Urinary chemical fingerprint left behind by repeated NSAID administration: Discovery of putative biomarkers using artificial intelligence
Autor: | Pablo Piñeyro, Jennifer E. Slovak, Martin A. Suarez, Nicolas F. Villarino, Liam E. Broughton-Neiswanger, Sol M. Rivera-Velez, Julianne K. Hwang |
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Rok vydání: | 2020 |
Předmět: |
0301 basic medicine
Taurine Physiology Urine Biochemistry Mass Spectrometry Sugar Alcohols 0302 clinical medicine Drug Metabolism Metabolites Medicine and Health Sciences Cluster Analysis Medicine 030212 general & internal medicine Xylitol Mammals chemistry.chemical_classification Chromatography Kidney Multidisciplinary CATS Organic Compounds Anti-Inflammatory Agents Non-Steroidal Monosaccharides Eukaryota Body Fluids Butyrates Chemistry Meloxicam medicine.anatomical_structure Physical Sciences Vertebrates Female Anatomy Research Article medicine.drug Science Urinary system Carbohydrates Sugar acids 03 medical and health sciences Metabolomics Artificial Intelligence Metabolome Animals Humans Pharmacokinetics Pharmacology business.industry Organic Chemistry Chemical Compounds Organisms Biology and Life Sciences Sugar Acids Kidneys Renal System Metabolism 030104 developmental biology ROC Curve chemistry Amniotes Cats Tyrosine Artificial intelligence business Acids Biomarkers Pseudouridine |
Zdroj: | PLoS ONE PLoS ONE, Vol 15, Iss 2, p e0228989 (2020) |
ISSN: | 1932-6203 |
DOI: | 10.1371/journal.pone.0228989 |
Popis: | Prediction and early detection of kidney damage induced by nonsteroidal anti-inflammatories (NSAIDs) would provide the best chances of maximizing the anti-inflammatory effects while minimizing the risk of kidney damage. Unfortunately, biomarkers for detecting NSAID-induced kidney damage in cats remain to be discovered. To identify potential urinary biomarkers for monitoring NSAID-based treatments, we applied an untargeted metabolomics approach to urine collected from cats treated repeatedly with meloxicam or saline for up to 17 days. Applying multivariate analysis, this study identified a panel of seven metabolites that discriminate meloxicam treated from saline treated cats. Combining artificial intelligence machine learning algorithms and an independent testing urinary metabolome data set from cats with meloxicam-induced kidney damage, a panel of metabolites was identified and validated. The panel of metabolites including tryptophan, tyrosine, taurine, threonic acid, pseudouridine, xylitol and lyxitol, successfully distinguish meloxicam-treated and saline-treated cats with up to 75-100% sensitivity and specificity. This panel of urinary metabolites may prove a useful and non-invasive diagnostic tool for monitoring potential NSAID induced kidney injury in feline patients and may act as the framework for identifying urine biomarkers of NSAID induced injury in other species. |
Databáze: | OpenAIRE |
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