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A plasma protein classifier for predicting amyloid burden for preclinical Alzheimer’s disease

机译:血浆蛋白分类器,用于预测临床前阿尔茨海默氏病的淀粉样负荷

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A blood-based assessment of preclinical disease would have huge potential in the enrichment of participants for Alzheimer’s disease (AD) therapeutic trials. In this study, cognitively unimpaired individuals from the AIBL and KARVIAH cohorts were defined as Aβ negative or Aβ positive by positron emission tomography. Nontargeted proteomic analysis that incorporated peptide fractionation and high-resolution mass spectrometry quantified relative protein abundances in plasma samples from all participants. A protein classifier model was trained to predict Aβ-positive participants using feature selection and machine learning in AIBL and independently assessed in KARVIAH. A 12-feature model for predicting Aβ-positive participants was established and demonstrated high accuracy (testing area under the receiver operator characteristic curve = 0.891, sensitivity = 0.78, and specificity = 0.77). This extensive plasma proteomic study has unbiasedly highlighted putative and novel candidates for AD pathology that should be further validated with automated methodologies.
机译:对临床前疾病进行基于血液的评估,在丰富阿尔茨海默氏病(AD)治疗试验参与者方面将具有巨大潜力。在这项研究中,通过正电子发射断层扫描将来自AIBL和KARVIAH队列的认知能力未受损的个体定义为Aβ阴性或Aβ阳性。结合了肽分级分离和高分辨率质谱的非靶向蛋白质组学分析定量了所有参与者血浆样品中的相对蛋白质丰度。使用AIBL中的特征选择和机器学习训练蛋白质分类器模型来预测Aβ阳性参与者,并在KARVIAH中对其进行独立评估。建立了一个用于预测Aβ阳性参与者的12个特征的模型,并证明了其较高的准确性(接收者操作员特征曲线下的测试区域= 0.891,灵敏度= 0.78,特异性= 0.77)。这项广泛的血浆蛋白质组学研究无偏倚地强调了AD病理学的推定和新颖的候选对象,应通过自动化方法进行进一步验证。

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