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首页> 外文期刊>Toxicology in vitro: an international journal published in association with BIBRA >Multiendpoint mechanistic profiling of hepatotoxicants in HepG2/C3A human hepatoma cells and novel statistical approaches for development of a prediction model for acute hepatotoxicity.
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Multiendpoint mechanistic profiling of hepatotoxicants in HepG2/C3A human hepatoma cells and novel statistical approaches for development of a prediction model for acute hepatotoxicity.

机译:HepG2 / C3A人肝癌细胞中肝毒性物质的多端点机制分析和用于开发急性肝毒性预测模型的新型统计方法。

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摘要

HepG2/C3A human hepatoma cells were exposed to serial concentrations of seven known hepatotoxicants for 48h. Six endpoint assays were selected to model different mechanisms of acute hepatotoxicity. Each compound produced a unique concentration-response pattern across all endpoints. The endpoints did not correlate strongly, suggesting that each endpoint monitored an independent cellular process. Prediction models were developed using five statistical methods. The models used only known hepatotoxicants for the training set. The zero concentration (control) and all concentrations not significantly different from control were programmed as non-toxic levels and concentrations significantly different from control as toxic levels. So, rather than a binary classification of each compound (i.e., toxic or non-toxic), the models gave a prediction of the concentration, if any, at which a compound showed behavior similar to liver toxicants at their toxic concentrations. The discriminant analysis model gave the bestoverall performance with positive and negative predictive values of 1.00 and 0.83, respectively. Ten additional compounds were tested using this prediction model. The model predicted liver active concentrations for each compound that were consistent with their known biologically active concentrations. This model system may be useful for predicting concentration levels at which unknown compounds would display undesirable liver activity.
机译:将HepG2 / C3A人肝癌细胞暴露于系列浓度的七种已知肝毒性药物中48h。选择了六个终点试验来模拟急性肝毒性的不同机制。每种化合物在所有端点上均产生独特的浓度响应模式。端点之间没有很强的相关性,表明每个端点都监控一个独立的细胞过程。使用五种统计方法开发了预测模型。该模型仅使用已知的肝毒性剂作为训练集。将零浓度(对照)和所有与对照无显着差异的浓度编程为无毒水平,将与对照显着不同的浓度编程为有毒水平。因此,模型不是对每种化合物进行二元分类(即有毒或无毒),而是对化合物的浓度(如果有的话)进行了预测,在该浓度下,化合物在其有毒浓度下表现出与肝脏有毒物质相似的行为。判别分析模型给出了最佳总体表现,正预测值和负预测值分别为1.00和0.83。使用此预测模型测试了十种其他化合物。该模型预测每种化合物的肝活性浓度与其已知的生物活性浓度相一致。该模型系统可用于预测未知化合物表现出不良肝脏活性的浓度水平。

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