Literature DB >> 20004213

Predicting the hepatocarcinogenic potential of alkenylbenzene flavoring agents using toxicogenomics and machine learning.

Scott S Auerbach1, Ruchir R Shah, Deepak Mav, Cynthia S Smith, Nigel J Walker, Molly K Vallant, Gary A Boorman, Richard D Irwin.   

Abstract

Identification of carcinogenic activity is the primary goal of the 2-year bioassay. The expense of these studies limits the number of chemicals that can be studied and therefore chemicals need to be prioritized based on a variety of parameters. We have developed an ensemble of support vector machine classification models based on male F344 rat liver gene expression following 2, 14 or 90 days of exposure to a collection of hepatocarcinogens (aflatoxin B1, 1-amino-2,4-dibromoanthraquinone, N-nitrosodimethylamine, methyleugenol) and non-hepatocarcinogens (acetaminophen, ascorbic acid, tryptophan). Seven models were generated based on individual exposure durations (2, 14 or 90 days) or a combination of exposures (2+14, 2+90, 14+90 and 2+14+90 days). All sets of data, with the exception of one yielded models with 0% cross-validation error. Independent validation of the models was performed using expression data from the liver of rats exposed at 2 dose levels to a collection of alkenylbenzene flavoring agents. Depending on the model used and the exposure duration of the test data, independent validation error rates ranged from 47% to 10%. The variable with the most notable effect on independent validation accuracy was exposure duration of the alkenylbenzene test data. All models generally exhibited improved performance as the exposure duration of the alkenylbenzene data increased. The models differentiated between hepatocarcinogenic (estragole and safrole) and non-hepatocarcinogenic (anethole, eugenol and isoeugenol) alkenylbenzenes previously studied in a carcinogenicity bioassay. In the case of safrole the models correctly differentiated between carcinogenic and non-carcinogenic dose levels. The models predict that two alkenylbenzenes not previously assessed in a carcinogenicity bioassay, myristicin and isosafrole, would be weakly hepatocarcinogenic if studied at a dose level of 2 mmol/kg bw/day for 2 years in male F344 rats; therefore suggesting that these chemicals should be a higher priority relative to other untested alkenylbenzenes for evaluation in the carcinogenicity bioassay. The results of the study indicate that gene expression-based predictive models are an effective tool for identifying hepatocarcinogens. Furthermore, we find that exposure duration is a critical variable in the success or failure of such an approach, particularly when evaluating chemicals with unknown carcinogenic potency. Published by Elsevier Inc.

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Year:  2009        PMID: 20004213     DOI: 10.1016/j.taap.2009.11.021

Source DB:  PubMed          Journal:  Toxicol Appl Pharmacol        ISSN: 0041-008X            Impact factor:   4.219


  26 in total

1.  Hepatic transcriptomic alterations for N,N-dimethyl-p-toluidine (DMPT) and p-toluidine after 5-day exposure in rats.

Authors:  June K Dunnick; Keith R Shockley; Daniel L Morgan; Amy Brix; Gregory S Travlos; Kevin Gerrish; J Michael Sanders; T V Ton; Arun R Pandiri
Journal:  Arch Toxicol       Date:  2016-09-16       Impact factor: 5.153

2.  Characterization of polybrominated diphenyl ether toxicity in Wistar Han rats and use of liver microarray data for predicting disease susceptibilities.

Authors:  June K Dunnick; A Brix; H Cunny; M Vallant; K R Shockley
Journal:  Toxicol Pathol       Date:  2012       Impact factor: 1.902

Review 3.  Genetic toxicology in the 21st century: reflections and future directions.

Authors:  Brinda Mahadevan; Ronald D Snyder; Michael D Waters; R Daniel Benz; Raymond A Kemper; Raymond R Tice; Ann M Richard
Journal:  Environ Mol Mutagen       Date:  2011-04-28       Impact factor: 3.216

4.  Testing an aflatoxin B1 gene signature in rat archival tissues.

Authors:  B Alex Merrick; Scott S Auerbach; Patricia S Stockton; Julie F Foley; David E Malarkey; Robert C Sills; Richard D Irwin; Raymond R Tice
Journal:  Chem Res Toxicol       Date:  2012-05-04       Impact factor: 3.739

5.  Editor's Highlight: Application of Gene Set Enrichment Analysis for Identification of Chemically Induced, Biologically Relevant Transcriptomic Networks and Potential Utilization in Human Health Risk Assessment.

Authors:  Jeffry L Dean; Q Jay Zhao; Jason C Lambert; Belinda S Hawkins; Russell S Thomas; Scott C Wesselkamper
Journal:  Toxicol Sci       Date:  2017-05-01       Impact factor: 4.849

Review 6.  Comparison of toxicogenomics and traditional approaches to inform mode of action and points of departure in human health risk assessment of benzo[a]pyrene in drinking water.

Authors:  Ivy Moffat; Nikolai Chepelev; Sarah Labib; Julie Bourdon-Lacombe; Byron Kuo; Julie K Buick; France Lemieux; Andrew Williams; Sabina Halappanavar; Amal Malik; Mirjam Luijten; Jiri Aubrecht; Daniel R Hyduke; Albert J Fornace; Carol D Swartz; Leslie Recio; Carole L Yauk
Journal:  Crit Rev Toxicol       Date:  2015-01       Impact factor: 5.635

7.  Complete protection against aflatoxin B(1)-induced liver cancer with a triterpenoid: DNA adduct dosimetry, molecular signature, and genotoxicity threshold.

Authors:  Natalie M Johnson; Patricia A Egner; Victoria K Baxter; Michael B Sporn; Ryan S Wible; Thomas R Sutter; John D Groopman; Thomas W Kensler; Bill D Roebuck
Journal:  Cancer Prev Res (Phila)       Date:  2014-03-24

8.  Large-Scale Modeling of Multispecies Acute Toxicity End Points Using Consensus of Multitask Deep Learning Methods.

Authors:  Sankalp Jain; Vishal B Siramshetty; Vinicius M Alves; Eugene N Muratov; Nicole Kleinstreuer; Alexander Tropsha; Marc C Nicklaus; Anton Simeonov; Alexey V Zakharov
Journal:  J Chem Inf Model       Date:  2021-02-03       Impact factor: 4.956

Review 9.  Analytical Separation of Carcinogenic and Genotoxic Alkenylbenzenes in Foods and Related Products (2010-2020).

Authors:  Huynh N P Dang; Joselito P Quirino
Journal:  Toxins (Basel)       Date:  2021-05-28       Impact factor: 4.546

10.  Biological networks for predicting chemical hepatocarcinogenicity using gene expression data from treated mice and relevance across human and rat species.

Authors:  Reuben Thomas; Russell S Thomas; Scott S Auerbach; Christopher J Portier
Journal:  PLoS One       Date:  2013-05-30       Impact factor: 3.240

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