Integration of metabolomics, lipidomics and clinical data using a machine learning method

被引:41
|
作者
Acharjee, Animesh [1 ,2 ,3 ]
Ament, Zsuzsanna [1 ]
West, James A. [1 ]
Stanley, Elizabeth [1 ]
Griffin, Julian L. [1 ,2 ,3 ]
机构
[1] MRC, Elsie Widdowson Lab, 120 Fulbourn Rd, Cambridge CB1 9NL, England
[2] Univ Cambridge, Dept Biochem, 80 Tennis Court Rd, Cambridge CB2 1GA, England
[3] Univ Cambridge, Cambridge Syst Biol Ctr, 80 Tennis Court Rd, Cambridge CB2 1GA, England
来源
BMC BIOINFORMATICS | 2016年 / 17卷
基金
英国生物技术与生命科学研究理事会;
关键词
RANDOM FOREST; METABOLISM; OBESITY; CELLS; ACID;
D O I
10.1186/s12859-016-1292-2
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Background: The recent pandemic of obesity and the metabolic syndrome (MetS) has led to the realisation that new drug targets are needed to either reduce obesity or the subsequent pathophysiological consequences associated with excess weight gain. Certain nuclear hormone receptors (NRs) play a pivotal role in lipid and carbohydrate metabolism and have been highlighted as potential treatments for obesity. This realisation started a search for NR agonists in order to understand and successfully treat MetS and associated conditions such as insulin resistance, dyslipidaemia, hypertension, hypertriglyceridemia, obesity and cardiovascular disease. The most studied NRs for treating metabolic diseases are the peroxisome proliferator-activated receptors (PPARs), PPAR-alpha, PPAR-gamma, and PPAR-d. However, prolonged PPAR treatment in animal models has led to adverse side effects including increased risk of a number of cancers, but how these receptors change metabolism long term in terms of pathology, despite many beneficial effects shorter term, is not fully understood. In the current study, changes in male Sprague Dawley rat liver caused by dietary treatment with a PPAR-pan (PPAR-alpha, PPAR-gamma, and -delta) agonist were profiled by classical toxicology (clinical chemistry) and high throughput metabolomics and lipidomics approaches using mass spectrometry. Results: In order to integrate an extensive set of nine different multivariate metabolic and lipidomics datasets with classical toxicological parameters we developed a hypotheses free, data driven machine learning approach. From the data analysis, we examined how the nine datasets were able to model dose and clinical chemistry results, with the different datasets having very different information content. Conclusions: We found lipidomics (Direct Infusion-Mass Spectrometry) data the most predictive for different dose responses. In addition, associations with the metabolic and lipidomic data with aspartate amino transaminase (AST), a hepatic leakage enzyme to assess organ damage, and albumin, indicative of altered liver synthetic function, were established. Furthermore, by establishing correlations and network connections between eicosanoids, phospholipids and triacylglycerols, we provide evidence that these lipids function as a key link between inflammatory processes and intermediary metabolism.
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页数:13
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