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Cross-Platform Toxicogenomics for the Prediction of Non-Genotoxic Hepatocarcinogenesis in Rat

机译:跨平台毒物基因组学预测大鼠非遗传毒性肝癌的发生

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摘要

In the area of omics profiling in toxicology, i.e. toxicogenomics, characteristic molecular profiles have previously been incorporated into prediction models for early assessment of a carcinogenic potential and mechanism-based classification of compounds. Traditionally, the biomarker signatures used for model construction were derived from individual high-throughput techniques, such as microarrays designed for monitoring global mRNA expression. In this study, we built predictive models by integrating omics data across complementary microarray platforms and introduced new concepts for modeling of pathway alterations and molecular interactions between multiple biological layers. We trained and evaluated diverse machine learning-based models, differing in the incorporated features and learning algorithms on a cross-omics dataset encompassing mRNA, miRNA, and protein expression profiles obtained from rat liver samples treated with a heterogeneous set of substances. Most of these compounds could be unambiguously classified as genotoxic carcinogens, non-genotoxic carcinogens, or non-hepatocarcinogens based on evidence from published studies. Since mixed characteristics were reported for the compounds Cyproterone acetate, Thioacetamide, and Wy-14643, we reclassified these compounds as either genotoxic or non-genotoxic carcinogens based on their molecular profiles. Evaluating our toxicogenomics models in a repeated external cross-validation procedure, we demonstrated that the prediction accuracy of our models could be increased by joining the biomarker signatures across multiple biological layers and by adding complex features derived from cross-platform integration of the omics data. Furthermore, we found that adding these features resulted in a better separation of the compound classes and a more confident reclassification of the three undefined compounds as non-genotoxic carcinogens.
机译:在毒理学中的组学分析(即毒理基因组学)领域中,先前已将特征性分子概况纳入预测模型中,以用于早期评估致癌潜力和基于机理的化合物分类。传统上,用于模型构建的生物标志物签名来自单个的高通量技术,例如设计用于监测全局mRNA表达的微阵列。在这项研究中,我们通过整合跨互补微阵列平台的组学数据建立了预测模型,并引入了用于对多个生物层之间的途径改变和分子相互作用进行建模的新概念。我们训练和评估了多种基于机器学习的模型,这些模型在跨组学数据集上的并入特征和学习算法各不相同,其中包括从用一组异质物质处理过的大鼠肝脏样品中获得的mRNA,miRNA和蛋白质表达谱。根据已发表研究的证据,大多数这些化合物都可以明确地分为遗传毒性致癌物,非遗传毒性致癌物或非肝致癌物。由于报告了醋酸环丙孕酮,硫代乙酰胺和Wy-14643化合物的混合特性,因此我们根据其分子概况将这些化合物重新分类为遗传毒性或非遗传毒性致癌物。在重复的外部交叉验证程序中评估我们的毒理基因组学模型,我们证明了可以通过跨多个生物层加入生物标志物标记并添加从组学数据的跨平台整合中获得的复杂特征来提高模型的预测准确性。此外,我们发现添加这些功能可以更好地分离化合物类别,并将三种不确定的化合物更可靠地重新分类为非遗传毒性致癌物。

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