从tau病理学预测脑萎缩:临床发现及其转化为个性化模型的总结

Q3 Engineering Brain multiphysics Pub Date : 2021-01-01 DOI:10.1016/j.brain.2021.100039
Amelie Schäfer , Pavanjit Chaggar , Travis B. Thompson , Alain Goriely , Ellen Kuhl , the Alzheimer’s Disease Neuroimaging Initiative
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引用次数: 0

摘要

在超过25年的时间里,淀粉样蛋白假说——淀粉样蛋白是阿尔茨海默病的主要病因的范式——一直主导着阿尔茨海默病的研究。现在,越来越多的证据表明,阿尔茨海默病的组织萎缩和认知能力下降与错误折叠的tau蛋白的数量和位置的关系比与淀粉样斑块的关系更密切。然而,tau病理与组织萎缩之间的确切相关性尚不清楚。在这里,我们整合了多物理场建模和贝叶斯推理,利用阿尔茨海默病神经影像学倡议的纵向临床图像创建个性化的tau萎缩模型。对于每个受试者,我们从连续四年的tau正电子发射断层扫描和结构磁共振图像中推断出三个个性化参数,tau错误折叠率,tau输运系数和tau诱导萎缩率。引人注目的是,tau诱导的萎缩系数为0.13/年(95% CI: 0.097-0.189)在所有受试者中相当一致,这表明tau病理与组织萎缩之间存在很强的相关性。与健康受试者相比,我们个性化的全脑萎缩率为0.68-1.68%/年(95% CI: 0.5-2.0),与文献中报道的阿尔茨海默病患者的萎缩率为1-3%/年非常吻合。一旦用更大的纵向图像集进行全面校准,我们的模型就有可能作为一种诊断和预测工具,在个性化的基础上从临床tau图像估计未来的萎缩进展。开发可预测的、患者特异性的阿尔茨海默病病理和进展模型对于有效的患者护理和潜在治疗至关重要。组织萎缩,即脑容量减少,是阿尔茨海默病的重要生物标志物。同样,与tau蛋白相关的病理被认为在阿尔茨海默病的进展、局部萎缩和患者的认知能力下降中起着核心作用。主要的问题是:如何将tau的繁殖和萎缩机制结合在一个单一的模型中,从而最大限度地利用现有的数据?在这里,我们首先回顾了阿尔茨海默病中萎缩的动力学,并描述了一个耦合tau繁殖和萎缩的数学模型。然后,我们研究了如何使用来自ADNI数据库的四名受试者的纵向结构神经成像数据和贝叶斯马尔可夫链蒙特卡罗推理方法来拟合模型参数。我们的方法表明,网络神经变性模型可能有望利用AV-1451 tau PET和T1结构MRI数据预测AD的患者特异性建模。
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Predicting brain atrophy from tau pathology: a summary of clinical findings and their translation into personalized models

For more than 25 years, the amyloid hypothesis–the paradigm that amyloid is the primary cause of Alzheimer’s disease–has dominated the Alzheimer’s community. Now, increasing evidence suggests that tissue atrophy and cognitive decline in Alzheimer’s disease are more closely linked to the amount and location of misfolded tau protein than to amyloid plaques. However, the precise correlation between tau pathology and tissue atrophy remains unknown. Here we integrate multiphysics modeling and Bayesian inference to create personalized tau-atrophy models using longitudinal clinical images from the Alzheimer’s Disease Neuroimaging Initiative. For each subject, we infer three personalized parameters, the tau misfolding rate, the tau transport coefficient, and the tau-induced atrophy rate from four consecutive annual tau positron emission tomography scans and structural magnetic resonance images. Strikingly, the tau-induced atrophy coefficient of 0.13/year (95% CI: 0.097-0.189) was fairly consistent across all subjects suggesting a strong correlation between tau pathology and tissue atrophy. Our personalized whole brain atrophy rates of 0.68-1.68%/year (95% CI: 0.5-2.0) are elevated compared to healthy subjects and agree well with the atrophy rates of  1-3%/year reported for Alzheimer’s patients in the literature. Once comprehensively calibrated with a larger set of longitudinal images, our model has the potential to serve as a diagnostic and predictive tool to estimate future atrophy progression from clinical tau images on a personalized basis.

Statement of Significance

Developing predictive, patient-specific models of Alzheimer’s disease pathology and progression is of paramount importance for effective patient care and potential treatment. Tissue atrophy, the reduction of brain volume, is an important biomarker for Alzheimer’s disease. Similarly, the pathology associated with tau proteins is thought to play a central role in Alzheimer’s disease progression, local atrophy, and a patient’s cognitive decline. The main question is: how do combine the mechanisms of tau propagation and atrophy in a single model that can make the best use of existing data? Here, we first review the dynamics of atrophy in for Alzheimer’s disease and describe a mathematical model that couples tau propagation and atrophy. We then investigate how to fit the model parameters using the longitudinal structural neuroimaging data of four subjects, from the ADNI database, and a Bayesian Markov Chain Monte Carlo inference method. Our approach shows that network neurodegeneration models may hold promise for the predictive, patient-specific modeling of AD using AV-1451 tau PET and T1 structural MRI data.

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来源期刊
Brain multiphysics
Brain multiphysics Physics and Astronomy (General), Modelling and Simulation, Neuroscience (General), Biomedical Engineering
CiteScore
4.80
自引率
0.00%
发文量
0
审稿时长
68 days
期刊最新文献
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