Revealing Cortical Spreading Pathway of Neuropathological Events by Neural Optimal Mass Transport

Tingting Dan;Yanquan Huang;Yang Yang;Guorong Wu
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Abstract

Positron Emission Tomography (PET) is essential for understanding the pathophysiological mechanisms underlying neurodegenerative diseases like Alzheimer’s disease (AD). However, existing approaches primarily focus on stereotypical patterns of pathology burden, lacking the ability to elucidate the underlying propagation mechanisms by which pathologies spread throughout the brain over time. Given that many neurodegenerative diseases exhibit prion-like pathology spread, it is essential to uncover the spot-to-spot flow field between consecutive PET snapshots. To address this, we reformulate the problem of identifying latent cortical propagation pathways of neuropathological burden within the well-established framework of optimal mass transport (OMT). In this formulation, the dynamic spreading of pathology across longitudinal PET scans is inherently constrained by the geometry of the brain cortex. To solve this problem, we introduce a variational framework that characterizes the dynamical system of pathology propagation in the brain, ultimately reducing to a Wasserstein geodesic between two density distributions of pathology accumulation. Furthermore, we hypothesize that a well-characterized mechanism of pathology propagation will enable the prediction of future pathology accumulation at the individual level, paving the way for personalized disease progression modeling. Building on the principles of physics-informed deep models, we derive the governing equation of the underlying OMT model and introduce an explainable, generative adversarial network-inspired framework. Our approach (1) parameterizes population-level OMT dynamics through a flow adjuster and (2) predicts the spreading flow in unseen subjects using a trained flow driver. We validate the accuracy of our model on publicly available datasets, demonstrating its effectiveness in forecasting future pathology accumulation. Since our deep model adheres to the second law of thermodynamics, we further explore the propagation dynamics of tau aggregates throughout the progression of AD. In contrast to traditional methods, our physics-informed approach enhances both accuracy and interpretability, demonstrating its potential to reveal novel neurobiological mechanisms driving disease progression.
通过神经最优质量传递揭示神经病理事件的皮层扩散通路
正电子发射断层扫描(PET)对于了解阿尔茨海默病(AD)等神经退行性疾病的病理生理机制至关重要。然而,现有的方法主要集中在病理负担的刻板模式上,缺乏阐明病理随时间在整个大脑中扩散的潜在传播机制的能力。鉴于许多神经退行性疾病表现出朊病毒样病理传播,有必要揭示连续PET快照之间的点对点流场。为了解决这个问题,我们在完善的最佳质量运输(OMT)框架内重新制定识别神经病理负担的潜在皮层传播途径的问题。在这个公式中,病理在纵向PET扫描中的动态传播本质上受到大脑皮层几何形状的限制。为了解决这个问题,我们引入了一个变分框架来表征大脑中病理传播的动力系统,最终简化为病理积累的两个密度分布之间的瓦瑟斯坦测地线。此外,我们假设病理学传播的良好表征机制将能够在个体水平上预测未来的病理积累,为个性化疾病进展建模铺平道路。在基于物理的深度模型原理的基础上,我们推导了底层OMT模型的控制方程,并引入了一个可解释的、生成的对抗网络启发的框架。我们的方法(1)通过流量调节器参数化种群水平的OMT动态,(2)使用训练好的流量驱动程序预测未见对象中的传播流量。我们在公开可用的数据集上验证了我们模型的准确性,证明了它在预测未来病理积累方面的有效性。由于我们的深度模型遵循热力学第二定律,我们进一步探索了tau聚集体在AD过程中的传播动力学。与传统方法相比,我们的物理信息方法提高了准确性和可解释性,展示了其揭示驱动疾病进展的新型神经生物学机制的潜力。
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