Computer Vision Data Science Group, Sano centre for computational medicine, Czarnowiejska 36, Krakow 30-054, Poland.
Padua Neuroscience Center, University of Padua, Via 8 Febbraio, 2, Padua 35122, Italy.
Cereb Cortex. 2023 Dec 9;33(24):11471-11485. doi: 10.1093/cercor/bhad380.
The pervasive impact of Alzheimer's disease on aging society represents one of the main challenges at this time. Current investigations highlight 2 specific misfolded proteins in its development: Amyloid-$\beta$ and tau. Previous studies focused on spreading for misfolded proteins exploited simulations, which required several parameters to be empirically estimated. Here, we provide an alternative view based on 2 machine learning approaches which we compare with known simulation models. The first approach applies an autoregressive model constrained by structural connectivity, while the second is based on graph convolutional networks. The aim is to predict concentrations of Amyloid-$\beta$ 2 yr after a provided baseline. We also evaluate its real-world effectiveness and suitability by providing a web service for physicians and researchers. In experiments, the autoregressive model generally outperformed state-of-the-art models resulting in lower prediction errors. While it is important to note that a comprehensive prognostic plan cannot solely rely on amyloid beta concentrations, their prediction, achieved by the discussed approaches, can be valuable for planning therapies and other cures, especially when dealing with asymptomatic patients for whom novel therapies could prove effective.
阿尔茨海默病对老龄化社会的普遍影响是当前面临的主要挑战之一。目前的研究强调了其发展过程中的两种特定的错误折叠蛋白:淀粉样蛋白-β和 tau。之前的研究主要集中在错误折叠蛋白的传播上,利用了模拟方法,这需要经验估计几个参数。在这里,我们提供了一种基于两种机器学习方法的替代观点,并将其与已知的模拟模型进行了比较。第一种方法应用了一种受结构连接性约束的自回归模型,而第二种方法则基于图卷积网络。目的是预测在给定基线后 2 年内淀粉样蛋白-β的浓度。我们还通过为医生和研究人员提供一个网络服务来评估其在现实世界中的有效性和适用性。在实验中,自回归模型通常优于最先进的模型,从而降低了预测误差。虽然需要注意的是,全面的预后计划不能仅仅依赖于淀粉样蛋白-β的浓度,但通过所讨论的方法进行预测对于治疗计划和其他治疗方法可能是有价值的,特别是在处理无症状患者时,新的治疗方法可能对其有效。