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首页> 外文期刊>Ageing Research Reviews >Harnessing the power of gene microarrays for the study of brain aging and Alzheimer's disease: statistical reliability and functional correlation.
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Harnessing the power of gene microarrays for the study of brain aging and Alzheimer's disease: statistical reliability and functional correlation.

机译:利用基因芯片的功能来研究脑衰老和阿尔茨海默氏病:统计可靠性和功能相关性。

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During normal brain aging, numerous alterations develop in the physiology, biochemistry and structure of neurons and glia. Aging changes occur in most brain regions and, in the hippocampus, have been linked to declining cognitive performance in both humans and animals. Age-related changes in hippocampal regions also may be harbingers of more severe decrements to come from neurodegenerative disorders such as Alzheimer's disease (AD). However, unraveling the mechanisms underlying brain aging, AD and impaired function has been difficult because of the complexity of the networks that drive these aging-related changes. Gene microarray technology allows massively parallel analysis of most genes expressed in a tissue, and therefore is an important new research tool that potentially can provide the investigative power needed to address the complexity of brain agingeurodegenerative processes. However, along with this new analytic power, microarrays bring several major bioinformatics and resource problems that frequently hinder the optimal application of this technology. In particular, microarray analyses generate extremely large and unwieldy data sets and are subject to high false positive and false negative rates. Concerns also have been raised regarding their accuracy and uniformity. Furthermore, microarray analyses can result in long lists of altered genes, most of which may be difficult to evaluate for functional relevance. These and other problems have led to some skepticism regarding the reliability and functional usefulness of microarray data and to a general view that microarray data should be validated by an independent method. Given recent progress, however, we suggest that the major problem for current microarray research is no longer validity of expression measurements, but rather, the reliability of inferences from the data, an issue more appropriately redressed by statistical approaches than by validation with a separate method. If tested using statistically defined criteria for reliability/significance, microarray data do not appear a priori to require more independent validation than data obtained by any other method. In fact, because of added confidence from co-regulation, they may require less. In this article we also discuss our strategy of statistically correlating individual gene expression with biologically important endpoints designed to address the problem of evaluating functional relevance. We also review how work by ourselves and others with this powerful technology is leading to new insights into the complex processes of brain aging and AD, and to novel, more comprehensive models of aging-related brain change.
机译:在正常的大脑衰老过程中,神经元和神经胶质的生理,生化和结构发生了许多变化。衰老变化发生在大多数大脑区域,在海马中,这与人类和动物的认知能力下降有关。海马区与年龄相关的变化也可能预示着神经退行性疾病(如阿尔茨海默氏病(AD))的更严重减少。但是,由于驱动这些与衰老相关的变化的网络非常复杂,因此难以弄清大脑衰老,AD和功能受损的潜在机制。基因芯片技术可以对组织中表达的大多数基因进行大规模并行分析,因此是一种重要的新研究工具,可以潜在地提供解决大脑衰老/神经退行性过程的复杂性所需的研究能力。然而,随着这种新的分析能力的发展,微阵列带来了一些主要的生物信息学和资源问题,这些问题常常阻碍了该技术的最佳应用。尤其是,微阵列分析会产生非常庞大且笨拙的数据集,并且会遭受较高的假阳性和假阴性率。人们还对它们的准确性和均匀性提出了担忧。此外,微阵列分析可导致一长串的基因改变,其中大多数可能难以评估其功能相关性。这些和其他问题导致人们对微阵列数据的可靠性和功能实用性表示怀疑,并普遍认为应通过独立的方法来验证微阵列数据。然而,鉴于最近的进展,我们建议当前微阵列研究的主要问题不再是表达测量的有效性,而是数据推断的可靠性,这个问题更适合通过统计方法解决,而不是通过单独的方法进行验证。 。如果使用统计学定义的可靠性/重要性标准进行测试,则微阵列数据似乎不会比通过任何其他方法获得的数据具有更独立的先验条件。实际上,由于共同监管增加了信心,他们的要求可能会更低。在本文中,我们还将讨论将个体基因表达与生物学上重要的终点进行统计学关联的策略,这些终点旨在解决评估功能相关性的问题。我们还将回顾自己和他人使用这项强大技术的工作如何导致对大脑衰老和AD复杂过程的新见解,以及与衰老相关的大脑变化的新颖,更全面的模型。

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