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利用短期转录谱评估环境和工业化学品的长期癌症相关安全性。

Use of short-term transcriptional profiles to assess the long-term cancer-related safety of environmental and industrial chemicals.

机构信息

The Hamner Institutes for Health Sciences, Research Triangle Park, North Carolina 27709, USA.

出版信息

Toxicol Sci. 2009 Dec;112(2):311-21. doi: 10.1093/toxsci/kfp233. Epub 2009 Sep 23.

Abstract

The process for evaluating chemical safety is inefficient, costly, and animal intensive. There is growing consensus that the current process of safety testing needs to be significantly altered to improve efficiency and reduce the number of untested chemicals. In this study, the use of short-term gene expression profiles was evaluated for predicting the increased incidence of mouse lung tumors. Animals were exposed to a total of 26 diverse chemicals with matched vehicle controls over a period of 3 years. Upon completion, significant batch-related effects were observed. Adjustment for batch effects significantly improved the ability to predict increased lung tumor incidence. For the best statistical model, the estimated predictive accuracy under honest fivefold cross-validation was 79.3% with a sensitivity and specificity of 71.4 and 86.3%, respectively. A learning curve analysis demonstrated that gains in model performance reached a plateau at 25 chemicals, indicating that the size of current data set was sufficient to provide a robust classifier. The classification results showed that a small subset of chemicals contributed disproportionately to the misclassification rate. For these chemicals, the misclassification was more closely associated with genotoxicity status than with efficacy in the original bioassay. Statistical models were also used to predict dose-response increases in tumor incidence for methylene chloride and naphthalene. The average posterior probabilities for the top models matched the results from the bioassay for methylene chloride. For naphthalene, the average posterior probabilities for the top models overpredicted the tumor response, but the variability in predictions was significantly higher. The study provides both a set of gene expression biomarkers for predicting chemically induced mouse lung tumors and a broad assessment of important experimental and analysis criteria for developing microarray-based predictors of safety-related end points.

摘要

化学安全性评估的过程效率低下、成本高昂且对动物密集。越来越多的人认为,需要对当前的安全测试过程进行重大改变,以提高效率并减少未经测试的化学物质数量。在这项研究中,评估了短期基因表达谱在预测小鼠肺癌发生率增加方面的作用。在 3 年的时间里,总共将 26 种不同的化学物质及其匹配的载体对照物暴露给动物。完成后,观察到明显的批次相关影响。对批次效应进行调整可显著提高预测肺肿瘤发生率增加的能力。对于最佳的统计模型,在诚实的五重交叉验证下的估计预测准确性为 79.3%,敏感性和特异性分别为 71.4%和 86.3%。学习曲线分析表明,在 25 种化学物质时,模型性能的提高达到了一个平台期,表明当前数据集的大小足以提供稳健的分类器。分类结果表明,一小部分化学物质不成比例地导致了错误分类率。对于这些化学物质,错误分类与原始生物测定中的遗传毒性状态比疗效更密切相关。统计模型还用于预测二氯甲烷和萘的肿瘤发生率的剂量反应增加。顶级模型的平均后验概率与二氯甲烷的生物测定结果相匹配。对于萘,顶级模型的平均后验概率过高预测了肿瘤反应,但预测的变异性明显更高。该研究提供了一组用于预测化学诱导的小鼠肺癌的基因表达生物标志物,并广泛评估了开发基于微阵列的安全性相关终点预测器的重要实验和分析标准。

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