Bioinformatics analysis of targeted metabolomics - Uncovering old and new tales of diabetic mice under medication

被引:98
作者
Altmaier, Elisabeth
Ramsay, Steven L. [1 ]
Graber, Armin [1 ]
Mewes, Hans-Werner [2 ]
Weinberger, Klaus M. [1 ]
Suhre, Karsten [3 ]
机构
[1] Biocrates Life Sci AG, A-6020 Innsbruck, Austria
[2] Tech Univ Munich, Life & Food Sci Ctr Weihenstephan, Dept Genome Oriented Bioinformat, D-85354 Freising Weihenstephan, Germany
[3] Univ Munich, Fac Biol, D-82152 Planegg Martinsried, Germany
关键词
D O I
10.1210/en.2007-1747
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Metabolomics is a powerful tool for identifying both known and new disease-related perturbations in metabolic pathways. In preclinical drug testing, it has a high potential for early identification of drug off-target effects. Recent advances in high-precision high-throughput mass spectrometry have brought the metabolomic field to a point where quantitative, targeted, metabolomic measurements with ready-to-use kits allow for the automated in-house screening for hundreds of different metabolites in large sets of biological samples. Today, the field of metabolomics is, arguably, at a point where transcriptomics was about 5 yr ago. This being so, the field has a strong need for adapted bioinformatics tools and methods. In this paper we describe a systematic analysis of a targeted quantitative characterization of more than 800 metabolites in blood plasma samples from healthy and diabetic mice under rosiglitazone treatment. We show that known and new metabolic phenotypes of diabetes and medication can be recovered in a statistically objective manner. We find that concentrations of methylglutaryl carnitine are oppositely impacted by rosiglitazone treatment of both healthy and diabetic mice. Analyzing ratios between metabolite concentrations dramatically reduces the noise in the data set, allowing for the discovery of new potential biomarkers of diabetes, such as the N-hydroxyacyloylsphingosyl-phosphocholines SM(OH) 28:0 and SM(OH) 26:0. Using a hierarchical clustering technique on partial eta(2) values, we identify functionally related groups of metabolites, indicating a diabetes-related shift from lysophosphatidylcholine to phosphatidylcholine levels. The bioinformatics data analysis approach introduced here can be readily generalized to other drug testing scenarios and other medical disorders.
引用
收藏
页码:3478 / 3489
页数:12
相关论文
共 35 条
[1]   ENZYMES OF GLYCEROLIPID SYNTHESIS IN EUKARYOTES [J].
BELL, RM ;
COLEMAN, RA .
ANNUAL REVIEW OF BIOCHEMISTRY, 1980, 49 :459-487
[2]  
BERNARDO K, 2006, P 17 INT MASS SPECTR
[3]  
Bevan P, 2001, J CELL SCI, V114, P1429
[4]   PLASMA AND SKELETAL-MUSCLE FREE AMINO-ACIDS IN TYPE-I, INSULIN-TREATED DIABETIC SUBJECTS [J].
BORGHI, L ;
LUGARI, R ;
MONTANARI, A ;
DALLARGINE, P ;
ELIA, GF ;
NICOLOTTI, V ;
SIMONI, I ;
PARMEGGIANI, A ;
NOVARINI, A ;
GNUDI, A .
DIABETES, 1985, 34 (08) :812-815
[5]  
BUTLER A, 2005, P CAMBR HEALTHT I 7
[6]  
Chace DH, 1998, CLIN CHEM, V44, P2405
[7]   Fenofibrate and rosiglitazone lower serum triglycerides with opposing effects on body weight [J].
Chaput, E ;
Saladin, R ;
Silvestre, M ;
Edgar, AD .
BIOCHEMICAL AND BIOPHYSICAL RESEARCH COMMUNICATIONS, 2000, 271 (02) :445-450
[8]   ORNITHINE DECARBOXYLASE ACTIVITY IN INSULIN-DEFICIENT STATES [J].
CONOVER, CA ;
ROZOVSKI, SJ ;
BELUR, ER ;
AOKI, TT ;
RUDERMAN, NB .
BIOCHEMICAL JOURNAL, 1980, 192 (02) :725-732
[9]   Effects of pioglitazone on adipose tissue remodeling within the setting of obesity and insulin resistance [J].
de Souza, CJ ;
Eckhardt, M ;
Gagen, K ;
Dong, M ;
Chen, W ;
Laurent, D ;
Burkey, BF .
DIABETES, 2001, 50 (08) :1863-1871
[10]  
FLINT OP, 2006, P 13 C RETR OPP INF