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Advancing toxicology-based cancer risk assessment with informatics.

机译:利用信息学推进基于毒理学的癌症风险评估。

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摘要

Since exposure to carcinogens can occur in the environment from various point sources, cancer risk assessment attempts to define and limit potential exposure such that the risk of developing cancer is negligible. While cancer risk assessment is widely used with certain methodologies well accepted in the scientific literature and regulatory guidances, there are still gaps which increase uncertainties when assessing risk including: (1) mixtures of genotoxins, (2) genotoxic metabolites, and (3) nongenotoxic carcinogens. An in silico model was developed to predict the cancer risk of a genotoxin which improved methodology for a single compound and mixtures. Monte Carlo simulations performed with a carcinogenicity potency database to estimate the overall carcinogenic risk of a mixture of genotoxic compounds showed that structural similarity would not likely increase the overall cancer risk. A cancer risk model was developed for genotoxic metabolites using excretion material in both animals and humans to determine the probability not exceeding a 1 in 100,000 excess cancer risk. Two model nongenotoxic compounds (fenofibrate and methapyraline) were tested in short-term microarray studies to develop a framework for cancer risk assessment. It was determined that a threshold for potential key events could be derived using benchmark dose analysis in combination with well developed ontologies (Kegg/GO), which were at or below measured tumorigenic and precursor events. In conclusion, informatics was effective in advancing toxicology-based cancer risk assessment using databases and predictive techniques which fill critical gaps in its methodology.
机译:由于暴露于致癌物可以在环境中从各种来源发生,因此癌症风险评估试图定义和限制潜在的暴露,使得发生癌症的风险可以忽略。尽管癌症风险评估已被某些科学方法和法规指南广泛采用的某些方法广泛使用,但在评估风险时仍存在差距,这些不确定性增加了不确定性,包括:(1)遗传毒素的混合物,(2)遗传毒性代谢物和(3)非遗传毒性致癌物。开发了计算机模拟模型来预测基因毒素的癌症风险,从而改进了单一化合物和混合物的方法。用致癌性数据库进行的蒙特卡洛模拟评估了遗传毒性化合物混合物的总体致癌风险,表明结构相似性可能不会增加总体致癌风险。使用动物和人类中的排泄物开发了遗传毒性代谢物的癌症风险模型,以确定不超过100,000的额外癌症风险中的1。在短期微阵列研究中测试了两种模型非遗传毒性化合物(非诺贝特和甲吡吡啉),以建立癌症风险评估的框架。已确定,可以使用基准剂量分析结合发达的本体论(Kegg / GO)得出潜在关键事件的阈值,该本体论处于或低于测得的致瘤事件和前体事件。总之,信息学可有效地利用数据库和预测技术来推进基于毒理学的癌症风险评估,从而填补其方法学中的关键空白。

著录项

  • 作者

    Bercu, Joel P.;

  • 作者单位

    Indiana University.;

  • 授予单位 Indiana University.;
  • 学科 Health Sciences Toxicology.;Environmental Sciences.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 170 p.
  • 总页数 170
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:36:51

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