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A Partial least squares-based regression approach for analysis of frontotemporal dementia gene markers in human brain gene microarray data

机译:基于部分最小二乘基于人脑基因微阵列数据分析的基于局部痴呆基因标志物的回归方法

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Conventional procedures for preliminary diagnosis of Alzheimer's disease (AD) are invasive and painful. It is important to devise noninvasive biomarker which can provide conclusive diagnosis of early onset of AD and mild cognitive impairment (MCI). Recent attention has been drawn recently to gene microarray analysis for understanding disease onset and progression. In this paper, we extend our previous work to develop a new large-scale partial least squares based multivariate regression approach for the identification of putative interacting partners of gene markers for high-throughput gene microarray and other related data. Preliminary analysis of the interacting gene partners of a marker gene of frontotemporal dementia show that the identified genes are significantly enriched in innate immune and inflammatory response processes, which align well with the nature of the disease. These suggest that the proposed approach may serve as a valuable tool for inferring putative gene interacting partners in biological studies involving gene microarray data and other related datasets.
机译:阿尔茨海默氏病(AD)的初步诊断常规程序是侵入性和痛苦的。它设计出非侵入性生物标记物,其可以提供AD和轻度认知障碍(MCI)的早期发作的结论性诊断是重要的。近期关注最近已提出一种用于理解疾病发生和发展的基因芯片分析。在本文中,我们扩展我们以前的工作,以开发新的大型偏最小二乘法为基础的高通量基因芯片和其他相关数据的基因标记的推定相互作用配偶的身份多元回归方法。的额颞叶痴呆示出了标志物基因的基因相互作用伙伴初步分析该鉴定的基因在先天免疫和炎症反应过程中,其与疾病的性质相吻合显著富集。这表明,该方法可以作为推断假定基因相互作用涉及基因微阵列数据及其它相关数据集生物学研究的合作伙伴的宝贵工具。

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