DNEA:一个R软件包,用于代谢组学数据的快速和通用数据驱动的网络分析。

IF 2.9 3区 生物学 Q2 BIOCHEMICAL RESEARCH METHODS BMC Bioinformatics Pub Date : 2024-12-18 DOI:10.1186/s12859-024-05994-1
Christopher Patsalis, Gayatri Iyer, Marci Brandenburg, Alla Karnovsky, George Michailidis
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引用次数: 0

摘要

背景:代谢组学是一种高通量技术,用于测量细胞、组织或生物体液中的小分子代谢物。代谢组学数据的分析是一个多步骤的过程,包括数据处理、质量控制和规范化,然后是统计和生物信息学分析。后一步通常涉及途径分析,以帮助对数据进行生物学解释。这种方法仅限于内源性代谢物,可以很容易地映射到代谢途径。途径分析的一种替代方法,可用于任何类型的代谢物,包括在非靶向代谢组学数据中普遍存在的未知化合物,涉及使用实验数据定义代谢物-代谢物相互作用。我们的小组已经开发了几种基于网络的方法,使用实验确定的代谢物测量的部分相关性。这些都是在CorrelationCalculator和Filigree中实现的,这两个软件工具用于分析我们之前开发的代谢组学数据。后者实现了差分网络富集分析(DNEA)算法。该分析有助于从包含两个实验组的代谢组学数据中构建差异网络,并识别差异富集的代谢模块。虽然Filigree是一个用户友好的工具,但它在用于分析大规模代谢组学数据集时存在一定的局限性。结果:我们开发了DNEA R包,用于代谢组学数据的数据驱动网络分析。我们介绍了DNEA的工作流程和功能,以及相对于软件包的前身Filigree实现的算法增强,并讨论了分析的最佳实践。我们测试了DNEA R包的性能,并使用来自年轻人糖尿病环境决定因素的公开代谢组学数据说明了其特征。据我们所知,该软件包是唯一公开可用的工具,用于构建生物网络和随后对含有外源、次生和未知化合物的数据集进行富集测试。这极大地扩展了传统富集分析工具的范围,传统富集分析工具可用于分析相对较小的一组注释良好的代谢物。结论:DNEA R包是我们之前发布的软件工具Filigree的更灵活和强大的实现。该软件包的模块化结构,以及内置在算法中计算最广泛的步骤中的并行处理框架,使其成为分析大型复杂代谢组学数据集的强大工具。
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DNEA: an R package for fast and versatile data-driven network analysis of metabolomics data.

Background: Metabolomics is a high-throughput technology that measures small molecule metabolites in cells, tissues or biofluids. Analysis of metabolomics data is a multi-step process that involves data processing, quality control and normalization, followed by statistical and bioinformatics analysis. The latter step often involves pathway analysis to aid biological interpretation of the data. This approach is limited to endogenous metabolites that can be readily mapped to metabolic pathways. An alternative to pathway analysis that can be used for any classes of metabolites, including unknown compounds that are ubiquitous in untargeted metabolomics data, involves defining metabolite-metabolite interactions using experimental data. Our group has developed several network-based methods that use partial correlations of experimentally determined metabolite measurements. These were implemented in CorrelationCalculator and Filigree, two software tools for the analysis of metabolomics data we developed previously. The latter tool implements the Differential Network Enrichment Analysis (DNEA) algorithm. This analysis is useful for building differential networks from metabolomics data containing two experimental groups and identifying differentially enriched metabolic modules. While Filigree is a user-friendly tool, it has certain limitations when used for the analysis of large-scale metabolomics datasets.

Results: We developed the DNEA R package for the data-driven network analysis of metabolomics data. We present the DNEA workflow and functionality, algorithm enhancements implemented with respect to the package's predecessor, Filigree, and discuss best practices for analyses. We tested the performance of the DNEA R package and illustrated its features using publicly available metabolomics data from the environmental determinants of diabetes in the young. To our knowledge, this package is the only publicly available tool designed for the construction of biological networks and subsequent enrichment testing for datasets containing exogenous, secondary, and unknown compounds. This greatly expands the scope of traditional enrichment analysis tools that can be used to analyze a relatively small set of well-annotated metabolites.

Conclusions: The DNEA R package is a more flexible and powerful implementation of our previously published software tool, Filigree. The modular structure of the package, along with the parallel processing framework built into the most computationally extensive steps of the algorithm, make it a powerful tool for the analysis of large and complex metabolomics datasets.

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来源期刊
BMC Bioinformatics
BMC Bioinformatics 生物-生化研究方法
CiteScore
5.70
自引率
3.30%
发文量
506
审稿时长
4.3 months
期刊介绍: BMC Bioinformatics is an open access, peer-reviewed journal that considers articles on all aspects of the development, testing and novel application of computational and statistical methods for the modeling and analysis of all kinds of biological data, as well as other areas of computational biology. BMC Bioinformatics is part of the BMC series which publishes subject-specific journals focused on the needs of individual research communities across all areas of biology and medicine. We offer an efficient, fair and friendly peer review service, and are committed to publishing all sound science, provided that there is some advance in knowledge presented by the work.
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