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Biomechanics-Informed Neural Networks for Myocardial Motion Tracking in MRI

机译:MRI中的生物力学知识的神经网络用于MRI中的心肌运动跟踪

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Image registration is an ill-posed inverse problem which often requires regularisation on the solution space. In contrast to most of the current approaches which impose explicit regularisation terms such as smoothness, in this paper we propose a novel method that can implicitly learn biomechanics-informed regularisation. Such an approach can incorporate application-specific prior knowledge into deep learning based registration. Particularly, the proposed biomechanics-informed regularisation leverages a variational autoencoder (VAE) to learn a manifold for biomechanically plausible deformations and to implicitly capture their underlying properties via reconstructing biomechanical simulations. The learnt VAE regulariser then can be coupled with any deep learning based registration network to regularise the solution space to be biomechanically plausible. The proposed method is validated in the context of myocardial motion tracking on 2D stacks of cardiac MRI data from two different datasets. The results show that it can achieve better performance against other competing methods in terms of motion tracking accuracy and has the ability to learn biomechanical properties such as incornpressibility and strains. The method has also been shown to have better generalisability to unseen domains compared with commonly used L2 regularisation schemes.
机译:图像配准是一个病态逆问题,往往需要在解空间正则化。相比于其中大部分实行明确的正规化诸如平滑度,本文中的现有方法的提出,可以学习隐含生物力学知情正规化的新方法。这种方法可以将应用程序特定的先验知识进深学习基于登记。特别地,所提出的生物力学知情正规化杠杆一个变自动编码器(VAE)学习歧管,用于生物力学合理变形和隐式地通过重建的生物力学模拟捕获它们的基本性质。所学习的VAE正则化然后可以与任何深基于学习注册网络正规化解空间是生物力学合理的。所提出的方法在心肌运动跟踪的从两个不同的数据集的心脏MRI数据的2D堆叠上下文中进行验证。结果表明,它可以在运动跟踪精度方面达到与其他竞争方法更好的性能,并具有学习生物力学性能,如incornpressibility和应变的能力。该方法也已经显示出具有更好的可推广到与常用L2正规化方案相比看不见域。

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