用机器学习测量标记MRI中心脏应变的任意点跟踪。

Michael Loecher, Ariel J Hannum, Luigi E Perotti, Daniel B Ennis
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引用次数: 2

摘要

心脏标记MR图像允许通过跟踪整个心脏周期标记线的运动来测量心脏的变形场。机器学习(ML)算法能够准确而稳健地跟踪标签线。在这里,使用具有已知基础真理的大量合成物理驱动的训练数据集来训练ML网络,以跟踪任意位置的任意数量的点,而不是锚定在标记线本身。研究了具有已知(地真)应变值的计算变形心模的标签跟踪和应变计算方法。这使得标签跟踪和应变精度能够被表征为一系列图像采集和标签跟踪参数。这些方法还在活体志愿者数据上进行了测试。当使用标准临床方案的任意点跟踪时,中位跟踪误差在体内。
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Arbitrary Point Tracking with Machine Learning to Measure Cardiac Strains in Tagged MRI.

Cardiac tagged MR images allow for deformation fields to be measured in the heart by tracking the motion of tag lines throughout the cardiac cycle. Machine learning (ML) algorithms enable accurate and robust tracking of tag lines. Herein, the use of a massive synthetic physics-driven training dataset with known ground truth was used to train an ML network to enable tracking any number of points at arbitrary positions rather than anchored to the tag lines themselves. The tag tracking and strain calculation methods were investigated in a computational deforming cardiac phantom with known (ground truth) strain values. This enabled both tag tracking and strain accuracy to be characterized for a range of image acquisition and tag tracking parameters. The methods were also tested on in vivo volunteer data. Median tracking error was <0.26mm in the computational phantom, and strain measurements were improved in vivo when using the arbitrary point tracking for a standard clinical protocol.

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