BioImaging Laboratory, Department of Bioengineering, University of Louisville, Louisville, KY, USA.
Electronics and Communications Engineering Department, Faculty of Engineeering, Mansoura University, Mansoura, Egypt.
Sci Rep. 2020 May 7;10(1):7725. doi: 10.1038/s41598-020-64206-x.
Cardiac magnetic resonance (MR) imaging is one of the most rigorous form of imaging to assess cardiac function in vivo. Strain analysis allows comprehensive assessment of diastolic myocardial function, which is not indicated by measuring systolic functional parameters using with a normal cine imaging module. Due to the small heart size in mice, it is not possible to perform proper tagged imaging to assess strain. Here, we developed a novel deep learning approach for automated quantification of strain from cardiac cine MR images. Our framework starts by an accurate localization of the LV blood pool center-point using a fully convolutional neural network (FCN) architecture. Then, a region of interest (ROI) that contains the LV is extracted from all heart sections. The extracted ROIs are used for the segmentation of the LV cavity and myocardium via a novel FCN architecture. For strain analysis, we developed a Laplace-based approach to track the LV wall points by solving the Laplace equation between the LV contours of each two successive image frames over the cardiac cycle. Following tracking, the strain estimation is performed using the Lagrangian-based approach. This new automated system for strain analysis was validated by comparing the outcome of these analysis with the tagged MR images from the same mice. There were no significant differences between the strain data obtained from our algorithm using cine compared to tagged MR imaging. Furthermore, we demonstrated that our new algorithm can determine the strain differences between normal and diseased hearts.
心脏磁共振(MR)成像是评估活体心脏功能最严格的成像方式之一。应变分析允许全面评估舒张心肌功能,而使用正常电影成像模块测量收缩功能参数无法指示舒张心肌功能。由于小鼠的心脏较小,无法进行适当的标记成像来评估应变。在这里,我们开发了一种从心脏电影磁共振图像自动量化应变的新深度学习方法。我们的框架首先使用全卷积神经网络(FCN)架构准确地定位 LV 血池中心点。然后,从所有心脏切片中提取包含 LV 的感兴趣区域(ROI)。通过新颖的 FCN 架构,从提取的 ROI 中分割 LV 腔和心肌。对于应变分析,我们开发了一种基于拉普拉斯的方法,通过在心脏周期内求解两个连续图像帧之间的 LV 轮廓之间的拉普拉斯方程来跟踪 LV 壁点。跟踪后,使用基于拉格朗日的方法进行应变估计。通过将这些分析的结果与来自同一批小鼠的标记 MR 图像进行比较,验证了我们的新应变分析自动化系统。使用电影法从我们的算法获得的应变数据与标记 MR 成像之间没有显著差异。此外,我们证明我们的新算法可以确定正常和患病心脏之间的应变差异。