Fu Jianbo, Zanotelli Vito R T, Howald Cedric, Chammartin Nylsa, Kolpakov Ilya, Xenarios Ioannis, Froese D Sean, Wollscheid Bernd, Pedrioli Patrick G A, Goetze Sandra
Department of Health Sciences and Technology, Institute of Translational Medicine, Swiss Federal Institute of Technology, ETH Zurich, Zurich, Switzerland; Swiss Institute of Bioinformatics (SIB), Lausanne, Switzerland; ETH PHRT Swiss Multi-Omics Center (SMOC), Zurich, Switzerland.
Division of Metabolism and Children's Research Center, University Children's Hospital Zurich, University of Zurich, Zurich, Switzerland.
Mol Cell Proteomics. 2025 May 26;24(7):100998. doi: 10.1016/j.mcpro.2025.100998.
The diverse perspectives offered by multi-omics data analysis can aid in identifying the most relevant molecular pathways involved in disease processes, and findings in one layer can substantiate findings in other layers of information. Integrating data from multiple omics sources is becoming increasingly important to improve disease diagnosis and treatment, especially for conditions with complex and poorly understood underlying pathomechanisms. Methylmalonic aciduria (MMA), an inherited metabolic disorder, serves as an illustrative example of such a disease with poorly understood pathogenesis for which published multi-omics data are readily available. Reusing these FAIR data, obtained from the multi-omics digitization of 230 individuals (210 patients with MMA and 20 controls), we pursued advanced data integration and analysis strategies to integrate different levels of biological information, combining genomic, transcriptomic, proteomic, and metabolomic profiling with biochemical and clinical data, with the aim of elucidating molecular perturbations in individuals affected by MMA. The analysis of protein-quantitative trait loci highlighted the importance of glutathione metabolism in the pathogenesis of MMA. This finding was supported by correlation network analyses that integrated proteomics and metabolomics data, alongside gene set enrichment and transcription factor analyses based on disease severity from transcriptomic data. The correlation network analysis also revealed that lysosomal function is compromised in patients with MMA, which is critical for maintaining metabolic balance. Our research introduces a comprehensive data analysis framework that effectively addresses the challenge of prioritizing disruptions in molecular pathways by accumulating evidence from multiple omics levels.
多组学数据分析提供的不同视角有助于识别疾病过程中最相关的分子途径,一层的研究结果可以证实其他信息层的研究结果。整合来自多个组学来源的数据对于改善疾病诊断和治疗变得越来越重要,特别是对于那些潜在病理机制复杂且了解甚少的疾病。甲基丙二酸血症(MMA)是一种遗传性代谢紊乱疾病,是这类发病机制尚不清楚但已公布了多组学数据的疾病的一个典型例子。我们重新利用从230个人(210名MMA患者和20名对照)的多组学数字化中获得的这些可共享、可互操作、可重用且易获取(FAIR)的数据,采用先进的数据整合和分析策略来整合不同层次的生物信息,将基因组、转录组、蛋白质组和代谢组分析与生化和临床数据相结合,旨在阐明受MMA影响个体的分子扰动。蛋白质定量性状位点分析突出了谷胱甘肽代谢在MMA发病机制中的重要性。这一发现得到了相关网络分析的支持,该分析整合了蛋白质组学和代谢组学数据,以及基于转录组数据中疾病严重程度的基因集富集和转录因子分析。相关网络分析还表明,MMA患者的溶酶体功能受损,而溶酶体功能对于维持代谢平衡至关重要。我们的研究引入了一个全面的数据分析框架,该框架通过积累来自多个组学水平的证据,有效地应对了确定分子途径中断优先级的挑战。