Center for Health & Bioresources, AIT Austrian Institute of Technology, Konrad-Lorenz-Straße 24, 3430, Tulln, Austria.
BMC Bioinformatics. 2024 Mar 4;25(1):93. doi: 10.1186/s12859-024-05719-4.
An organism's observable traits, or phenotype, result from intricate interactions among genes, proteins, metabolites and the environment. External factors, such as associated microorganisms, along with biotic and abiotic stressors, can significantly impact this complex biological system, influencing processes like growth, development and productivity. A comprehensive analysis of the entire biological system and its interactions is thus crucial to identify key components that support adaptation to stressors and to discover biomarkers applicable in breeding programs or disease diagnostics. Since the genomics era, several other 'omics' disciplines have emerged, and recent advances in high-throughput technologies have facilitated the generation of additional omics datasets. While traditionally analyzed individually, the last decade has seen an increase in multi-omics data integration and analysis strategies aimed at achieving a holistic understanding of interactions across different biological layers. Despite these advances, the analysis of multi-omics data is still challenging due to their scale, complexity, high dimensionality and multimodality. To address these challenges, a number of analytical tools and strategies have been developed, including clustering and differential equations, which require advanced knowledge in bioinformatics and statistics. Therefore, this study recognizes the need for user-friendly tools by introducing Holomics, an accessible and easy-to-use R shiny application with multi-omics functions tailored for scientists with limited bioinformatics knowledge. Holomics provides a well-defined workflow, starting with the upload and pre-filtering of single-omics data, which are then further refined by single-omics analysis focusing on key features. Subsequently, these reduced datasets are subjected to multi-omics analyses to unveil correlations between 2-n datasets. This paper concludes with a real-world case study where microbiomics, transcriptomics and metabolomics data from previous studies that elucidate factors associated with improved sugar beet storability are integrated using Holomics. The results are discussed in the context of the biological background, underscoring the importance of multi-omics insights. This example not only highlights the versatility of Holomics in handling different types of omics data, but also validates its consistency by reproducing findings from preceding single-omics studies.
生物体的可观察特征或表型是由基因、蛋白质、代谢物和环境之间复杂的相互作用所决定的。外部因素,如相关的微生物,以及生物和非生物胁迫,都可以显著影响这个复杂的生物系统,影响生长、发育和生产力等过程。因此,全面分析整个生物系统及其相互作用对于确定支持适应胁迫的关键组成部分以及发现适用于育种计划或疾病诊断的生物标志物至关重要。自基因组学时代以来,出现了其他几个“组学”学科,最近高通量技术的进步也促进了其他组学数据集的产生。虽然传统上是单独分析的,但过去十年中,多组学数据整合和分析策略的数量有所增加,旨在实现不同生物学层面相互作用的整体理解。尽管取得了这些进展,但由于多组学数据的规模、复杂性、高维度和多模态,其分析仍然具有挑战性。为了应对这些挑战,已经开发了许多分析工具和策略,包括聚类和微分方程,这需要在生物信息学和统计学方面有先进的知识。因此,本研究通过引入 Holomics 认识到了对用户友好型工具的需求,这是一个易于使用的 R shiny 应用程序,具有多组学功能,专为具有有限生物信息学知识的科学家量身定制。Holomics 提供了一个定义明确的工作流程,从单组学数据的上传和预过滤开始,然后通过单组学分析来进一步细化,重点关注关键特征。随后,对这些简化数据集进行多组学分析,以揭示 2-n 数据集之间的相关性。本文以一个实际案例研究结束,该研究整合了先前研究中的微生物组学、转录组学和代谢组学数据,这些数据阐明了与提高糖甜菜耐储性相关的因素,使用 Holomics 进行了分析。结果从生物学背景的角度进行了讨论,强调了多组学见解的重要性。这个例子不仅突出了 Holomics 在处理不同类型的组学数据方面的多功能性,还通过重现先前单组学研究的发现验证了其一致性。