| Literature DB >> 19161675 |
A Magon de la Villehuchet1, M Brack, G Dreyfus, Y Oussar, D Bonnefont-Rousselot, M J Chapman, A Kontush.
Abstract
Oxidative stress is implicated in the development of a wide range of chronic human diseases, ranging from cardiovascular to neurodegenerative and inflammatory disorders. As oxidative stress results from a complex cascade of biochemical reactions, its quantitative prediction remains incomplete. Here, we describe a machine-learning approach to the prediction of levels of oxidative stress in human subjects. From a database of biochemical analyses of oxidative stress biomarkers in blood, plasma and urine, non-linear models have been designed, with a statistical methodology that includes variable selection, model training and model selection. Our data demonstrate that, despite a large inter- and intra-individual variability, levels of biomarkers of oxidative damage in biological fluids can be predicted quantitatively from measured concentrations of a limited number of exogenous and endogenous antioxidants.Entities:
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Year: 2009 PMID: 19161675 DOI: 10.1179/135100009X392449
Source DB: PubMed Journal: Redox Rep ISSN: 1351-0002 Impact factor: 4.412