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Cardiac Motion Recovery via Active Trajectory Field Models

机译:通过主动轨迹场模型进行心脏运动恢复

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摘要

Cardiovascular researchers are constantly developing new and innovative medical imaging technologies, striving to improve the understanding, diagnosis, and treatment of cardiovascular dysfunction. Combining these sophisticated imaging methods with advancements in image understanding via computational intelligence will continue to advance the frontier of cardiovascular medicine. Recently, researchers have turned to a new class of tissue motion imaging techniques, including displacement encoding with stimulated echoes (DENSE) in cardiac magnetic resonance (cMR) imaging, to directly quantify cardiac displacement and produce accurate spatiotemporal measurements of myocardial strain, twist, and torsion. The associated analysis of DENSE cMR and other tissue motion imagery, however, represents a major bottleneck in the study of intramyocardial mechanics. In the computational intelligence area of deformable models, this paper develops an automated motion recovery technique termed active trajectory field models (ATFMs) geared toward these new motion imaging protocols, offering quantitative physiological measurements without the pains of manual analyses. This novel generative deformable model exploits both image information and prior knowledge of cardiac motion, utilizing a point distribution model derived from a training set of myocardial trajectory fields to automatically recover cardiac motion from a noisy image sequence. The effectiveness of the ATFM method is demonstrated by quantifying myocardial motion in 2-D short-axis murine DENSE cMR image sequences both before and after myocardial infarction, producing results comparable to existing semiautomatic analysis methods.
机译:心血管研究人员正在不断开发新的创新医学影像技术,努力提高对心血管功能障碍的理解,诊断和治疗。将这些复杂的成像方法与通过计算智能在图像理解方面的进步相结合,将继续推动心血管医学的前沿。最近,研究人员转向一种新型的组织运动成像技术,包括在心脏磁共振(cMR)成像中采用刺激回波(DENSE)进行位移编码,以直接量化心脏位移并产生准确的时空测量值,以测量心肌应变,扭曲和扭转。然而,DENSE cMR和其他组织运动图像的相关分析代表了心肌内力学研究的主要瓶颈。在可变形模型的计算智能领域,本文针对这些新的运动成像协议开发了一种称为运动轨迹场模型(ATFM)的自动运动恢复技术,可提供定量的生理测量结果,而无需进行人工分析。这种新颖的可生成变形模型利用图像信息和心脏运动的先验知识,利用从心肌轨迹场的训练集导出的点分布模型来自动从嘈杂的图像序列中恢复心脏运动。通过在心肌梗塞之前和之后对二维短轴鼠DENSE cMR图像序列中的心肌运动进行量化,证明了ATFM方法的有效性,其结果可与现有的半自动分析方法相媲美。

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