Kiyosawa Naoki, Shiwaku Kouji, Hirode Mitsuhiro, Omura Ko, Uehara Takeki, Shimizu Toshinobu, Mizukawa Yumiko, Miyagishima Toshikazu, Ono Atsushi, Nagao Taku, Urushidani Tetsuro
Toxicogenomics Project, National Institute of Biomedical Innovation, Ibaraki, Osaka, Japan.
J Toxicol Sci. 2006 Dec;31(5):433-48. doi: 10.2131/jts.31.433.
A large-scale toxicogenomcis database has now been constructed in the Toxicogenomics Project in Japan (TGP). To facilitate the analytical procedures for such large-scale microarray data, we developed a simple one-dimensional score, named TGP1 which expresses the trend of the changes in expression of biomarker genes as a whole. To evaluate the usefulness of the TGP1 score, microarray data of rat liver and rat hepatocytes deposited in the TGP database were scored for three biomarker gene sets, i.e., carcinogenesis-related, PPARalpha-regulated and glutathione depletion-related gene sets. The TGP1 scoring system gave reasonable results, i.e., the scores for carcinogenesis-related genes were high in omeprazole-, chlorpromazine-, hexachlorobenzene-, sulfasalazine- and Wy-14,643-treated rat livers, that for PPARalpha-regulated genes were high in clofibrate-, Wy-14,643-, gemfibrozil-, benzbromarone- and aspirin-treated rat livers as well as rat hepatocytes, and for glutathione deficiency-related genes were high in omeprazole-, bromobenzene-, acetaminophen- and coumarin-treated rat liver. We concluded that the TGP1 score is useful for surveying the expression changes in multiple biomarker gene sets for a large-scale toxicogenomics database, which would reduce the time of doing conventional multivariate statistical analysis. In addition, the TGP1 score can be applied to screening of compatible biomarker gene sets between rat liver and rat hepatocytes, like PPARalpha-regulated gene sets, which will allow us to develop an appropriate in vitro system for drug safety assessment in vivo.
日本毒理基因组学项目(TGP)现已构建了一个大规模的毒理基因组学数据库。为便于对如此大规模的微阵列数据进行分析,我们开发了一种简单的一维评分,名为TGP1,它整体表达生物标志物基因表达变化的趋势。为评估TGP1评分的实用性,对TGP数据库中存储的大鼠肝脏和大鼠肝细胞的微阵列数据,针对三个生物标志物基因集进行评分,即致癌相关、PPARα调节和谷胱甘肽消耗相关基因集。TGP1评分系统给出了合理的结果,即奥美拉唑、氯丙嗪、六氯苯、柳氮磺胺吡啶和Wy-14,643处理的大鼠肝脏中致癌相关基因的评分较高,氯贝丁酯、Wy-14,643、吉非贝齐、苯溴马隆和阿司匹林处理的大鼠肝脏以及大鼠肝细胞中PPARα调节基因的评分较高,奥美拉唑、溴苯、对乙酰氨基酚和香豆素处理的大鼠肝脏中谷胱甘肽缺乏相关基因的评分较高。我们得出结论,TGP1评分对于大规模毒理基因组学数据库中多个生物标志物基因集的表达变化调查很有用,这将减少进行传统多变量统计分析的时间。此外,TGP1评分可应用于筛选大鼠肝脏和大鼠肝细胞之间兼容的生物标志物基因集,如PPARα调节基因集,这将使我们能够开发一个合适的体外系统用于体内药物安全性评估。