Institute of Clinical Medical Science, China Medical University, Taichung, Taiwan.
Department of Psychiatry and Brain Disease Research Centre, China Medical University Hospital, Taichung, Taiwan.
J Psychopharmacol. 2021 Mar;35(3):265-272. doi: 10.1177/0269881120972331. Epub 2021 Feb 15.
d-glutamate, which is involved in N-methyl-d-aspartate receptor modulation, may be associated with cognitive ageing.
This study aimed to use peripheral plasma d-glutamate levels to differentiate patients with mild cognitive impairment (MCI) and Alzheimer's disease (AD) from healthy individuals and to evaluate its prediction ability using machine learning.
Overall, 31 healthy controls, 21 patients with MCI and 133 patients with AD were recruited. Serum d-glutamate levels were measured using high-performance liquid chromatography (HPLC). Cognitive deficit severity was assessed using the Clinical Dementia Rating scale and the Mini-Mental Status Examination (MMSE). We employed four machine learning algorithms (support vector machine, logistic regression, random forest and naïve Bayes) to build an optimal predictive model to distinguish patients with MCI or AD from healthy controls.
The MCI and AD groups had lower plasma d-glutamate levels (1097.79 ± 283.99 and 785.10 ± 720.06 ng/mL, respectively) compared to healthy controls (1620.08 ± 548.80 ng/mL). The naïve Bayes model and random forest model appeared to be the best models for determining MCI and AD susceptibility, respectively (area under the receiver operating characteristic curve: 0.8207 and 0.7900; sensitivity: 0.8438 and 0.6997; and specificity: 0.8158 and 0.9188, respectively). The total MMSE score was positively correlated with d-glutamate levels ( = 0.368, < 0.001). Multivariate regression analysis indicated that d-glutamate levels were significantly associated with the total MMSE score ( = 0.003, 95% confidence interval 0.002-0.005, < 0.001).
Peripheral plasma d-glutamate levels were associated with cognitive impairment and may therefore be a suitable peripheral biomarker for detecting MCI and AD. Rapid and cost-effective HPLC for biomarkers and machine learning algorithms may assist physicians in diagnosing MCI and AD in outpatient clinics.
谷氨酸参与 N-甲基-D-天冬氨酸受体调节,可能与认知老化有关。
本研究旨在使用外周血浆谷氨酸水平区分轻度认知障碍(MCI)和阿尔茨海默病(AD)患者与健康个体,并使用机器学习评估其预测能力。
共招募了 31 名健康对照者、21 名 MCI 患者和 133 名 AD 患者。采用高效液相色谱法(HPLC)测定血清谷氨酸水平。采用临床痴呆评定量表和简易精神状态检查(MMSE)评估认知功能减退严重程度。我们采用了四种机器学习算法(支持向量机、逻辑回归、随机森林和朴素贝叶斯)来构建最佳预测模型,以区分 MCI 或 AD 患者与健康对照组。
MCI 和 AD 组的血浆谷氨酸水平(分别为 1097.79±283.99 和 785.10±720.06ng/mL)低于健康对照组(1620.08±548.80ng/mL)。朴素贝叶斯模型和随机森林模型似乎是确定 MCI 和 AD 易感性的最佳模型(受试者工作特征曲线下面积:0.8207 和 0.7900;灵敏度:0.8438 和 0.6997;特异性:0.8158 和 0.9188)。总 MMSE 评分与谷氨酸水平呈正相关(r=0.368,P<0.001)。多元回归分析表明,谷氨酸水平与总 MMSE 评分显著相关(r=0.003,95%置信区间 0.002-0.005,P<0.001)。
外周血浆谷氨酸水平与认知障碍有关,因此可能是检测 MCI 和 AD 的合适外周生物标志物。用于生物标志物和机器学习算法的快速、经济有效的 HPLC 可能有助于医生在门诊中诊断 MCI 和 AD。