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Attri-VAE: Attribute-based interpretable representations of medical images with variational autoencoders.Attri-VAE:基于属性的医学图像可解释表示与变分自编码器
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Unsupervised MRI Reconstruction via Zero-Shot Learned Adversarial Transformers.基于零样本学习对抗 Transformer 的无监督 MRI 重建。
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Squeeze-and-Excitation Networks.挤压激励网络。
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Detection of Regional Mechanical Activation of the Left Ventricular Myocardium Using High Frame Rate Ultrasound Imaging.应用高帧率超声成像技术检测左心室心肌的局部机械激活。
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Finite-Dimensional Lie Algebras for Fast Diffeomorphic Image Registration.用于快速微分同胚图像配准的有限维李代数
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Singular Value Decomposition Applied to Cardiac Strain from MR Imaging for Selection of Optimal Cardiac Resynchronization Therapy Candidates.奇异值分解应用于心脏磁共振成像应变以选择最佳心脏再同步治疗候选者
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Impact of mechanical activation, scar, and electrical timing on cardiac resynchronization therapy response and clinical outcomes.机械激活、瘢痕和电定时对心脏再同步治疗反应和临床结果的影响。
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10
MR cine DENSE dyssynchrony parameters for the evaluation of heart failure: comparison with myocardial tissue tagging.磁共振电影弥散同步性参数评价心力衰竭:与心肌组织标记法的比较。
JACC Cardiovasc Imaging. 2012 Aug;5(8):789-97. doi: 10.1016/j.jcmg.2011.12.024.

用于从稀疏二维心脏磁共振成像预测三维晚期机械激活的扩散模型

Diffusion Models To Predict 3D Late Mechanical Activation From Sparse 2D Cardiac MRIs.

作者信息

Jayakumar Nivetha, Xing Jiarui, Hossain Tonmoy, Epstein Fred, Bilchick Kenneth, Zhang Miaomiao

机构信息

Department of Electrical and Computer Engineering, University of Virginia, USA.

Department of Computer Science, University of Virginia, USA.

出版信息

Proc Mach Learn Res. 2023 Dec;225:190-200.

PMID:38525446
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10958778/
Abstract

Identifying regions of late mechanical activation (LMA) of the left ventricular (LV) myocardium is critical in determining the optimal pacing site for cardiac resynchronization therapy in patients with heart failure. Several deep learning-based approaches have been developed to predict 3D LMA maps of LV myocardium from a stack of sparse 2D cardiac magnetic resonance imaging (MRIs). However, these models often loosely consider the geometric shape structure of the myocardium. This makes the reconstructed activation maps suboptimal; hence leading to a reduced accuracy of predicting the late activating regions of hearts. In this paper, we propose to use shape-constrained diffusion models to better reconstruct a 3D LMA map, given a limited number of 2D cardiac MRI slices. In contrast to previous methods that primarily rely on spatial correlations of image intensities for 3D reconstruction, our model leverages object shape as priors learned from the training data to guide the reconstruction process. To achieve this, we develop a joint learning network that simultaneously learns a mean shape under deformation models. Each reconstructed image is then considered as a deformed variant of the mean shape. To validate the performance of our model, we train and test the proposed framework on a publicly available mesh dataset of 3D myocardium and compare it with state-of-the-art deep learning-based reconstruction models. Experimental results show that our model achieves superior performance in reconstructing the 3D LMA maps as compared to the state-of-the-art models.

摘要

识别左心室(LV)心肌的晚期机械激活(LMA)区域对于确定心力衰竭患者心脏再同步治疗的最佳起搏部位至关重要。已经开发了几种基于深度学习的方法,用于从一堆稀疏的二维心脏磁共振成像(MRI)预测LV心肌的三维LMA图。然而,这些模型通常不太考虑心肌的几何形状结构。这使得重建的激活图不够理想,从而导致预测心脏晚期激活区域的准确性降低。在本文中,我们建议使用形状约束扩散模型,在给定有限数量的二维心脏MRI切片的情况下,更好地重建三维LMA图。与以前主要依靠图像强度的空间相关性进行三维重建的方法不同,我们的模型利用从训练数据中学到的物体形状作为先验知识来指导重建过程。为了实现这一点,我们开发了一个联合学习网络,该网络同时在变形模型下学习平均形状。然后将每个重建图像视为平均形状的变形变体。为了验证我们模型的性能,我们在一个公开可用的三维心肌网格数据集上训练和测试所提出的框架,并将其与基于深度学习的最新重建模型进行比较。实验结果表明,与最新模型相比,我们的模型在重建三维LMA图方面具有卓越的性能。