Integrative top-down system metabolic modeling in experimental disease states via data-driven Bayesian methods

被引:13
作者
Bang, Jung-Wook [1 ]
Crockford, Derek J. [1 ]
Hohmes, Elaine [1 ]
Pazos, Florencio [2 ]
Sternberg, Michael J. E. [2 ]
Muggleton, Stephen H. [3 ]
Nicholson, Jeremy K. [1 ]
机构
[1] Univ London Imperial Coll Sci Technol & Med, Div Surg Oncol Reprod Biol & Anaesthet, Dept Biomol Med, London SW7 2AZ, England
[2] Univ London Imperial Coll Sci Technol & Med, Struct Bioinformat Grp, Div Mol Biosci, London SW7 2AY, England
[3] Univ London Imperial Coll Sci Technol & Med, Computat Bioinformat Grp, Dept Comp, London SW7 2AZ, England
关键词
metabolic and regulatory networks; computational methods; molecular biology of disease;
D O I
10.1021/pr070350l
中图分类号
Q5 [生物化学];
学科分类号
071010 ; 081704 ;
摘要
Multivariate metabolic profiles from biofluids such as urine and plasma are highly indicative of the biological fitness of complex organisms and can be captured analytically in order to derive top-down systems biology models. The application of currently available modeling approaches to human and animal metabolic pathway modeling is problematic because of multicompartmental cellular and tissue exchange of metabolites operating on many time scales. Hence, novel approaches are needed to analyze metabolic data obtained using minimally invasive sampling methods in order to reconstruct the pathophysiological modulations of metabolic interactions that are representative of whole system dynamics. Here, we show that spectroscopically derived metabolic data in experimental liver injury studies (induced by hydrazine and alpha-napthylisothiocyanate treatment) can be used to derive insightful probabilistic graphical models of metabolite dependencies, which we refer to as metabolic interactome maps. Using these, system level mechanistic information on homeostasis can be inferred, and the degree of reversibility of induced lesions can be related to variations in the metabolic network patterns. This approach has wider application in assessment of system level dysfunction in animal or human studies from noninvasive measurements.
引用
收藏
页码:497 / 503
页数:7
相关论文
共 44 条
[1]  
[Anonymous], 1988, PROBABILISTIC REASON, DOI DOI 10.1016/C2009-0-27609-4
[2]   Metabolic trajectory characterisation of xenobiotic-induced hepatotoxic lesions using statistical batch processing of NMR data [J].
Azmi, J ;
Griffin, JL ;
Antti, H ;
Shore, RF ;
Johansson, E ;
Nicholson, JK ;
Holmes, E .
ANALYST, 2002, 127 (02) :271-276
[3]  
BANG JW, 2002, USING BAYESIAN NETWO
[4]   The Bayesian revolution in genetics [J].
Beaumont, MA ;
Rannala, B .
NATURE REVIEWS GENETICS, 2004, 5 (04) :251-261
[5]   Comparative metabonomics of differential hydrazine toxicity in the rat and mouse [J].
Bollard, ME ;
Keun, HC ;
Beckonert, O ;
Ebbels, TMD ;
Antti, H ;
Nicholls, AW ;
Shockcor, JP ;
Cantor, GH ;
Stevens, G ;
Lindon, JC ;
Holmes, E ;
Nicholson, JK .
TOXICOLOGY AND APPLIED PHARMACOLOGY, 2005, 204 (02) :135-151
[6]  
Brindle JT, 2002, NAT MED, V8, P1439, DOI 10.1038/nm802
[7]  
Claridge T. D. W., 2008, HIGH RESOLUTION NMR
[8]   Effects of feeding and body weight loss on the 1H-NMR-based urine metabolic profiles of male Wistar Han rats:: implications for biomarker discovery [J].
Connor, SC ;
Wu, W ;
Sweatman, BC ;
Manini, J ;
Haselden, JN ;
Crowther, DJ ;
Waterfield, CJ .
BIOMARKERS, 2004, 9 (02) :156-179
[9]   Curve-fitting method for direct quantitation of compounds in complex biological mixtures using 1H NMR:: Application in metabonomic toxicology studies [J].
Crockford, DJ ;
Keun, HC ;
Smith, LM ;
Holmes, E ;
Nicholson, JK .
ANALYTICAL CHEMISTRY, 2005, 77 (14) :4556-4562
[10]   Metabolic profiling reveals a contribution of gut microbiota to fatty liver phenotype in insulin-resistant mice [J].
Dumas, Marc-Emmanuel ;
Barton, Richard H. ;
Toye, Ayo ;
Cloarec, Olivier ;
Blancher, Christine ;
Rothwell, Alice ;
Fearnside, Jane ;
Tatoud, Roger ;
Blanc, Veronique ;
Lindon, John C. ;
Mitchell, Steve C. ;
Holmes, Elaine ;
McCarthy, Mark I. ;
Scott, James ;
Gauguier, Dominique ;
Nicholson, Jeremy K. .
PROCEEDINGS OF THE NATIONAL ACADEMY OF SCIENCES OF THE UNITED STATES OF AMERICA, 2006, 103 (33) :12511-12516