Ko Hyunwoong, Ihm Jung-Joon, Kim Hong-Gee
Interdisciplinary Program in Cognitive Science, Seoul National University, Seoul, South Korea.
Biomedical Knowledge Engineering Laboratory, School of Dentistry, Seoul National University, Seoul, South Korea.
Front Aging Neurosci. 2019 Apr 26;11:95. doi: 10.3389/fnagi.2019.00095. eCollection 2019.
Cerebral amyloid beta (Aβ) is a hallmark of Alzheimer's disease (AD). Aβ can be detected with amyloid imaging or cerebrospinal fluid assessments. However, these technologies can be both expensive and invasive, and their accessibility is limited in many clinical settings. Hence the current study aims to identify multivariate cost-efficient markers for Aβ positivity among non-demented individuals using machine learning (ML) approaches. The relationship between cost-efficient candidate markers and Aβ status was examined by analyzing 762 participants from the Alzheimer's Disease Neuroimaging Initiative-2 cohort at baseline visit (286 cognitively normal, 332 with mild cognitive impairment, and 144 with AD; mean age 73.2 years, range 55-90). Demographic variables (age, gender, education, and APOE status) and neuropsychological test scores were used as predictors in an ML algorithm. Cerebral Aβ burden and Aβ positivity were measured using F-florbetapir positron emission tomography images. The adaptive least absolute shrinkage and selection operator (LASSO) ML algorithm was implemented to identify cognitive performance and demographic variables and distinguish individuals from the population at high risk for cerebral Aβ burden. For generalizability, results were further checked by randomly dividing the data into training sets and test sets and checking predictive performances by 10-fold cross-validation. Out of neuropsychological predictors, visuospatial ability and episodic memory test results were consistently significant predictors for Aβ positivity across subgroups with demographic variables and other cognitive measures considered. The adaptive LASSO model using out-of-sample classification could distinguish abnormal levels of Aβ. The area under the curve of the receiver operating characteristic curve was 0.754 in the mild change group, 0.803 in the moderate change group, and 0.864 in the severe change group, respectively. Our results showed that the cost-efficient neuropsychological model with demographics could predict Aβ positivity, suggesting a potential surrogate method for detecting Aβ deposition non-invasively with clinical utility. More specifically, it could be a very brief screening tool in various settings to recruit participants with potential biomarker evidence of AD brain pathology. These identified individuals would be valuable participants in secondary prevention trials aimed at detecting an anti-amyloid drug effect in the non-demented population.
脑淀粉样β蛋白(Aβ)是阿尔茨海默病(AD)的一个标志。Aβ可以通过淀粉样成像或脑脊液评估来检测。然而,这些技术既昂贵又具有侵入性,而且在许多临床环境中其可及性有限。因此,当前的研究旨在使用机器学习(ML)方法,在非痴呆个体中识别出用于Aβ阳性的多变量成本效益高的标志物。通过分析来自阿尔茨海默病神经影像倡议-2队列的762名参与者在基线访视时的数据(286名认知正常者、332名轻度认知障碍者和144名AD患者;平均年龄73.2岁,范围55 - 90岁),研究了成本效益高的候选标志物与Aβ状态之间的关系。人口统计学变量(年龄、性别、教育程度和APOE状态)以及神经心理学测试分数被用作ML算法中的预测因子。使用F-氟代硼吡咯正电子发射断层扫描图像测量脑Aβ负荷和Aβ阳性情况。实施自适应最小绝对收缩和选择算子(LASSO)ML算法,以识别认知表现和人口统计学变量,并区分出脑Aβ负荷高风险人群中的个体。为了验证通用性,通过将数据随机分为训练集和测试集,并通过10倍交叉验证检查预测性能,进一步检验结果。在神经心理学预测因子中,在考虑人口统计学变量和其他认知指标的情况下,视觉空间能力和情景记忆测试结果始终是各亚组中Aβ阳性的显著预测因子。使用样本外分类的自适应LASSO模型可以区分Aβ的异常水平。在轻度变化组中,受试者工作特征曲线下面积为0.754,中度变化组为0.803,重度变化组为0.864。我们的结果表明,结合人口统计学的成本效益高的神经心理学模型可以预测Aβ阳性,这表明存在一种具有临床实用性的非侵入性检测Aβ沉积的潜在替代方法。更具体地说,它可能是一种在各种环境中非常简短的筛查工具,用于招募具有AD脑病理学潜在生物标志物证据的参与者。这些被识别出的个体将是旨在检测非痴呆人群中抗淀粉样蛋白药物效果的二级预防试验中有价值的参与者。