基于cnn的心脏运动提取,生成可变形几何左心室心肌模型。

Roshan Reddy Upendra, Brian Jamison Wentz, Richard Simon, Suzanne M Shontz, Cristian A Linte
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引用次数: 5

摘要

患者特异性左心室(LV)心肌模型有潜力用于各种临床场景,以改进诊断和治疗计划。心脏磁共振成像(MR)提供高分辨率的图像来重建患者特定的左室心肌几何模型。随着深度学习的出现,从电影心脏MR图像中准确分割心脏腔室,以及在大量图像数据集上进行图像配准以估计心脏运动的无监督学习成为可能。在这里,我们提出了一个基于深度学习的框架,用于从电影心脏MR图像中开发患者特定的左室心肌几何模型,使用自动心脏诊断挑战(ACDC)数据集。我们使用基于voxelmorphs的卷积神经网络(CNN)估计的变形场,将舒张末期(ED)帧的等面网格和体积网格传播到心脏周期的后续帧。我们评估了基于cnn的传播模型与每个心脏阶段的分割模型,以及使用另一种传统的非刚性图像配准技术传播的模型。此外,我们使用基于log barrier的网格扭曲(LBWARP)方法在心脏周期的各个阶段生成动态左室心肌体积网格,并将其与cnn传播的体积网格进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CNN-Based Cardiac Motion Extraction to Generate Deformable Geometric Left Ventricle Myocardial Models from Cine MRI.

Patient-specific left ventricle (LV) myocardial models have the potential to be used in a variety of clinical scenarios for improved diagnosis and treatment plans. Cine cardiac magnetic resonance (MR) imaging provides high resolution images to reconstruct patient-specific geometric models of the LV myocardium. With the advent of deep learning, accurate segmentation of cardiac chambers from cine cardiac MR images and unsupervised learning for image registration for cardiac motion estimation on a large number of image datasets is attainable. Here, we propose a deep leaning-based framework for the development of patient-specific geometric models of LV myocardium from cine cardiac MR images, using the Automated Cardiac Diagnosis Challenge (ACDC) dataset. We use the deformation field estimated from the VoxelMorph-based convolutional neural network (CNN) to propagate the isosurface mesh and volume mesh of the end-diastole (ED) frame to the subsequent frames of the cardiac cycle. We assess the CNN-based propagated models against segmented models at each cardiac phase, as well as models propagated using another traditional nonrigid image registration technique. Additionally, we generate dynamic LV myocardial volume meshes at all phases of the cardiac cycle using the log barrier-based mesh warping (LBWARP) method and compare them with the CNN-propagated volume meshes.

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