代谢组学
协议(科学)
数据处理
计算机科学
表(数据库)
数据挖掘
工作流程
生物信息学
数据库
生物
医学
病理
替代医学
作者
Jianbo Fu,Ying Zhang,Yunxia Wang,Hongning Zhang,Jin Liu,Jing Tang,Qingxia Yang,Huaicheng Sun,Wenqi Qiu,Yinghui Ma,Zhaorong Li,Mingyue Zheng,Feng Zhu
出处
期刊:Nature Protocols
[Springer Nature]
日期:2021-12-24
卷期号:17 (1): 129-151
被引量:145
标识
DOI:10.1038/s41596-021-00636-9
摘要
A typical output of a metabolomic experiment is a peak table corresponding to the intensity of measured signals. Peak table processing, an essential procedure in metabolomics, is characterized by its study dependency and combinatorial diversity. While various methods and tools have been developed to facilitate metabolomic data processing, it is challenging to determine which processing workflow will give good performance for a specific metabolomic study. NOREVA, an out-of-the-box protocol, was therefore developed to meet this challenge. First, the peak table is subjected to many processing workflows that consist of three to five defined calculations in combinatorially determined sequences. Second, the results of each workflow are judged against objective performance criteria. Third, various benchmarks are analyzed to highlight the uniqueness of this newly developed protocol in (1) evaluating the processing performance based on multiple criteria, (2) optimizing data processing by scanning thousands of workflows, and (3) allowing data processing for time-course and multiclass metabolomics. This protocol is implemented in an R package for convenient accessibility and to protect users' data privacy. Preliminary experience in R language would facilitate the usage of this protocol, and the execution time may vary from several minutes to a couple of hours depending on the size of the analyzed data.
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