Detection of endocrine disruptors – from simple assays to whole genome scanning

E. Sung, N. Turan, P. W.-L. Ho, S.-L. Ho, P. D. B. Jarratt, R. H. Waring, D. B. Ramsden
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引用次数: 14

Abstract

Endocrine disruptors frequently bear little structural relationship to the hormone whose actions they disrupt. Consequently, the threat of an uninvestigated chemical cannot easily be assessed. Here three different approaches to assessment are discussed. The first presumes an endocrine-disrupting property, following which a cell model capable of responding to such a hormone is used. Although simple and cheap, it provides limited data. A second approach involves multiple assays to detect multiple hormones. Increasing the amount of data increased the difficulty in assessing the significance of results. To meet this problem, cluster analysis based on a simple mathematical matrix was adopted. The matrix was used to determine (i) a limited number of assays to identify a maximum number of endocrine disruptors and (ii) the chemicals with the most wide-ranging effects. A third approach was a whole genome expression analysis based on expression of mRNAs in human TE671 medulloblastoma cells. Expression of individual mRNAs was assessed using the Affymetrix GeneChip® Human Genome U133 Plus 2.0 chip. The significance of differential expressed genes was assessed based on gene ontology and pathways analyses using DAVID and GenMaPP programs. The results illustrated the very wide-ranging effects of these chemicals across the genome.

Abstract Image

检测内分泌干扰物-从简单的分析到全基因组扫描
内分泌干扰物通常与它们所干扰的激素没有什么结构上的关系。因此,一种未经调查的化学品的威胁无法轻易评估。这里讨论了三种不同的评估方法。第一种假设具有内分泌干扰特性,随后使用能够对这种激素作出反应的细胞模型。虽然简单又便宜,但它提供的数据有限。第二种方法涉及多种检测多种激素的方法。数据量的增加增加了评估结果重要性的难度。为了解决这一问题,采用了基于简单数学矩阵的聚类分析。该基质用于确定(i)数量有限的测定方法,以确定最多数量的内分泌干扰物和(ii)影响最广泛的化学品。第三种方法是基于人TE671髓母细胞瘤细胞mrna表达的全基因组表达分析。使用Affymetrix GeneChip®Human Genome U133 Plus 2.0芯片评估单个mrna的表达。利用DAVID和GenMaPP程序对差异表达基因进行基因本体和通路分析,评估差异表达基因的意义。研究结果表明,这些化学物质在整个基因组中具有非常广泛的影响。
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200
审稿时长
6-12 weeks
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