The Institute for Genome Sciences, University of Maryland School of Medicine, Baltimore, MD 21201, USA.
Department of Medicine, Division of Gastroenterology and Hepatology, University of Maryland School of Medicine, Baltimore, MD 21201, USA.
Int J Mol Sci. 2023 Jan 27;24(3):2458. doi: 10.3390/ijms24032458.
Studying individual data types in isolation provides only limited and incomplete answers to complex biological questions and particularly falls short in revealing sufficient mechanistic and kinetic details. In contrast, multi-omics approaches to studying health and disease permit the generation and integration of multiple data types on a much larger scale, offering a comprehensive picture of biological and disease processes. Gastroenterology and hepatobiliary research are particularly well-suited to such analyses, given the unique position of the luminal gastrointestinal (GI) tract at the nexus between the gut (mucosa and luminal contents), brain, immune and endocrine systems, and GI microbiome. The generation of 'big data' from multi-omic, multi-site studies can enhance investigations into the connections between these organ systems and organisms and more broadly and accurately appraise the effects of dietary, pharmacological, and other therapeutic interventions. In this review, we describe a variety of useful omics approaches and how they can be integrated to provide a holistic depiction of the human and microbial genetic and proteomic changes underlying physiological and pathophysiological phenomena. We highlight the potential pitfalls and alternatives to help avoid the common errors in study design, execution, and analysis. We focus on the application, integration, and analysis of big data in gastroenterology and hepatobiliary research.
单独研究各个数据类型只能为复杂的生物学问题提供有限且不完整的答案,特别是在揭示充分的机制和动力学细节方面存在不足。相比之下,多组学方法可以在更大的规模上生成和整合多种数据类型,为生物和疾病过程提供全面的图景。胃肠病学和肝胆研究特别适合这种分析,因为腔道胃肠道(黏膜和腔内容物)、大脑、免疫和内分泌系统以及胃肠道微生物组的交汇处,使腔道胃肠道处于独特的位置。从多组学、多地点研究中生成的“大数据”可以增强对这些器官系统和生物体之间联系的研究,并更广泛和准确地评估饮食、药理学和其他治疗干预的效果。在这篇综述中,我们描述了多种有用的组学方法,以及如何将它们整合起来,提供生理和病理生理现象下人类和微生物遗传和蛋白质组变化的整体描述。我们强调了潜在的陷阱和替代方案,以帮助避免研究设计、执行和分析中的常见错误。我们专注于大数据在胃肠病学和肝胆研究中的应用、整合和分析。