Literature DB >> 25285964

Systematic proteomic approach to characterize the impacts of chemical interactions on protein and cytotoxicity responses to metal mixture exposures.

Yue Ge1, Maribel Bruno, Kathleen Wallace, Sharon Leavitt, Debora Andrews, Maria A Spassova, Mingyu Xi, Anindya Roy, Najwa Haykal-Coates, William Lefew, Adam Swank, Witold M Winnik, Chao Chen, Jonne Woodard, Aimen Farraj, Kevin Y Teichman, Jeffrey A Ross.   

Abstract

Chemical interactions have posed a big challenge in toxicity characterization and human health risk assessment of environmental mixtures. To characterize the impacts of chemical interactions on protein and cytotoxicity responses to environmental mixtures, we established a systems biology approach integrating proteomics, bioinformatics, statistics, and computational toxicology to measure expression or phosphorylation levels of 21 critical toxicity pathway regulators and 445 downstream proteins in human BEAS-2B cells treated with 4 concentrations of nickel, 2 concentrations each of cadmium and chromium, as well as 12 defined binary and 8 defined ternary mixtures of these metals in vitro. Multivariate statistical analysis and mathematical modeling of the metal-mediated proteomic response patterns showed a high correlation between changes in protein expression or phosphorylation and cellular toxic responses to both individual metals and metal mixtures. Of the identified correlated proteins, only a small set of proteins including HIF-1α is likely to be responsible for selective cytotoxic responses to different metals and metals mixtures. Furthermore, support vector machine learning was utilized to computationally predict protein responses to uncharacterized metal mixtures using experimentally generated protein response profiles corresponding to known metal mixtures. This study provides a novel proteomic approach for characterization and prediction of toxicities of metal and other chemical mixtures.

Entities:  

Keywords:  chemical interactions; chemical mixtures; cytotoxicity; dose response; metals; mixture toxicity; proteomics; risk assessment; systems biology

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Year:  2014        PMID: 25285964     DOI: 10.1021/pr500795d

Source DB:  PubMed          Journal:  J Proteome Res        ISSN: 1535-3893            Impact factor:   4.466


  2 in total

1.  Chemical-agnostic hazard prediction: statistical inference of in vitro toxicity pathways from proteomics responses to chemical mixtures.

Authors:  Jeffrey A Ross; Barbara Jane George; Maribel Bruno; Yue Ge
Journal:  Comput Toxicol       Date:  2017-05

Review 2.  An Overview of Literature Topics Related to Current Concepts, Methods, Tools, and Applications for Cumulative Risk Assessment (2007-2016).

Authors:  Mary A Fox; L Elizabeth Brewer; Lawrence Martin
Journal:  Int J Environ Res Public Health       Date:  2017-04-07       Impact factor: 3.390

  2 in total

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