Alzheimer's Disease Protein Relevance Analysis Using Human and Mouse Model Proteomics Data.

Frontiers in systems biology Pub Date : 2023-01-01 Epub Date: 2023-07-13 DOI:10.3389/fsysb.2023.1085577
Cathy Shi, W Kirby Gottschalk, Carol A Colton, Sayan Mukherjee, Michael W Lutz
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Abstract

The principles governing genotype-phenotype relationships are still emerging(1-3), and detailed translational as well as transcriptomic information is required to understand complex phenotypes, such as the pathogenesis of Alzheimer's disease. For this reason, the proteomics of Alzheimer disease (AD) continues to be studied extensively. Although comparisons between data obtained from humans and mouse models have been reported, approaches that specifically address the between-species statistical comparisons are understudied. Our study investigated the performance of two statistical methods for identification of proteins and biological pathways associated with Alzheimer's disease for cross-species comparisons, taking specific data analysis challenges into account, including collinearity, dimensionality reduction and cross-species protein matching. We used a human dataset from a well-characterized cohort followed for over 22 years with proteomic data available. For the mouse model, we generated proteomic data from whole brains of CVN-AD and matching control mouse models. We used these analyses to determine the reliability of a mouse model to forecast significant proteomic-based pathological changes in the brain that may mimic pathology in human Alzheimer's disease. Compared with LASSO regression, partial least squares discriminant analysis provided better statistical performance for the proteomics analysis. The major biological finding of the study was that extracellular matrix proteins and integrin-related pathways were dysregulated in both the human and mouse data. This approach may help inform the development of mouse models that are more relevant to the study of human late-onset Alzheimer's disease.

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利用人类和小鼠模型蛋白质组学数据分析阿尔茨海默病蛋白质相关性
基因型与表型之间的关系原理仍在探索之中(1-3),要了解复杂的表型,如阿尔茨海默病的发病机制,需要详细的转译和转录组信息。因此,人们继续对阿尔茨海默病(AD)的蛋白质组学进行广泛研究。虽然已经有报告称对从人类和小鼠模型中获得的数据进行了比较,但专门针对物种间统计比较的方法还未得到充分研究。我们的研究考察了两种统计方法在跨物种比较中识别与阿尔茨海默病相关的蛋白质和生物通路的性能,同时考虑到了具体的数据分析挑战,包括共线性、降维和跨物种蛋白质匹配。我们使用了一个人类数据集,该数据集来自 22 年来有蛋白质组数据的特征良好的队列。对于小鼠模型,我们从 CVN-AD 和匹配对照小鼠模型的整个大脑中生成了蛋白质组数据。我们利用这些分析来确定小鼠模型的可靠性,以预测大脑中可能模拟人类阿尔茨海默病病理变化的基于蛋白质组的重大病理变化。与 LASSO 回归相比,偏最小二乘判别分析为蛋白质组学分析提供了更好的统计性能。该研究的主要生物学发现是,在人类和小鼠的数据中,细胞外基质蛋白和整合素相关通路都出现了失调。这种方法有助于开发与人类晚期阿尔茨海默病研究更相关的小鼠模型。
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