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首页> 外文期刊>Analytical chemistry >Investigation of the Human Brain Metabolome to Identify Potential Markers for Early Diagnosis and Therapeutic Targets of Alzheimer's Disease
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Investigation of the Human Brain Metabolome to Identify Potential Markers for Early Diagnosis and Therapeutic Targets of Alzheimer's Disease

机译:人类大脑代谢组的研究,以识别早期诊断和阿尔茨海默氏病治疗目标的潜在标志物

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摘要

A study combining high resolution mass spectrometry (liquid chromatography-quadrupole time-of-flight-mass spectrometry, UPLC-QTof-MS) and chemometrics for the analysis of post-mortem brain tissue from subjects with Alzheimer's disease (AD) (n = 15) and healthy age-matched controls (n = 15) was undertaken. The huge potential of this metabolomics approach for distinguishing AD cases is underlined by the correct prediction of disease status in 94-97% of cases. Predictive power was confirmed in a blind test set of 60 samples, reaching 100% diagnostic accuracy. The approach also indicated compounds significantly altered in concentration following the onset of human AD. Using orthogonal partial least-squares discriminant analysis (OPLS-DA), a multivariate model was created for both modes of acquisition explaining the maximum amount of variation between sample groups (Positive Mode-R2 = 97%; Q2 = 93%; root mean squared error of validation (RMSEV) = 13%; Negative Mode-R2 = 99%; Q2 = 92%; RMSEV = 15%). In brain extracts, 1264 and 1457 ions of interest were detected for the different modes of acquisition (positive and negative, respectively). Incorporation of gender into the model increased predictive accuracy and decreased RMSEV values. High resolution UPLC-QTof-MS has not previously been employed to biochemically profile post-mortem brain tissue, and the novel methods described and validated herein prove its potential for making new discoveries related to the etiology, pathophysiology, and treatment of degenerative brain disorders.
机译:一项结合高分辨率质谱分析法(液相色谱-四极杆飞行时间质谱法,UPLC-QTof-MS)和化学计量学的研究,用于分析患有阿尔茨海默氏病(AD)的受试者的尸体脑组织(n = 15 )和健康的年龄匹配的对照组(n = 15)。这种代谢组学方法在区分AD病例中具有巨大潜力,其正确预测了94-97%的病例的疾病状况突显了这一点。在60个样本的盲测集中确认了预测能力,达到100%的诊断准确性。该方法还表明,在人类AD发作后,化合物的浓度明显改变。使用正交偏最小二乘判别分析(OPLS-DA),为两种采集模式创建了一个多变量模型,解释了样本组之间的最大差异量(正模-R2 = 97%; Q2 = 93%;均方根验证误差(RMSEV)= 13%;负模R2 = 99%; Q2 = 92%; RMSEV = 15%)。在脑提取物中,针对不同的采集模式(分别为正和负)检测到1264和1457感兴趣的离子。将性别纳入模型可提高预测准确性,并降低RMSEV值。高分辨率UPLC-QTof-MS以前尚未用于对死后脑组织进行生物化学分析,本文所述和验证的新方法证明了其在与病因,病理生理学和退行性脑疾病治疗相关的新发现方面的潜力。

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