Liu Chaomeng, Li Li, Zhu Dandi, Lin Shuo, Ren Li, Zhen Wenfeng, Tan Weihao, Wang Lina, Tian Lu, Wang Qian, Mao Peixian, Pan Weigang, Li Bing, Ma Xin
Beijing Key Laboratory of Mental Disorders, National Clinical Research Center for Mental Disorders & National Center for Mental Disorders, Beijing Anding Hospital, Capital Medical University, Beijing, China; Advanced Innovation Center for Human Brain Protection, Capital Medical University, Beijing, China.
Beijing Key Laboratory of Mental Disorders, National Clinical Research Center for Mental Disorders & National Center for Mental Disorders, Beijing Anding Hospital, Capital Medical University, Beijing, China; Advanced Innovation Center for Human Brain Protection, Capital Medical University, Beijing, China.
J Affect Disord. 2024 May 1;352:32-42. doi: 10.1016/j.jad.2024.02.030. Epub 2024 Feb 14.
In the realm of cognitive screening, the Mini-Mental State Examination (MMSE) and the Montreal Cognitive Assessment (MoCA) are widely utilized for detecting cognitive deficits in patients with late-life depression (LLD), However, the interindividual variability in neuroimaging biomarkers contributing to individual-specific symptom severity remains poorly understood. In this study, we used a connectome-based predictive model (CPM) approach on resting-state functional magnetic resonance imaging data from patients with LLD to establish individualized prediction models for the MoCA and the MMSE scores.
We recruited 135 individuals diagnosed with first-episode LLD for this research. Participants underwent the MMSE and MoCA tests, along with resting-state functional magnetic resonance imaging scans. Functional connectivity matrices derived from these scans were utilized in CPM models to predict MMSE or MoCA scores. Predictive precision was assessed by correlating predicted and observed scores, with the significance of prediction performance evaluated through a permutation test.
The negative model of the CPM procedure demonstrated a significant capacity to predict MoCA scores (r = -0.309, p = 0.002). Similarly, the CPM procedure could predict MMSE scores (r = -0.236, p = 0.016). The predictive models for cognitive test scores in LLD primarily involved the visual network, somatomotor network, dorsal attention network, and ventral attention network.
Brain functional connectivity emerges as a promising predictor of personalized cognitive test scores in LLD, suggesting that functional connectomes are potential neurobiological markers for cognitive performance in patients with LLD.
在认知筛查领域,简易精神状态检查表(MMSE)和蒙特利尔认知评估量表(MoCA)被广泛用于检测老年期抑郁症(LLD)患者的认知缺陷。然而,对于导致个体特异性症状严重程度的神经影像学生物标志物的个体间变异性仍知之甚少。在本研究中,我们对LLD患者静息态功能磁共振成像数据采用基于连接组的预测模型(CPM)方法,以建立针对MoCA和MMSE评分的个性化预测模型。
我们招募了135名被诊断为首发LLD的个体参与本研究。参与者接受了MMSE和MoCA测试以及静息态功能磁共振成像扫描。从这些扫描中得出的功能连接矩阵被用于CPM模型中,以预测MMSE或MoCA评分。通过将预测分数与观察分数进行相关性分析来评估预测精度,并通过置换检验评估预测性能的显著性。
CPM程序的负模型显示出显著的预测MoCA评分的能力(r = -0.309,p = 0.002)。同样,CPM程序可以预测MMSE评分(r = -0.236,p = 0.016)。LLD认知测试分数的预测模型主要涉及视觉网络、躯体运动网络、背侧注意网络和腹侧注意网络。
脑功能连接成为LLD个性化认知测试分数的一个有前景的预测指标,这表明功能连接组是LLD患者认知表现的潜在神经生物学标志物。