CSIRO Preventative Health Flagship: Mathematics, Informatics and Statistics, Perth, WA, Australia.
Mental Health Research Institute (MHRI), The University of Melbourne, Parkville, VIC, Australia.
Mol Psychiatry. 2014 Apr;19(4):519-26. doi: 10.1038/mp.2013.40. Epub 2013 Apr 30.
Dementia is a global epidemic with Alzheimer's disease (AD) being the leading cause. Early identification of patients at risk of developing AD is now becoming an international priority. Neocortical Aβ (extracellular β-amyloid) burden (NAB), as assessed by positron emission tomography (PET), represents one such marker for early identification. These scans are expensive and are not widely available, thus, there is a need for cheaper and more widely accessible alternatives. Addressing this need, a blood biomarker-based signature having efficacy for the prediction of NAB and which can be easily adapted for population screening is described. Blood data (176 analytes measured in plasma) and Pittsburgh Compound B (PiB)-PET measurements from 273 participants from the Australian Imaging, Biomarkers and Lifestyle (AIBL) study were utilised. Univariate analysis was conducted to assess the difference of plasma measures between high and low NAB groups, and cross-validated machine-learning models were generated for predicting NAB. These models were applied to 817 non-imaged AIBL subjects and 82 subjects from the Alzheimer's Disease Neuroimaging Initiative (ADNI) for validation. Five analytes showed significant difference between subjects with high compared to low NAB. A machine-learning model (based on nine markers) achieved sensitivity and specificity of 80 and 82%, respectively, for predicting NAB. Validation using the ADNI cohort yielded similar results (sensitivity 79% and specificity 76%). These results show that a panel of blood-based biomarkers is able to accurately predict NAB, supporting the hypothesis for a relationship between a blood-based signature and Aβ accumulation, therefore, providing a platform for developing a population-based screen.
痴呆症是一种全球性的流行病,其中阿尔茨海默病(AD)是主要病因。现在,早期识别有患 AD 风险的患者已成为国际优先事项。正电子发射断层扫描(PET)评估的新皮层 Aβ(细胞外β-淀粉样蛋白)负担(NAB)就是这样一种早期识别标志物。这些扫描费用昂贵且无法广泛获得,因此需要更便宜且更易于获得的替代方法。为了满足这一需求,描述了一种基于血液生物标志物的标志物,该标志物对 NAB 的预测具有功效,并且可以轻松适应人群筛查。利用来自澳大利亚成像,生物标志物和生活方式(AIBL)研究的 273 名参与者的血液数据(176 种在血浆中测量的分析物)和匹兹堡化合物 B(PiB)-PET 测量值。进行了单变量分析以评估高 NAB 组和低 NAB 组之间血浆测量值的差异,并生成了用于预测 NAB 的交叉验证机器学习模型。这些模型应用于 817 名未成像的 AIBL 受试者和 82 名来自阿尔茨海默氏病神经影像学倡议(ADNI)的受试者进行验证。与低 NAB 相比,高 NAB 受试者中有五种分析物存在显著差异。基于九个标志物的机器学习模型预测 NAB 的灵敏度和特异性分别为 80%和 82%。使用 ADNI 队列进行验证可获得类似的结果(灵敏度为 79%,特异性为 76%)。这些结果表明,一组基于血液的生物标志物能够准确预测 NAB,支持血液标志物与 Aβ 积累之间存在关系的假设,从而为开发基于人群的筛查提供了平台。