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A simple transcriptomic signature able to predict drug-induced hepatic steatosis

It is estimated that only a few marketed drugs are able to directly induce liver steatosis. However, many other drugs may exacerbate or precipitate fatty liver in the presence of other risk factors or in patients prone to non-alcoholic fatty liver disease. On the other hand, current in vitro tests f...

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Published in:Archives of toxicology 2014-04, Vol.88 (4), p.967-982
Main Authors: Benet, Marta, Moya, Marta, Donato, M. Teresa, Lahoz, Agustín, Hervás, David, Guzmán, Carla, Gómez-Lechón, M. José, Castell, José Vicente, Jover, Ramiro
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creator Benet, Marta
Moya, Marta
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Gómez-Lechón, M. José
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Jover, Ramiro
description It is estimated that only a few marketed drugs are able to directly induce liver steatosis. However, many other drugs may exacerbate or precipitate fatty liver in the presence of other risk factors or in patients prone to non-alcoholic fatty liver disease. On the other hand, current in vitro tests for drug-induced steatosis in preclinical research are scarce and not very sensitive or reproducible. In the present study, we have investigated the effect of well-characterized steatotic drugs on the expression profile of 47 transcription factors (TFs) in human hepatoma HepG2 cells and found that these drugs are able to up- and down-regulate a substantial number of these factors. Multivariate data analysis revealed a common TF signature for steatotic drugs, which consistently and significantly repressed FOXA1, HEX and SREBP1C in cultured cells. This signature was also observed in the livers of rats and in cultured human hepatocytes. Therefore, we selected these three TFs as predictive biomarkers for iatrogenic steatosis. With these biomarkers, a logistic regression analysis yielded a predictive model, which was able to correctly classify 92 % of drugs. The developed algorithm also predicted that ibuprofen, nifedipine and irinotecan are potential steatotic drugs, whereas troglitazone is not. In summary, this is a sensitive, specific and simple RT-PCR test that can be easily implemented in preclinical drug development to predict drug-induced steatosis. Our results also indicate that steatotic drugs affect expression of both common and specific subsets of TF and lipid metabolism genes, thus generating complex transcriptomic responses that cause or contribute to steatosis in hepatocytes.
doi_str_mv 10.1007/s00204-014-1197-7
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In the present study, we have investigated the effect of well-characterized steatotic drugs on the expression profile of 47 transcription factors (TFs) in human hepatoma HepG2 cells and found that these drugs are able to up- and down-regulate a substantial number of these factors. Multivariate data analysis revealed a common TF signature for steatotic drugs, which consistently and significantly repressed FOXA1, HEX and SREBP1C in cultured cells. This signature was also observed in the livers of rats and in cultured human hepatocytes. Therefore, we selected these three TFs as predictive biomarkers for iatrogenic steatosis. With these biomarkers, a logistic regression analysis yielded a predictive model, which was able to correctly classify 92 % of drugs. The developed algorithm also predicted that ibuprofen, nifedipine and irinotecan are potential steatotic drugs, whereas troglitazone is not. 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The developed algorithm also predicted that ibuprofen, nifedipine and irinotecan are potential steatotic drugs, whereas troglitazone is not. In summary, this is a sensitive, specific and simple RT-PCR test that can be easily implemented in preclinical drug development to predict drug-induced steatosis. Our results also indicate that steatotic drugs affect expression of both common and specific subsets of TF and lipid metabolism genes, thus generating complex transcriptomic responses that cause or contribute to steatosis in hepatocytes.</abstract><cop>Berlin/Heidelberg</cop><pub>Springer Berlin Heidelberg</pub><pmid>24469900</pmid><doi>10.1007/s00204-014-1197-7</doi><tpages>16</tpages></addata></record>
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subjects Aged
Algorithms
Animals
Biomarkers
Biomedical and Life Sciences
Biomedicine
Chemical and Drug Induced Liver Injury - etiology
Chemical and Drug Induced Liver Injury - genetics
Disease Models, Animal
Environmental Health
Gene Expression Profiling
Gene Expression Regulation - drug effects
Genetic Markers
Hep G2 Cells
Humans
Lipid Metabolism - drug effects
Lipid Metabolism - genetics
Liver - drug effects
Liver - metabolism
Liver diseases
Logistic Models
Male
Middle Aged
Multivariate Analysis
Non-alcoholic Fatty Liver Disease - chemically induced
Non-alcoholic Fatty Liver Disease - genetics
Occupational Medicine/Industrial Medicine
Organ Toxicity and Mechanisms
Pharmacology
Pharmacology/Toxicology
Rats
Rats, Sprague-Dawley
Real-Time Polymerase Chain Reaction
Reverse Transcriptase Polymerase Chain Reaction
Risk Assessment
Toxicity
Toxicogenetics - methods
Transcription Factors - genetics
Transcription Factors - metabolism
title A simple transcriptomic signature able to predict drug-induced hepatic steatosis
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