Thomas Russell S, Pluta Linda, Yang Longlong, Halsey Thomas A
The Hamner Institutes for Health Sciences, Research Triangle Park, NC 27709-2137, USA.
Toxicol Sci. 2007 May;97(1):55-64. doi: 10.1093/toxsci/kfm023. Epub 2007 Feb 20.
Rodent cancer bioassays are part of a legacy of safety testing that has not changed significantly over the past 30 years. The bioassays are expensive, time consuming, and use hundreds of animals. Fewer than 1500 chemicals have been tested in a rodent cancer bioassay compared to the thousands of environmental and industrial chemicals that remain untested for carcinogenic activity. In this study, we used existing data generated by the National Toxicology Program (NTP) to identify gene expression biomarkers that can predict results from a rodent cancer bioassay. A set of 13 diverse chemicals was selected from those tested by the NTP. Seven chemicals were positive for increased lung tumor incidence in female B6C3F1 mice and six were negative. Female mice were exposed subchronically to each of the 13 chemicals, and microarray analysis was performed on the lung. Statistical classification analysis using the gene expression profiles identified a set of eight probe sets corresponding to six genes whose expression correctly predicted the increase in lung tumor incidence with 93.9% accuracy. The sensitivity and specificity were 95.2 and 91.8%, respectively. Among the six genes in the predictive signature, most were enzymes involved in endogenous and xenobiotic metabolism, and one gene was a growth factor receptor involved in lung development. The results demonstrate that increases in chemically induced lung tumor incidence in female mice can be predicted using gene biomarkers from a subchronic exposure and may form the basis of a more efficient and economical approach for evaluating the carcinogenic activity of chemicals.
啮齿动物癌症生物测定是过去30年中变化不大的安全性测试传统方法的一部分。这些生物测定成本高昂、耗时且使用数百只动物。与数千种尚未进行致癌活性测试的环境和工业化学品相比,在啮齿动物癌症生物测定中测试的化学品不到1500种。在本研究中,我们利用美国国家毒理学计划(NTP)生成的现有数据来识别可预测啮齿动物癌症生物测定结果的基因表达生物标志物。从NTP测试的化学品中选择了一组13种不同的化学品。七种化学品在雌性B6C3F1小鼠中导致肺肿瘤发病率增加呈阳性,六种呈阴性。雌性小鼠被亚慢性暴露于这13种化学品中的每一种,并对肺进行微阵列分析。使用基因表达谱进行的统计分类分析确定了一组对应于六个基因的八个探针集,其表达以93.9%的准确率正确预测了肺肿瘤发病率的增加。敏感性和特异性分别为95.2%和91.8%。在预测特征中的六个基因中,大多数是参与内源性和外源性代谢的酶,还有一个基因是参与肺发育的生长因子受体。结果表明,使用亚慢性暴露的基因生物标志物可以预测雌性小鼠化学诱导的肺肿瘤发病率的增加,这可能构成一种更高效、经济的评估化学品致癌活性方法的基础。