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通过相似性网络融合进行多组学整合以检测衰老的分子亚型。

Multi-omic integration via similarity network fusion to detect molecular subtypes of ageing.

作者信息

Yang Mu, Matan-Lithwick Stuart, Wang Yanling, De Jager Philip L, Bennett David A, Felsky Daniel

机构信息

Division of Biostatistics, Dalla Lana School of Public Health, University of Toronto, Toronto, ON M5T 3M7, Canada.

The Krembil Centre for Neuroinformatics, Centre for Addiction and Mental Health, Toronto, ON M5T 1R8, Canada.

出版信息

Brain Commun. 2023 Apr 4;5(2):fcad110. doi: 10.1093/braincomms/fcad110. eCollection 2023.

Abstract

Molecular subtyping of brain tissue provides insights into the heterogeneity of common neurodegenerative conditions, such as Alzheimer's disease. However, existing subtyping studies have mostly focused on single data modalities and only those individuals with severe cognitive impairment. To address these gaps, we applied similarity network fusion, a method capable of integrating multiple high-dimensional multi-omic data modalities simultaneously, to an elderly sample spanning the full spectrum of cognitive ageing trajectories. We analyzed human frontal cortex brain samples characterized by five omic modalities: bulk RNA sequencing (18 629 genes), DNA methylation (53 932 CpG sites), histone acetylation (26 384 peaks), proteomics (7737 proteins) and metabolomics (654 metabolites). Similarity network fusion followed by spectral clustering was used for subtype detection, and subtype numbers were determined by Eigen-gap and rotation cost statistics. Normalized mutual information determined the relative contribution of each modality to the fused network. Subtypes were characterized by associations with 13 age-related neuropathologies and cognitive decline. Fusion of all five data modalities ( = 111) yielded two subtypes ( = 53, = 58), which were nominally associated with diffuse amyloid plaques; however, this effect was not significant after correction for multiple testing. Histone acetylation (normalized mutual information = 0.38), DNA methylation (normalized mutual information = 0.18) and RNA abundance (normalized mutual information = 0.15) contributed most strongly to this network. Secondary analysis integrating only these three modalities in a larger subsample ( = 513) indicated support for both three- and five-subtype solutions, which had significant overlap, but showed varying degrees of internal stability and external validity. One subtype showed marked cognitive decline, which remained significant even after correcting for tests across both three- and five-subtype solutions ( = 5.9 × 10). Comparison to single-modality subtypes demonstrated that the three-modal subtypes were able to uniquely capture cognitive variability. Comprehensive sensitivity analyses explored influences of sample size and cluster number parameters. We identified highly integrative molecular subtypes of ageing derived from multiple high dimensional, multi-omic data modalities simultaneously. Fusing RNA abundance, DNA methylation, and histone acetylation measures generated subtypes that were associated with cognitive decline. This work highlights the potential value and challenges of multi-omic integration in unsupervised subtyping of post-mortem brain.

摘要

脑组织的分子亚型分析有助于深入了解常见神经退行性疾病(如阿尔茨海默病)的异质性。然而,现有的亚型分析研究大多集中在单一数据模式上,且仅针对那些有严重认知障碍的个体。为了填补这些空白,我们将相似性网络融合(一种能够同时整合多种高维多组学数据模式的方法)应用于一个涵盖认知老化轨迹全谱的老年样本。我们分析了以五种组学模式为特征的人类额叶皮质脑样本:大量RNA测序(18629个基因)、DNA甲基化(53932个CpG位点)、组蛋白乙酰化(26384个峰)、蛋白质组学(7737种蛋白质)和代谢组学(654种代谢物)。使用相似性网络融合并结合光谱聚类进行亚型检测,并通过特征间隙和旋转成本统计确定亚型数量。标准化互信息确定了每种模式对融合网络的相对贡献。通过与13种与年龄相关的神经病理学和认知衰退的关联来表征亚型。融合所有五种数据模式(n = 111)产生了两个亚型(n1 = 53,n2 = 58),它们名义上与弥漫性淀粉样斑块相关;然而,在进行多重检验校正后,这种效应并不显著。组蛋白乙酰化(标准化互信息 = 0.38)、DNA甲基化(标准化互信息 = 0.18)和RNA丰度(标准化互信息 = 0.15)对该网络的贡献最为显著。在一个更大的子样本(n = 513)中仅整合这三种模式的二次分析表明,支持三亚型和五亚型解决方案,它们有显著重叠,但显示出不同程度的内部稳定性和外部有效性。一种亚型显示出明显的认知衰退,即使在对三亚型和五亚型解决方案的测试进行校正后,这种衰退仍然显著(p = 5.9 × 10)。与单模式亚型的比较表明,三模式亚型能够独特地捕捉认知变异性。全面的敏感性分析探讨了样本量和聚类数参数的影响。我们同时从多个高维、多组学数据模式中识别出了高度整合的衰老分子亚型。融合RNA丰度、DNA甲基化和组蛋白乙酰化测量产生了与认知衰退相关的亚型。这项工作突出了多组学整合在死后大脑无监督亚型分析中的潜在价值和挑战。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3c49/10110975/182aa6b985fa/fcad110_ga1.jpg

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