both of these tasks are difficult to automate on routine clinical data because of the reduced contrast in the presence of noise. In this work, we propose to address these challenges with a segmentation approach that combines smooth, iterative contour displacement and probabilistic segmentation using particle tracing, based on the underlying velocity field. The proposed solution enabled the efficient and reproducible segmentation of TPM datasets from 27 patients and 14 volunteers, showing good potential for routine use in clinical studies. Our method allows for a more reliable quantitative analysis of local myocardial velocities, by giving a higher weight to velocity vectors corresponding to pixels more likely to belong to the myocardium. The accuracy of the contour propagation was evaluated on nine subjects, showing an average error smaller than the spatial resolution of the image data. Statistical analysis concluded that the difference between the segmented contours and the ground truths was not significantly higher than the variability between the manual ground truth segmentations.
机译:许多心血管疾病表现为心肌(心肌)的异常运动模式。可以使用组织成像法(TPM)等方法通过磁共振成像(MRI)来无创地量化局部心脏运动,该方法可以以较高的时间和空间分辨率直接测量随时间变化的局部心肌速度。 TPM在临床上常规用于诊断和监测心功能的挑战在于提供快速,准确的心肌分割和对速度场的可靠定量分析。由于存在噪声时对比度降低,因此这两项任务都难以根据常规临床数据自动执行。在这项工作中,我们建议使用一种分割方法来解决这些挑战,该方法将基于基础速度场的平滑,迭代轮廓位移和使用粒子跟踪的概率分割相结合。所提出的解决方案能够对来自27位患者和14位志愿者的TPM数据集进行有效且可重复的分割,显示出在临床研究中常规使用的良好潜力。我们的方法通过对与更可能属于心肌的像素相对应的速度矢量赋予较高的权重,从而可以对局部心肌速度进行更可靠的定量分析。在九个对象上评估了轮廓传播的准确性,显示出的平均误差小于图像数据的空间分辨率。统计分析得出的结论是,分割后的轮廓线与地面实况之间的差异并不明显高于手动地面实况分段之间的差异。

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