使用在线学习神经网络的3D电影MRI估计左心房位移和应变的高分辨率地图

Christoforos Galazis;Samuel Shepperd;Emma J. P. Brouwer;Sandro Queirós;Ebraham Alskaf;Mustafa Anjari;Amedeo Chiribiri;Jack Lee;Anil A. Bharath;Marta Varela
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引用次数: 0

摘要

左心房功能分析对于评估心脏健康和了解房颤等疾病具有重要意义。对于LA运动和变形的详细3D表征,电影MRI是理想的,但缺乏适当的采集和分析工具。在这里,我们提出了使用在线学习神经网络(Aladdin)分析左心房位移和变形的工具,并就Aladdin如何在全球和区域表征3D LA功能进行了技术可行性研究。Aladdin包括一个在线分割和图像配准网络,以及为LA量身定制的应变计算管道。我们从10名健康志愿者和8名心血管疾病(CVD)患者的图像中创建了LA位移矢量场(DVF)大小和LA主应变值的地图,其中2名患者有较大的左心室射血分数(LVEF)损伤。此外,我们还利用健康志愿者的数据创建了这些生物标志物的图谱。结果表明,Aladdin可以准确地跟踪整个心脏周期的LA壁,并表征其运动和变形。Aladdin评估的全球LA功能标记与2D电影MRI的估计非常吻合。在健康队列中观察到更明显的活跃收缩期,而CVD组显示LA功能总体下降。阿拉丁是唯一能够识别LA区域异常变形指标,可能表明局灶性病理。我们期望阿拉丁有重要的临床应用,因为它可以无创地表征心房病理生理。所有源代码和数据可在:https://github.com/cgalaz01/aladdin_cmr_la。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-Resolution Maps of Left Atrial Displacements and Strains Estimated With 3D Cine MRI Using Online Learning Neural Networks
The functional analysis of the left atrium (LA) is important for evaluating cardiac health and understanding diseases like atrial fibrillation. Cine MRI is ideally placed for the detailed 3D characterization of LA motion and deformation but is lacking appropriate acquisition and analysis tools. Here, we propose tools for the Analysis of Left Atrial Displacements and DeformatIons using online learning neural Networks (Aladdin) and present a technical feasibility study on how Aladdin can characterize 3D LA function globally and regionally. Aladdin includes an online segmentation and image registration network, and a strain calculation pipeline tailored to the LA. We create maps of LA Displacement Vector Field (DVF) magnitude and LA principal strain values from images of 10 healthy volunteers and 8 patients with cardiovascular disease (CVD), of which 2 had large left ventricular ejection fraction (LVEF) impairment. We additionally create an atlas of these biomarkers using the data from the healthy volunteers. Results showed that Aladdin can accurately track the LA wall across the cardiac cycle and characterize its motion and deformation. Global LA function markers assessed with Aladdin agree well with estimates from 2D Cine MRI. A more marked active contraction phase was observed in the healthy cohort, while the CVD $\text {LVEF}_{\downarrow } $ group showed overall reduced LA function. Aladdin is uniquely able to identify LA regions with abnormal deformation metrics that may indicate focal pathology. We expect Aladdin to have important clinical applications as it can non-invasively characterize atrial pathophysiology. All source code and data are available at: https://github.com/cgalaz01/aladdin_cmr_la.
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