Department of Psychiatry and Behavioral Sciences, Duke University, Durham, NC, USA.
Acta Neuropathol Commun. 2013 Jun 27;1:28. doi: 10.1186/2051-5960-1-28.
A critical and as-yet unmet need in Alzheimer disease (AD) research is the development of novel markers that can identify individuals at risk for cognitive decline due to AD. This would aid intervention trials designed to slow the progression of AD by increasing diagnostic certainty, and provide new pathophysiologic clues and potential drug targets.
We used two metabolomics platforms (gas chromatography-time of flight mass spectrometry [GC-TOF] and liquid chromatography LC-ECA array [LC-ECA]) to measure a number of metabolites in cerebrospinal fluid (CSF) from patients with AD dementia and from cognitively normal controls. We used stepwise logistic regression models with cross-validation to assess the ability of metabolite markers to discriminate between clinically diagnosed AD participants and cognitively normal controls and we compared these data with traditional CSF Luminex immunoassay amyloid-β and tau biomarkers. Aβ and tau biomarkers had high accuracy to discriminate cases and controls (testing area under the curve: 0.92). The accuracy of GC-TOF metabolites and LC-ECA metabolites by themselves to discriminate clinical AD participants from controls was high (testing area under the curve: 0.70 and 0.96, respectively).
Our study identified several CSF small-molecule metabolites that discriminated especially well between clinically diagnosed AD and control groups. They appear to be suitable for further confirmatory and validation studies, and show the potential to provide predictive performance for AD.
阿尔茨海默病(AD)研究中存在一个关键且尚未满足的需求,即开发新的标志物,以识别因 AD 导致认知能力下降的个体。这将有助于干预试验,通过提高诊断确定性来减缓 AD 的进展,并提供新的病理生理线索和潜在的药物靶点。
我们使用了两种代谢组学平台(气相色谱-飞行时间质谱[GC-TOF]和液相色谱 LC-ECA 阵列[LC-ECA])来测量 AD 痴呆患者和认知正常对照者脑脊液(CSF)中的多种代谢物。我们使用具有交叉验证的逐步逻辑回归模型来评估代谢物标志物区分临床诊断的 AD 参与者和认知正常对照者的能力,并将这些数据与传统的 CSF Luminex 免疫分析淀粉样蛋白-β和 tau 生物标志物进行比较。Aβ 和 tau 生物标志物具有较高的准确性来区分病例和对照(测试曲线下面积:0.92)。GC-TOF 代谢物和 LC-ECA 代谢物本身区分临床 AD 参与者和对照组的准确性也很高(测试曲线下面积分别为 0.70 和 0.96)。
我们的研究确定了几种 CSF 小分子代谢物,它们在临床诊断的 AD 和对照组之间具有特别好的区分能力。它们似乎适合进一步的确认和验证研究,并显示出为 AD 提供预测性能的潜力。