Toxicologic Pathology 2005-01-01

Prediction of nephrotoxicant action and identification of candidate toxicity-related biomarkers.

Sushil K Thukral, Paul J Nordone, Rong Hu, Leah Sullivan, Eric Galambos, Vincent D Fitzpatrick, Laura Healy, Michael B Bass, Mary E Cosenza, Cynthia A Afshari

Index: Toxicol. Pathol. 33(3) , 343-55, (2005)

Full Text: HTML

Abstract

A vast majority of pharmacological compounds and their metabolites are excreted via the urine, and within the complex structure of the kidney,the proximal tubules are a main target site of nephrotoxic compounds. We used the model nephrotoxicants mercuric chloride, 2-bromoethylamine hydrobromide, hexachlorobutadiene, mitomycin, amphotericin, and puromycin to elucidate time- and dose-dependent global gene expression changes associated with proximal tubular toxicity. Male Sprague-Dawley rats were dosed via intraperitoneal injection once daily for mercuric chloride and amphotericin (up to 7 doses), while a single dose was given for all other compounds. Animals were exposed to 2 different doses of these compounds and kidney tissues were collected on day 1, 3, and 7 postdosing. Gene expression profiles were generated from kidney RNA using 17K rat cDNA dual dye microarray and analyzed in conjunction with histopathology. Analysis of gene expression profiles showed that the profiles clustered based on similarities in the severity and type of pathology of individual animals. Further, the expression changes were indicative of tubular toxicity showing hallmarks of tubular degeneration/regeneration and necrosis. Use of gene expression data in predicting the type of nephrotoxicity was then tested with a support vector machine (SVM)-based approach. A SVM prediction module was trained using 120 profiles of total profiles divided into four classes based on the severity of pathology and clustering. Although mitomycin C and amphotericin B treatments did not cause toxicity, their expression profiles were included in the SVM prediction module to increase the sample size. Using this classifier, the SVM predicted the type of pathology of 28 test profiles with 100% selectivity and 82% sensitivity. These data indicate that valid predictions could be made based on gene expression changes from a small set of expression profiles. A set of potential biomarkers showing a time- and dose-response with respect to the progression of proximal tubular toxicity were identified. These include several transporters (Slc21a2, Slc15, Slc34a2), Kim 1, IGFbp-1, osteopontin, alpha-fibrinogen, and Gstalpha.


Related Compounds

Related Articles:

Developing structure-activity relationships for the prediction of hepatotoxicity.

2010-07-19

[Chem. Res. Toxicol. 23 , 1215-22, (2010)]

Optimizations of packed sorbent and inlet temperature for large volume-direct aqueous injection-gas chromatography to determine high boiling volatile organic compounds in water.

2014-08-22

[J. Chromatogr. A. 1356 , 221-9, (2014)]

An integrated treatability protocol for biotreatment/bioremediation of toxic pollutants generated by chemical industries.

2003-04-01

[J. Environ. Sci. Health. A. Tox. Hazard. Subst. Environ. Eng. 38(4) , 597-607, (2003)]

Reducing ingress of organic vapours into homes situated on contaminated land.

2004-04-01

[Environ. Technol. 25(4) , 443-50, (2004)]

Nephrotoxicity of hexachloro-1:3-butadiene in the male Hanover Wistar rat; correlation of minimal histopathological changes with biomarkers of renal injury.

2012-06-01

[J. Appl. Toxicol. 32(6) , 417-28, (2012)]

More Articles...