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在数据匮乏的情况下重建血流:用于高斯过程回归的脉管网络核。

Reconstructing blood flow in data-poor regimes: a vasculature network kernel for Gaussian process regression.

机构信息

Department of Mechanical Engineering and Material Science, University of Pittsburgh , Pittsburgh, PA, USA.

Department of Biomedical Engineering, University of Arizona , Tucson, AZ, USA.

出版信息

J R Soc Interface. 2024 Aug;21(217):20240194. doi: 10.1098/rsif.2024.0194. Epub 2024 Aug 22.

Abstract

Blood flow reconstruction in the vasculature is important for many clinical applications. However, in clinical settings, the available data are often quite limited. For instance, transcranial Doppler ultrasound is a non-invasive clinical tool that is commonly used in clinical settings to measure blood velocity waveforms at several locations. This amount of data is grossly insufficient for training machine learning surrogate models, such as deep neural networks or Gaussian process regression. In this work, we propose a Gaussian process regression approach based on empirical kernels constructed by data generated from physics-based simulations-enabling near-real-time reconstruction of blood flow in data-poor regimes. We introduce a novel methodology to reconstruct the kernel within the vascular network. The proposed kernel encodes both spatiotemporal and vessel-to-vessel correlations, thus enabling blood flow reconstruction in vessels that lack direct measurements. We demonstrate that any prediction made with the proposed kernel satisfies the conservation of mass principle. The kernel is constructed by running stochastic one-dimensional blood flow simulations, where the stochasticity captures the epistemic uncertainties, such as lack of knowledge about boundary conditions and uncertainties in vasculature geometries. We demonstrate the performance of the model on three test cases, namely, a simple Y-shaped bifurcation, abdominal aorta and the circle of Willis in the brain.

摘要

血流重建在脉管系统中对于许多临床应用都很重要。然而,在临床环境中,可用的数据通常非常有限。例如,经颅多普勒超声是一种常用的临床工具,用于在几个位置测量血流速度波形。这种数量的数据对于训练机器学习替代模型(如深度神经网络或高斯过程回归)来说是远远不够的。在这项工作中,我们提出了一种基于经验核的高斯过程回归方法,这些核是由基于物理的模拟生成的数据构建的,从而能够在数据匮乏的情况下实现血流的近实时重建。我们引入了一种新的方法来在血管网络中重建核。所提出的核编码了时空和血管之间的相关性,从而能够在缺乏直接测量的血管中重建血流。我们证明了用所提出的核进行的任何预测都满足质量守恒原理。核是通过运行随机一维血流模拟来构建的,其中随机性捕捉了认知不确定性,例如对边界条件的了解不足和血管几何形状的不确定性。我们在三个测试案例上展示了模型的性能,即简单的 Y 形分叉、腹部主动脉和大脑中的 Willis 环。

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本文引用的文献

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Accelerated simulation methodologies for computational vascular flow modelling.加速计算血管流动建模的模拟方法。
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4D-DSA: Development and Current Neurovascular Applications.4D-DSA:发展与当前神经血管应用。
AJNR Am J Neuroradiol. 2021 Jan;42(2):214-220. doi: 10.3174/ajnr.A6860. Epub 2020 Nov 26.

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