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首页> 外文期刊>Journal of Alzheimer's disease: JAD >Gene expression biomarkers in the brain of a mouse model for Alzheimer's disease: mining of microarray data by logic classification and feature selection.
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Gene expression biomarkers in the brain of a mouse model for Alzheimer's disease: mining of microarray data by logic classification and feature selection.

机译:阿尔茨海默氏病小鼠模型的大脑中的基因表达生物标记物:通过逻辑分类和特征选择来挖掘微阵列数据。

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摘要

The identification of early and stage-specific biomarkers for Alzheimer's disease (AD) is critical, as the development of disease-modification therapies may depend on the discovery and validation of such markers. The identification of early reliable biomarkers depends on the development of new diagnostic algorithms to computationally exploit the information in large biological datasets. To identify potential biomarkers from mRNA expression profile data, we used the Logic Mining method for the unbiased analysis of a large microarray expression dataset from the anti-NGF AD11 transgenic mouse model. The gene expression profile of AD11 brain regions was investigated at different neurodegeneration stages by whole genome microarrays. A new implementation of the Logic Mining method was applied both to early (1-3 months) and late stage (6-15 months) expression data, coupled to standard statistical methods. A small number of "fingerprinting" formulas was isolated, encompassing mRNAs whose expression levels were able to discriminate between diseased and control mice. We selected three differential "signature" genes specific for the early stage (Nudt19, Arl16, Aph1b), five common to both groups (Slc15a2, Agpat5, Sox2ot, 2210015, D19Rik, Wdfy1), and seven specific for late stage (D14Ertd449, Tia1, Txnl4, 1810014B01Rik, Snhg3, Actl6a, Rnf25). We suggest these genes as potential biomarkers for the early and late stage of AD-like neurodegeneration in this model and conclude that Logic Mining is a powerful and reliable approach for large scale expression data analysis. Its application to large expression datasets from brain or peripheral human samples may facilitate the discovery of early and stage-specific AD biomarkers.
机译:阿尔茨海默氏病(AD)早期和特定阶段生物标志物的鉴定至关重要,因为疾病修饰疗法的发展可能取决于此类标志物的发现和验证。早期可靠生物标志物的鉴定取决于新诊断算法的发展,以计算方式利用大型生物数据集中的信息。为了从mRNA表达谱数据中识别潜在的生物标记,我们使用Logic Mining方法对来自抗NGF AD11转基因小鼠模型的大型微阵列表达数据集进行了无偏分析。通过全基因组微阵列研究了AD11大脑区域在不同神经退行性阶段的基因表达谱。逻辑挖掘方法的新实现方式已应用于早期(1-3个月)和晚期(6-15个月)表达数据,并与标准统计方法结合使用。分离了少量的“指纹”配方,包括其表达水平能够区分患病小鼠和对照小鼠的mRNA。我们选择了三个特定于早期阶段的差异“签名”基因(Nudt19,Arl16,Aph1b),五个特定于两组的共同特征(Slc15a2,Agpat5,Sox2ot,2210015,D19Rik,Wdfy1)和七个特定于晚期特定阶段的基因(D14Ertd449,Tia1) ,Txnl4、1810014B01Rik,Snhg3,Actl6a,Rnf25)。我们建议这些基因作为该模型中AD样神经变性的早期和晚期的潜在生物标记,并得出结论Logic Mining是用于大规模表达数据分析的强大而可靠的方法。将其应用于来自大脑或外周人类样品的大表达数据集可能有助于发现早期和特定阶段的AD生物标志物。

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