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Considerations for integrative multi-omic approaches to explore Alzheimer's disease mechanisms

机译:综合多环境促进阿尔茨海默病机制的考虑因素

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摘要

The past decade has seen the maturation of multiple different forms of high-dimensional molecular profiling to the point that these methods could be deployed in initially hundreds and more recently thousands of human samples. In the field of Alzheimer's disease (AD), these profiles have been applied to the target organ: the aging brain. In a growing number of cases, the same samples were profiled with multiple different approaches, yielding genetic, transcriptomic, epigenomic and proteomic data. Here, we review lessons learned so far as we move beyond quantitative trait locus (QTL) analyses which map the effect of genetic variation on molecular features to integrate multiple levels of "omic" data in an effort to identify the molecular drivers of AD. One thing is clear: no single layer of molecular or "omic" data is sufficient to capture the variance of AD or aging-related cognitive decline. Nonetheless, reproducible findings are emerging from current efforts, and there is evidence of convergence using different approaches. Thus, we are on the cusp of an acceleration of truly integrative studies as the availability of large numbers of well-characterized brain samples profiled in three or more dimensions enables the testing, comparison and refinement of analytic methods with which to dissect the molecular architecture of the aging brain.
机译:过去十年已经看到了多种不同形式的高尺寸分子分析的成熟,即这些方法可以最初部署数百和更近千万人样品。在阿尔茨海默病的疾病(AD)领域,这些曲线已应用于靶器官:老化脑。在越来越多的情况下,具有多种不同的方法,产生相同的样品,产生遗传,转录组,表观胶和蛋白质组学数据。在这里,我们审查了迄今为止的经验教训,就像我们超越定量性状基因座(QTL)分析,该分析映射遗传变异对分子特征的影响,以识别广告的分子驱动因素。有一件事很清楚:没有单层分子或“omic”数据足以捕获广告或衰老相关认知下降的方差。尽管如此,从目前的努力中,可重复的结果是从目前的努力中出现的,并且存在使用不同方法的收敛性的证据。因此,我们正处于将真正综合研究的加速度加速,因为在三个或更多尺寸的三个或更多尺寸上分布的大量良好表征的脑样本的可用性能够进行解剖分析方法的测试,比较和改进分析方法老化的大脑。

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