Toscano Juan Diego, Wu Chenxi, Ladrón-de-Guevara Antonio, Du Ting, Nedergaard Maiken, Kelley Douglas H, Karniadakis George Em, Boster Kimberly A S
Division of Applied Mathematics, Brown University, Providence, RI 02912, USA.
School of Engineering, Brown University, Providence, RI 02912, USA.
Interface Focus. 2024 Dec 6;14(6):20240030. doi: 10.1098/rsfs.2024.0030.
Cerebrospinal fluid (CSF) flow is crucial for clearing metabolic waste from the brain, a process whose dysregulation is linked to neurodegenerative diseases like Alzheimer's. Traditional approaches like particle tracking velocimetry (PTV) are limited by their reliance on single-plane two-dimensional measurements, which fail to capture the complex dynamics of CSF flow fully. To overcome these limitations, we employ artificial intelligence velocimetry (AIV) to reconstruct three-dimensional velocities, infer pressure and wall shear stress and quantify flow rates. Given the experimental nature of the data and inherent variability in biological systems, robust uncertainty quantification (UQ) is essential. Towards this end, we have modified the baseline AIV architecture to address aleatoric uncertainty caused by noisy experimental data, enhancing our measurement refinement capabilities. We also implement UQ for the model and epistemic uncertainties arising from the governing equations and network representation. Towards this end, we test multiple governing laws, representation models and initializations. Our approach not only advances the accuracy of CSF flow quantification but also can be adapted to other applications that use physics-informed machine learning to reconstruct fields from experimental data, providing a versatile tool for inverse problems.
脑脊液(CSF)流动对于清除大脑中的代谢废物至关重要,该过程的失调与阿尔茨海默病等神经退行性疾病有关。像粒子跟踪测速法(PTV)这样的传统方法受到其对单平面二维测量的依赖的限制,无法完全捕捉脑脊液流动的复杂动态。为了克服这些限制,我们采用人工智能测速法(AIV)来重建三维速度、推断压力和壁面剪应力并量化流速。鉴于数据的实验性质以及生物系统中固有的变异性,强大的不确定性量化(UQ)至关重要。为此,我们修改了基线AIV架构,以解决由噪声实验数据引起的偶然不确定性,增强我们的测量细化能力。我们还对模型以及由控制方程和网络表示引起的认知不确定性实施UQ。为此,我们测试了多种控制定律、表示模型和初始化。我们的方法不仅提高了脑脊液流动量化的准确性,还可以适用于其他使用物理信息机器学习从实验数据重建场的应用,为反问题提供了一种通用工具。