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基于层次聚类分析的脑功能状态测量数据对老年人认知障碍进行分类

Classification of cognitive impairment in older adults based on brain functional state measurement data via hierarchical clustering analysis.

作者信息

Liu Yangxiaoxue, Wang Na, Su Xinling, Zhao Tianshu, Zhang Jiali, Geng Yuhan, Wang Ning, Zhou Ming, Zhang Gongzi, Huang Liping

机构信息

Medical School of Chinese PLA, Beijing, China.

Department of Rehabilitation Medicine, The First Medical Center, Chinese PLA General Hospital, Beijing, China.

出版信息

Front Aging Neurosci. 2023 Dec 15;15:1198481. doi: 10.3389/fnagi.2023.1198481. eCollection 2023.

Abstract

INTRODUCTION

Cognitive impairment (CI) is a common degenerative condition in the older population. However, the current methods for assessing CI are not based on brain functional state, which leads to delayed diagnosis, limiting the initiatives towards achieving early interventions.

METHODS

A total of one hundred and forty-nine community-dwelling older adults were recruited. Montreal Cognitive Assessment (MoCA) and Mini-Mental State Exam (MMSE) were used to screen for CI, while brain functional was assessed by brain functional state measurement (BFSM) based on electroencephalogram. Bain functional state indicators associated with CI were selected by lasso and logistic regression models (LRM). We then classified the CI participants based on the selected variables using hierarchical clustering analysis.

RESULTS

Eighty-one participants with CI detected by MoCA were divided into five groups. Cluster 1 had relatively lower brain functional states. Cluster 2 had highest mental task-switching index (MTSi, 13.7 ± 3.4), Cluster 3 had the highest sensory threshold index (STi, 29.9 ± 7.7), Cluster 4 had high mental fatigue index (MFi) and cluster 5 had the highest mental refractory period index (MRPi), and external apprehension index (EAi) (21.6 ± 4.4, 35.4 ± 17.7, respectively). Thirty-three participants with CI detected by MMSE were divided into 3 categories. Cluster 1 had the highest introspective intensity index (IIi, 63.4 ± 20.0), anxiety tendency index (ATi, 67.2 ± 13.6), emotional resistance index (ERi, 50.2 ± 11.9), and hypoxia index (Hi, 41.8 ± 8.3). Cluster 2 had the highest implicit cognitive threshold index (ICTi, 87.2 ± 12.7), and cognitive efficiency index (CEi, 213.8 ± 72.0). Cluster 3 had higher STi. The classifications both showed well intra-group consistency and inter-group variability.

CONCLUSION

In our study, BFSM-based classification can be used to identify clinically and brain-functionally relevant CI subtypes, by which clinicians can perform personalized early rehabilitation.

摘要

引言

认知障碍(CI)是老年人群中常见的退行性疾病。然而,目前评估CI的方法并非基于脑功能状态,这导致诊断延迟,限制了早期干预的主动性。

方法

共招募了149名社区居住的老年人。使用蒙特利尔认知评估(MoCA)和简易精神状态检查表(MMSE)筛查CI,同时基于脑电图通过脑功能状态测量(BFSM)评估脑功能。通过套索和逻辑回归模型(LRM)选择与CI相关的脑功能状态指标。然后,我们使用层次聚类分析根据选定变量对CI参与者进行分类。

结果

通过MoCA检测出的81名CI参与者被分为五组。第1组的脑功能状态相对较低。第2组具有最高的心理任务转换指数(MTSi,13.7±3.4),第3组具有最高的感觉阈值指数(STi,29.9±7.7),第4组具有较高的心理疲劳指数(MFi),第5组具有最高的心理不应期指数(MRPi)和外部忧虑指数(EAi)(分别为21.6±4.4,35.4±17.7)。通过MMSE检测出的33名CI参与者被分为3类。第1组具有最高的内省强度指数(IIi,63.4±20.0)、焦虑倾向指数(ATi,67.2±13.6)、情绪抵抗指数(ERi,50.2±11.9)和缺氧指数(Hi,41.8±8.3)。第2组具有最高的内隐认知阈值指数(ICTi,87.2±12.7)和认知效率指数(CEi,213.8±72.0)。第3组具有较高的STi。两种分类均显示出良好的组内一致性和组间变异性。

结论

在我们的研究中,基于BFSM的分类可用于识别临床和脑功能相关的CI亚型,临床医生可据此进行个性化的早期康复治疗。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2b2c/10757366/1a2eee99a671/fnagi-15-1198481-g001.jpg

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