DMCVR:三维心脏容量重建的形态学引导扩散模型

Xiaoxiao He, Chaowei Tan, Ligong Han, Bo Liu, L. Axel, Kang Li, Dimitris N. Metaxas
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摘要

通过电影磁共振成像(cMRI)精确的三维心脏重建对于改善心血管疾病诊断和了解心脏运动至关重要。然而,目前用于临床的基于心脏mri的重建技术是二维的,通过平面分辨率有限,导致重建的心脏体积质量低。为了更好地从稀疏的二维图像堆栈中重建三维心脏体积,我们提出了一种用于三维心脏体积重建的形态学引导扩散模型DMCVR,该模型综合了高分辨率的二维图像和相应的三维重建体积。该方法通过在生成模型上调节心脏形态,消除了耗时的潜在代码迭代优化过程,并提高了生成质量,优于以往的方法。学习到的潜在空间提供了全局语义、局部心脏形态和每个二维cMRI切片的细节,具有高度可解释的价值,可以重建三维心脏形状。我们的实验表明,DMCVR在二维生成和三维重建性能等几个方面都是非常有效的。有了DMCVR,我们可以制作高分辨率的3D心脏MRI重建,超越目前的技术。我们提出的框架在提高心脏病诊断和治疗计划的准确性方面具有很大的潜力。代码可以在https://github.com/hexiaoxiao-cs/DMCVR上访问。
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DMCVR: Morphology-Guided Diffusion Model for 3D Cardiac Volume Reconstruction
Accurate 3D cardiac reconstruction from cine magnetic resonance imaging (cMRI) is crucial for improved cardiovascular disease diagnosis and understanding of the heart's motion. However, current cardiac MRI-based reconstruction technology used in clinical settings is 2D with limited through-plane resolution, resulting in low-quality reconstructed cardiac volumes. To better reconstruct 3D cardiac volumes from sparse 2D image stacks, we propose a morphology-guided diffusion model for 3D cardiac volume reconstruction, DMCVR, that synthesizes high-resolution 2D images and corresponding 3D reconstructed volumes. Our method outperforms previous approaches by conditioning the cardiac morphology on the generative model, eliminating the time-consuming iterative optimization process of the latent code, and improving generation quality. The learned latent spaces provide global semantics, local cardiac morphology and details of each 2D cMRI slice with highly interpretable value to reconstruct 3D cardiac shape. Our experiments show that DMCVR is highly effective in several aspects, such as 2D generation and 3D reconstruction performance. With DMCVR, we can produce high-resolution 3D cardiac MRI reconstructions, surpassing current techniques. Our proposed framework has great potential for improving the accuracy of cardiac disease diagnosis and treatment planning. Code can be accessed at https://github.com/hexiaoxiao-cs/DMCVR.
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