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Plasma 24-metabolite Panel Predicts Preclinical Transition to Clinical Stages of Alzheimer’s Disease

机译:血浆24代谢物小组预测临床前过渡到阿尔茨海默氏病的临床阶段

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摘要

We recently documented plasma lipid dysregulation in preclinical late-onset Alzheimer’s disease (LOAD). A 10 plasma lipid panel, predicted phenoconversion and provided 90% sensitivity and 85% specificity in differentiating an at-risk group from those that would remain cognitively intact. Despite these encouraging results, low positive predictive values limit the clinical usefulness of this panel as a screening tool in subjects aged 70–80 years or younger. In this report, we re-examine our metabolomic data, analyzing baseline plasma specimens from our group of phenoconverters (n = 28) and a matched set of cognitively normal subjects (n = 73), and discover and internally validate a panel of 24 plasma metabolites. The new panel provides a classifier with receiver operating characteristic area under the curve for the discovery and internal validation cohort of 1.0 and 0.995 (95% confidence intervals of 1.0–1.0, and 0.981–1.0), respectively. Twenty-two of the 24 metabolites were significantly dysregulated lipids. While positive and negative predictive values were improved compared to our 10-lipid panel, low positive predictive values provide a reality check on the utility of such biomarkers in this age group (or younger). Through inclusion of additional significantly dysregulated analyte species, our new biomarker panel provides greater accuracy in our cohort but remains limited by predictive power. Unfortunately, the novel metabolite panel alone may not provide improvement in counseling and management of at-risk individuals but may further improve selection of subjects for LOAD secondary prevention trials. We expect that external validation will remain challenging due to our stringent study design, especially compared with more diverse subject cohorts. We do anticipate, however, external validation of reduced plasma lipid species as a predictor of phenoconversion to either prodromal or manifest LOAD.
机译:我们最近记录了临床前晚期阿尔茨海默氏病(LOAD)的血脂异常。 10个血浆脂质组可预测表型转化,在将高危人群与仍保持认知完好的人群中区分开时,可提供90%的敏感性和85%的特异性。尽管取得了令人鼓舞的结果,但较低的阳性预测值限制了该面板作为70-80岁或以下年龄受试者的筛查工具的临床实用性。在本报告中,我们重新检查了代谢组学数据,分析了表型转换器(n = 28)和一组匹配的认知正常受试者(n = 73)的基线血浆标本,并发现并内部验证了一组24个血浆代谢产物。新面板为分类器提供了曲线下的接收器工作特征区域,用于发现和内部验证队列分别为1.0和0.995(95%置信区间为1.0-1.0和0.981-1.0)。 24种代谢产物中有22种是脂质失调。虽然与我们的10脂质组相比,阳性和阴性预测值得到了改善,但较低的阳性预测值提供了对该年龄段(或更年轻)中此类生物标记物的实用性的现实检查。通过包含其他严重失调的分析物种类,我们的新生物标志物面板在我们的队列中提供了更高的准确性,但仍受预测能力的限制。不幸的是,仅新颖的代谢物小组可能无法改善高危个体的咨询和管理,但可能会进一步改善LOAD二级预防试验的受试者选择。我们希望由于我们严格的研究设计,尤其是与更为多样化的研究对象相比,外部验证仍将具有挑战性。但是,我们确实预期血浆脂质种类减少的外部验证可作为表型转化为前驱或明显负荷的预测指标。

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