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A Physics-Informed Geometric Learning Model for Pathological Tau Spread in Alzheimer's Disease

机译:Alzheimer疾病中病理Tau的物理信息的几何学习模型

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Tau tangles are a pathophysiological hallmark of Alzheimer's disease (AD) and exhibit a stereotypical pattern of spatiotemporal spread which has strong links to disease progression and cognitive decline. Pre-clinical evidence suggests that tau spread depends on neuronal connectivity rather than physical proximity between different brain regions. Here, we present a novel physics-informed geometric learning model for predicting tau buildup and spread that learns patterns directly from longitudinal tau imaging data while receiving guidance from governing physical principles. Implemented as a graph neural network with physics-based regularization in latent space, the model enables effective training with smaller data sizes. For training and validation of the model, we used longitudinal tau measures from positron emission tomography (PET) and structural connectivity graphs from diffusion tensor imaging (DTI) from the Harvard Aging Brain Study. The model led to higher peak signal-to-noise ratio and lower mean squared error levels than both an unreg-ularized graph neural network and a differential equation solver. The method was validated using both two-timepoint and three-timepoint tau PET measures. The effectiveness of the approach was further confirmed by a cross-validation study.
机译:Tau Tangles是Alzheimer疾病的病理学标志(AD),并且表现出陈规定型的时空涂抹方式,具有与疾病进展和认知下降的强烈联系。临床前证据表明,TAU传播取决于神经元连通性,而不是不同脑区之间的物理接近。在这里,我们提出了一种新的物理信息,用于预测TAU积累和传播,这些展位直接从纵向TAU成像数据学习模式,同时接收到管理物理原则的指导。作为一个图形神经网络实现,具有基于物理的正规化在潜在空间中,该模型使得具有较小数据尺寸的有效培训。为了培训和验证模型,我们使用来自正电子发射断层扫描(PET)和来自哈佛大学老龄化脑研究的扩散张量成像(DTI)的结构连接图的纵向TAU措施。该模型导致峰值信噪比和低于未反映极化图形神经网络和微分方程求解器的较低均方方误差水平。使用两次时间点和三次时期的TAU PET措施进行验证该方法。通过交叉验证研究进一步证实了这种方法的有效性。

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