Department of Biomolecular Chemistry, University of Wisconsin, Madison, Wisconsin 53506, United States.
National Center for Quantitative Biology of Complex Systems, Madison, Wisconsin 53706, United States.
Anal Chem. 2023 Jul 25;95(29):10930-10938. doi: 10.1021/acs.analchem.3c00734. Epub 2023 Jul 11.
Mass spectrometry-based large-scale multi-omics research has proven to be powerful in answering biological questions; nonetheless, it faces many challenges from sample preparation to downstream data integration. To efficiently extract biomolecules of different physicochemical properties, preparation of various sample type needs specific tailoring, especially of difficult ones, such as . In this study, we sought to develop a multi-omics sample preparation method starting with a single set of samples to save time, minimize variability, expand biomolecule coverage, and promote multi-omics integration. We investigated tissue disruption methods to effectively release biomolecules and optimized extraction strategies to achieve broader and more reproducible biomolecule coverage in proteomics, lipidomics, and metabolomics workflows. In our assessment, we also considered speediness and usability of the approaches. The developed method was validated through a study of 16 samples designed to shine light on mitochondrial unfolded protein response (UPRmt), induced by three unique stressors─knocking down electron transfer chain element , mitochondrial ribosome protein S5 , and antibiotic treatment Doxycycline. Our findings suggested that the method achieved great coverage of proteome, lipidome, and metabolome with high reproducibility and validated that all stressors triggered UPRmt in , although generating unique molecular signatures. Innate immune response was activated, and triglycerides were decreased under all three stressor conditions. Additionally, Doxycycline treatment elicited more distinct proteomic, lipidomic, and metabolomic response than the other two treatments. This method has been successfully used to process (data not shown) and can likely be applied to other organisms for multi-omics research.
基于质谱的大规模多组学研究已被证明在回答生物学问题方面非常有效;然而,它在从样品制备到下游数据集成等方面面临着许多挑战。为了有效地提取不同理化性质的生物分子,需要对各种类型的样品进行特定的定制,尤其是对于困难的样品,如 。在这项研究中,我们试图开发一种从一组样品开始的多组学样品制备方法,以节省时间、最小化变异性、扩大生物分子覆盖范围并促进多组学整合。我们研究了组织破坏方法,以有效地释放生物分子,并优化了提取策略,以在蛋白质组学、脂质组学和代谢组学工作流程中实现更广泛和更可重复的生物分子覆盖范围。在我们的评估中,我们还考虑了方法的速度和可用性。通过对 16 个样本的研究验证了所开发的方法,该研究旨在阐明由三种独特应激源(敲低电子传递链元件 、线粒体核糖体蛋白 S5 和抗生素处理多西环素)诱导的线粒体未折叠蛋白反应(UPRmt)。我们的研究结果表明,该方法实现了蛋白质组、脂质组和代谢组的高覆盖率,具有高重现性,并验证了所有应激源都在 中引发了 UPRmt,尽管产生了独特的分子特征。先天免疫反应被激活,并且在所有三种应激条件下甘油三酯减少。此外,与其他两种处理相比,多西环素处理引起了更明显的蛋白质组学、脂质组学和代谢组学反应。该方法已成功用于处理 (未显示数据),并且可能适用于其他生物体的多组学研究。