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首页> 外文期刊>Journal of Alzheimer's disease: JAD >Bayesian Graphical Network Analyses Reveal Complex Biological Interactions Specific to Alzheimer's Disease
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Bayesian Graphical Network Analyses Reveal Complex Biological Interactions Specific to Alzheimer's Disease

机译:贝叶斯图形网络分析揭示特定于阿尔茨海默氏病的复杂生物相互作用

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With different approaches to finding prognostic or diagnostic biomarkers for Alzheimer's disease (AD), many studies pursue only brief lists of biomarkers or disease specific pathways, potentially dismissing information from groups of correlated biomarkers. Using a novel Bayesian graphical network method, with data from the Australian Imaging, Biomarkers and Lifestyle (AIBL) study of aging, the aim of this study was to assess the biological connectivity between AD associated blood-based proteins. Briefly, three groups of protein markers (18, 37, and 48 proteins, respectively) were assessed for the posterior probability of biological connection both within and between clinical classifications. Clinical classification was defined in four groups: high performance healthy controls (hpHC), healthy controls (HC), participants with mild cognitive impairment (MCI), and participants with AD. Using the smaller group of proteins, posterior probabilities of network similarity between clinical classifications were very high, indicating no difference in biological connections between groups. Increasing the number of proteins increased the capacity to separate both hpHC and HC apart from the AD group (0 for complete separation, 1 for complete similarity), with posterior probabilities shifting from 0.89 for the 18 protein group, through to 0.54 for the 37 protein group, and finally 0.28 for the 48 protein group. Using this approach, we identified beta-2 microglobulin (beta 2M) as a potential master regulator of multiple proteins across all classifications, demonstrating that this approach can be used across many data sets to identify novel insights into diseases like AD.
机译:采用不同的方法来查找阿尔茨海默氏病(AD)的预后或诊断生物标志物,许多研究仅追求生物标志物或疾病特异性途径的简短列表,从而可能会从相关生物标志物组中剔除信息。使用新颖的贝叶斯图形网络方法,结合澳大利亚影像,生物标志物和生活方式(AIBL)衰老研究的数据,本研究的目的是评估与AD相关的基于血液的蛋白质之间的生物连通性。简而言之,评估了三类蛋白质标记物(分别为18、37和48个蛋白质)在临床分类之内和之间的生物学联系的后验概率。临床分类分为四组:高性能健康对照(hpHC),健康对照(HC),轻度认知障碍(MCI)参与者和AD参与者。使用较小的蛋白质组,临床分类之间网络相似性的后验概率非常高,表明各组之间的生物学联系没有差异。蛋白质数量的增加提高了从AD组分离hpHC和HC的能力(0代表完全分离,1代表完全相似),后验概率从18个蛋白质组的0.89变为37个蛋白质的0.54组,最后48个蛋白质组为0.28。使用这种方法,我们确定了beta-2微球蛋白(beta 2M)作为所有分类中多种蛋白质的潜在主调节剂,表明该方法可用于许多数据集,以鉴定对AD等疾病的新颖见解。

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