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首页> 外文期刊>European review for medical and pharmacological sciences. >Bioinformatics analysis of two microarray gene-expression data sets to select lung adenocarcinoma marker genes.
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Bioinformatics analysis of two microarray gene-expression data sets to select lung adenocarcinoma marker genes.

机译:两个微阵列基因表达数据集的生物信息学分析,以选择肺腺癌标记基因。

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摘要

Lung adenocarcinoma (LAC) is the most frequent histologic type of lung cancer and rates of adenocarcinoma are increasing in most countries. Recently, several molecular markers have been identified to predict LAC. However, more prognostic makers and the underlying role of those makers are still imperative. In this study, our objective was to identify a set of discriminating genes that can be used for characterization and prediction of response to LAC. Using the bioinformatics analysis method, we merged two LAC datasets-GSE2514 and GSE7670 to find novel target genes and pathways to explain the pathogenicity. The results showed that EDNRB (endothelin receptor type B), ADRB2 (beta-adrenergic receptor), S1PR1 (sphingosine-1-phosphate receptor 1), P2RY14 (PsY purinoceptor 14), LEPR (leptin-receptor), GHR (growth hormone receptor), PPM1D (protein phosphatase-1D), and GADD45B (growth arrest and DNA-damage-inducible, beta) have high degrees in response to LAC. Additionally, EDNRB, ADRB2, S1PR1, P2RY14, LEPR, and GHR may be involved in LAC through Neuroactive ligand-receptor interaction, but PPM1D and GADD45B may be through p53 signaling pathway. Some of our prediction had been demonstrated by previous reports, such as ADRB2, S1PR1, GHR, PPM1D, and GADD45B. Therefore, we hope our study could lay a basis for further study of other target genes, such as EDNRB, P2RY14, and LEPR. It is effective to identify potential molecular marker for LAC and predict their underlying functions by bioinformatics analysis and graph clustering method. However, further experiments are still indispensable to confirm our conclusion.
机译:肺腺癌(LAC)是肺癌最常见的组织学类型,在大多数国家中,腺癌的发病率正在上升。最近,已经鉴定了几种分子标记来预测LAC。但是,更多具有预后性的生产者以及这些生产者的潜在作用仍然势在必行。在这项研究中,我们的目标是确定一组可用于表征和预测对LAC应答的区分基因。使用生物信息学分析方法,我们合并了两个LAC数据集-GSE2514和GSE7670,以发现新的靶基因和途径来解释致病性。结果显示EDNRB(B型内皮素受体),ADRB2(β-肾上腺素能受体),S1PR1(鞘氨醇1-磷酸受体1),P2RY14(PsY嘌呤受体14),LEPR(瘦素受体),GHR(生长激素受体) ),PPM1D(蛋白质磷酸酶1D)和GADD45B(生长停滞和DNA损伤诱导型,β)对LAC的反应高度。此外,EDNRB,ADRB2,S1PR1,P2RY14,LEPR和GHR可能通过神经活性配体-受体相互作用而参与LAC,但PPM1D和GADD45B可能通过p53信号传导途径参与。我们的某些预测已由以前的报告证明,例如ADRB2,S1PR1,GHR,PPM1D和GADD45B。因此,我们希望我们的研究可以为进一步研究其他靶基因,如EDNRB,P2RY14和LEPR奠定基础。通过生物信息学分析和图聚类方法,可以有效地识别潜在的LAC分子标记并预测其潜在功能。然而,进一步的实验仍然是必不可少的,以证实我们的结论。

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