Ponnampalam Anna P, Weston Gareth C, Trajstman Albert C, Susil Beatrice, Rogers Peter A W
Centre for Women's Health Research, Monash University Department of Obstetrics & Gynaecology, 246 Clayton Road, Victoria 3168, Australia.
Mol Hum Reprod. 2004 Dec;10(12):879-93. doi: 10.1093/molehr/gah121. Epub 2004 Oct 22.
Endometrium is a dynamic tissue that undergoes cyclic changes each month, under the overall control of estrogen and progesterone. The aims of this study were to investigate the changing global gene expression profile of human endometrium during the menstrual cycle using microarray technology and to determine the correlation between histopathological evaluation and molecular profile of the samples. Standard two-colour cDNA microarrays were performed on the 43 samples against a common reference, using a 10.5 K cDNA glass slide microarray. The results were validated using real-time PCR. Analysis of expression data was carried out using parametric analysis of variance with Benjamini-Hochberg correction. Hierarchical clustering reveals a strong relationship between histopathology and transcriptional profile of the samples. The study identified 1452 genes that showed significant changes in expression (P< or =0.05) across the menstrual cycle, with 425 genes having changes that are at least 2-fold. The data were also independently analysed by a CSIRO algorithm called GeneRaVE that identified a small subset of genes whose expression profiles could be used to classify nearly all the biopsies into their correct cycle stage. We also identified and validated three genes [(natural cytotoxicity triggering receptor (NCR)3, fucosyl transferase (FUT)4 and Fyn-binding protein (FYB)] that had not been shown to have significant cyclic changes in the human endometrium, previously. We have shown for the first time that endometrial cycle stage prediction is possible based on global gene expression profile.
子宫内膜是一种动态组织,在雌激素和孕激素的整体调控下,每月都会发生周期性变化。本研究的目的是使用微阵列技术研究人类子宫内膜在月经周期中的整体基因表达谱变化,并确定样本的组织病理学评估与分子谱之间的相关性。使用10.5K cDNA玻片微阵列,对43个样本与一个共同参考样本进行标准双色cDNA微阵列检测。结果通过实时PCR进行验证。使用经Benjamini-Hochberg校正的参数方差分析对表达数据进行分析。层次聚类揭示了样本的组织病理学与转录谱之间的密切关系。该研究确定了1452个在整个月经周期中表达有显著变化(P≤0.05)的基因,其中有425个基因的变化至少为2倍。数据还通过一种名为GeneRaVE的CSIRO算法进行了独立分析,该算法识别出一小部分基因,其表达谱可用于将几乎所有活检样本正确分类到其相应的周期阶段。我们还鉴定并验证了三个此前未显示在人类子宫内膜中有显著周期性变化的基因[自然细胞毒性触发受体(NCR)3、岩藻糖基转移酶(FUT)4和Fyn结合蛋白(FYB)]。我们首次表明,基于整体基因表达谱可以预测子宫内膜周期阶段。