脂类学
脂质体
组学
计算机科学
计算生物学
小桶
生物信息学
数据科学
数据挖掘
生物
基因本体论
遗传学
基因
基因表达
作者
Fengsheng Li,Jia Song,Yingkun Zhang,Shuai-Kang Wang,Jinhui Wang,Li Lin,Chaoyong Yang,Peng Li,He Huang
标识
DOI:10.1002/smtd.202100206
摘要
Abstract Lipidomics is a younger member of the “omics” family. It aims to profile lipidome alterations occurring in biological systems. Similar to the other “omics”, lipidomic data is highly dimensional and contains a massive amount of information awaiting deciphering and data mining. Currently, the available bioinformatic tools targeting lipidomic data processing and lipid pathway analysis are limited. A few tools designed for lipidomic analysis perform only basic statistical analyses, and lipid pathway analyses rely heavily on public databases (KEGG, Reactome, and HMDB). Due to the inadequate understanding of lipid signaling and metabolism, the use of public databases for lipid pathway analysis can be biased and misleading. Instead of using public databases to interpret lipidomic ontology, the authors introduce an intra‐omic integrative correlation strategy for lipidomic data mining. Such an intra‐omic strategy allows researchers to unscramble and predict lipid biological functions from correlated genomic ontological results using statistical approaches. To simplify and improve the lipidomic data processing experience, they designed an interactive web‐based tool: LINT‐web ( http://www.lintwebomics.info/ ) to perform the intra‐omic analysis strategy, and validated the functions of LINT‐web using two biological systems. Users without sophisticated statistical experience can easily process lipidomic datasets and predict the potential lipid biological functions using LINT‐web.
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