Detection of non-genotoxic hepatocarcinogens and prediction of their mechanism of action in rats using gene marker sets.

Masayuki Kanki, M. Gi, M. Fujioka, H. Wanibuchi
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引用次数: 7

Abstract

Several studies have successfully detected hepatocarcinogenicity in rats based on gene expression data. However, prediction of hepatocarcinogens with certain mechanisms of action (MOAs), such as enzyme inducers and peroxisome proliferator-activated receptor α (PPARα) agonists, can prove difficult using a single model and requires a highly toxic dose. Here, we constructed a model for detecting non-genotoxic (NGTX) hepatocarcinogens and predicted their MOAs in rats. Gene expression data deposited in the Open Toxicogenomics Project-Genomics Assisted Toxicity Evaluation System (TG-GATEs) was used to investigate gene marker sets. Principal component analysis (PCA) was applied to discriminate different MOAs, and a support vector machine algorithm was applied to construct the prediction model. This approach identified 106 probe sets as gene marker sets for PCA and enabled the prediction model to be constructed. In PCA, NGTX hepatocarcinogens were classified as follows based on their MOAs: cytotoxicants, PPARα agonists, or enzyme inducers. The prediction model detected hepatocarcinogenicity with an accuracy of more than 90% in 14- and 28-day repeated-dose studies. In addition, the doses capable of predicting NGTX hepatocarcinogenicity were close to those required in rat carcinogenicity assays. In conclusion, our PCA and prediction model using gene marker sets will help assess the risk of hepatocarcinogenicity in humans based on MOAs and reduce the number of two-year rodent bioassays.
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利用基因标记集检测大鼠非基因毒性肝癌物质及其作用机制预测。
一些研究已经成功地根据基因表达数据检测了大鼠的肝癌致癌性。然而,预测具有某些作用机制(MOAs)的肝癌致癌物,如酶诱导剂和过氧化物酶体增殖激活受体α (PPARα)激动剂,可能证明使用单一模型是困难的,并且需要高毒性剂量。在此,我们构建了一个检测非基因毒性(NGTX)肝癌致癌物的模型,并预测其在大鼠中的MOAs。基因表达数据存储在开放毒物基因组学项目-基因组学辅助毒性评估系统(TG-GATEs)中,用于研究基因标记集。采用主成分分析(PCA)对不同moa进行判别,并采用支持向量机算法构建预测模型。该方法确定了106个探针集作为PCA的基因标记集,并构建了预测模型。在PCA中,NGTX肝癌致癌物根据其MOAs分类如下:细胞毒物、PPARα激动剂或酶诱导剂。在14天和28天的重复剂量研究中,预测模型检测肝癌致癌性的准确性超过90%。此外,能够预测NGTX致癌性的剂量与大鼠致癌性试验所需的剂量接近。总之,我们的PCA和使用基因标记集的预测模型将有助于评估基于moa的人类肝癌致癌性风险,并减少两年一次的啮齿动物生物测定次数。
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