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首页> 外文期刊>Reproduction: The official journal of the Society for the Study of Fertility >Granulosa cell biomarkers to predict pregnancy in ART: pieces to solve the puzzle
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Granulosa cell biomarkers to predict pregnancy in ART: pieces to solve the puzzle

机译:颗粒细胞生物标记物可预测ART中的妊娠:解决难题的方法

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Cumulus and mural granulosa cells of the ovarian follicle surround and interact with the developing oocyte. These follicular cells reflect the oocyte’s overall health and may indicate subsequent developmental competence of embryos. Biomarkers of granulosa cells associated with individual oocytes could potentially be used in assisted reproduction to indicate which embryos have the best chance of implanting in the uterus and completing gestation. In this review, we have performed a comprehensive assessment of the recent literature for human cumulus and mural granulosa cell mRNA biomarkers as they relate to pregnancy and live birth. A critical discussion of variables affecting granulosa gene expression profiles for in vitro fertilization patients, including patient demographics and ovarian stimulation regimens, is presented. Although studies with microarray data were evaluated, this synopsis focuses on expressed genes that have been validated by quantitative RT-PCR. Furthermore, we summarize the current published data that support or refute identified granulosa expressed genes as potential biomarkers of embryos that give rise to ongoing pregnancy and live birth. Finally, we review studies that offer predictive models for embryo selection for uterine transfer based on biomarkers that show differential gene expression.
机译:卵泡的卵丘和壁颗粒细胞围绕卵母细胞并与其相互作用。这些卵泡细胞反映了卵母细胞的整体健康状况,可能表明胚胎随后的发育能力。与单个卵母细胞相关的颗粒细胞的生物标记物可潜在地用于辅助生殖,以表明哪些胚胎最有可能植入子宫并完成妊娠。在这篇综述中,我们对有关人类卵丘和壁颗粒细胞mRNA生物标志物的最新文献进行了全面评估,因为它们与妊娠和活产有关。提出了影响体外受精患者颗粒颗粒基因表达谱的变量的关键性讨论,包括患者人口统计学和卵巢刺激方案。尽管对微阵列数据的研究进行了评估,但该提要侧重于已通过定量RT-PCR验证的表达基因。此外,我们总结了当前公开的数据,这些数据支持或反驳了已鉴定的颗粒表达基因是潜在的胚胎生物标志物,可引起持续的妊娠和活产。最后,我们回顾了研究,这些研究基于显示差异基因表达的生物标志物,为子宫转移的胚胎选择提供了预测模型。

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