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New Short Term Prediction Method for Chemical Carcinogenicity by Hepatic Transcript Profiling Following 28-Day Toxicity Tests in Rats

机译:大鼠28天毒性试验后通过肝转录谱分析化学致癌性的短期预测新方法

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摘要

We have previously shown the hepatic gene expression profiles of carcinogens in 28-day toxicity tests were clustered into three major groups (Group-1 to 3). Here, we developed a new prediction method for Group-1 carcinogens which consist mainly of genotoxic rat hepatocarcinogens. The prediction formula was generated by a support vector machine using 5 selected genes as the predictive genes and predictive score was introduced to judge carcinogenicity. It correctly predicted the carcinogenicity of all 17 Group-1 chemicals and 22 of 24 non-carcinogens regardless of genotoxicity. In the dose-response study, the prediction score was altered from negative to positive as the dose increased, indicating that the characteristic gene expression profile emerged over a range of carcinogen-specific doses. We conclude that the prediction formula can quantitatively predict the carcinogenicity of Group-1 carcinogens. The same method may be applied to other groups of carcinogens to build a total system for prediction of carcinogenicity.
机译:我们先前已经显示,在28天的毒性试验中,致癌物的肝基因表达谱被分为三个主要组(第1至3组)。在这里,我们开发了一种新的Group-1致癌物预测方法,该方法主要由遗传毒性大鼠肝致癌物组成。预测公式由支持向量机使用5个选定的基因作为预测基因生成,并引入预测分数来判断致癌性。它可以正确预测所有17种Group-1化学品和24种非致癌物中的22种的致癌性,而不考虑遗传毒性。在剂量反应研究中,随着剂量增加,预测得分从负变为正,表明特征基因表达谱在一定范围的致癌物特异性剂量范围内出现。我们得出结论,该预测公式可以定量预测Group-1致癌物的致癌性。可以将相同的方法应用于其他致癌物组,以建立用于预测致癌性的总系统。

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