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首页> 外文期刊>International journal of molecular medicine >Gene expression profiles for predicting antibody-mediated kidney allograft rejection: Analysis of GEO datasets
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Gene expression profiles for predicting antibody-mediated kidney allograft rejection: Analysis of GEO datasets

机译:用于预测抗体介导的肾同种异体移植抑制的基因表达谱:地理数据集分析

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Antibody-mediated rejections (AMRs) are one of the most challenging complications that result in the deterioration of renal allograft function and graft loss in a large majority of cases. The purpose of the present study was to characterize a meta-signature of differentially expressed RNAs associated with AMR in cases of kidney transplantation. Gene Expression Omnibus (GEO) dataset searches up to September 11, 2017, using Medical Subject Heading terms and keywords associated with kidney transplantation, AMR and mRNA arrays were downloaded from the GEO dataset. Using a computational analysis, a meta-signature was determined that characterized the significant intersection of differentially expressed genes (DEGs). Gene-set and network analyses were also performed to identify gene sets and sub-networks associated with the AMR-related traits. A statistically significant mRNA meta-signature of upregulated and downregulated gene expression levels that were significantly associated with AMR was identified. C-X-C motif chemokine ligand 10 (CXCL10), CXCL9 and guanylate binding protein 1 were the most significantly associated with AMR. DEGs were efficiently identified and were found to be able to predict the occurrence of AMR according to a meta-analysis approach from publicly available datasets. These methods and results can be applied for a more accurate diagnosis of AMR in transplant cases.
机译:抗体介导的拒绝(AMRS)是最具挑战性的并发症之一,导致肾同种异体移植功能的恶化和大多数情况下的接枝损失。本研究的目的是在肾移植病例中表征与AMR相关的差异表达RNA的差异表达RNA的特征。基因表达综合(GEO)数据集在2017年9月11日搜索,使用与肾移植相关的医学主题标题和关键词,从GEO数据集下载AMR和MRNA阵列。使用计算分析,确定了特征表达差异表达基因(DEG)的显着交叉的元签名。还进行了基因集和网络分析以识别与AMR相关性状相关的基因集和子网。鉴定了与AMR显着相关的上调和下调基因表达水平的统计学上显着的mRNA元签名。 C-X-C基质趋化因子配体10(CXCL10),CXCL9和醋酸胍结合蛋白1与AMR最显着相关。有效地识别了DEG,并发现能够根据来自公开的数据集的META分析方法预测AMR的发生。这些方法和结果可用于更准确地诊断移植病例中的AMR。

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