Unbiased proteomics and multivariable regularized regression techniques identify SMOC1, NOG, APCS, and NTN1 in an Alzheimer's disease brain proteomic signature.

Jackson A Roberts, Vijay R Varma, Julián Candia, Toshiko Tanaka, Luigi Ferrucci, David A Bennett, Madhav Thambisetty
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引用次数: 1

Abstract

Advancements in omics methodologies have generated a wealth of high-dimensional Alzheimer's disease (AD) datasets, creating significant opportunities and challenges for data interpretation. In this study, we utilized multivariable regularized regression techniques to identify a reduced set of proteins that could discriminate between AD and cognitively normal (CN) brain samples. Utilizing eNetXplorer, an R package that tests the accuracy and significance of a family of elastic net generalized linear models, we identified 4 proteins (SMOC1, NOG, APCS, NTN1) that accurately discriminated between AD (n = 31) and CN (n = 22) middle frontal gyrus (MFG) tissue samples from Religious Orders Study participants with 83 percent accuracy. We then validated this signature in MFG samples from Baltimore Longitudinal Study of Aging participants using leave-one-out logistic regression cross-validation, finding that the signature again accurately discriminated AD (n = 31) and CN (n = 19) participants with a receiver operating characteristic curve area under the curve of 0.863. These proteins were strongly correlated with the burden of neurofibrillary tangle and amyloid pathology in both study cohorts. We additionally tested whether these proteins differed between AD and CN inferior temporal gyrus (ITG) samples and blood serum samples at the time of AD diagnosis in ROS and BLSA, finding that the proteins differed between AD and CN ITG samples but not in blood serum samples. The identified proteins may provide mechanistic insights into the pathophysiology of AD, and the methods utilized in this study may serve as the basis for further work with additional high-dimensional datasets in AD.

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无偏蛋白质组学和多变量正则化回归技术在阿尔茨海默病脑蛋白质组学特征中鉴定出SMOC1、NOG、APCS和NTN1。
组学方法的进步产生了丰富的高维阿尔茨海默病(AD)数据集,为数据解释创造了重大机遇和挑战。在这项研究中,我们利用多变量正则化回归技术来识别一组减少的蛋白质,这些蛋白质可以区分AD和认知正常(CN)的大脑样本。利用eNetXplorer(一个测试弹性网络广义线性模型家族的准确性和显著性的R包),我们从宗教秩序研究参与者的中额回(MFG)组织样本中识别出4种蛋白质(SMOC1, NOG, APCS, NTN1),准确区分AD (n = 31)和CN (n = 22),准确率为83%。然后,我们在巴尔的摩纵向老龄化研究参与者的MFG样本中使用留一逻辑回归交叉验证验证了该签名,发现该签名再次准确地区分了AD (n = 31)和CN (n = 19)参与者,受试者工作特征曲线面积在0.863以下。在两个研究队列中,这些蛋白与神经原纤维缠结负担和淀粉样蛋白病理密切相关。我们还检测了这些蛋白在AD和CN的下颞回(ITG)样本以及在AD诊断时的ROS和BLSA血清样本中是否存在差异,发现AD和CN的ITG样本之间存在差异,而血清样本中没有差异。所鉴定的蛋白质可能为阿尔茨海默病的病理生理学提供机制见解,本研究中使用的方法可能为阿尔茨海默病的其他高维数据集的进一步工作奠定基础。
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