Author:
Zhang Shiying,Ge Manling,Cheng Hao,Chen Shenghua,Li Yihui,Wang Kaiwei
Abstract
Abstract
Background
Quantitative determination of the correlation between cognitive ability and functional biomarkers in the older brain is essential. To identify biomarkers associated with cognitive performance in the older, this study combined an index model specific for resting-state functional connectivity (FC) with a supervised machine learning method.
Methods
Performance scores on conventional cognitive test scores and resting-state functional MRI data were obtained for 98 healthy older individuals and 90 healthy youth from two public databases. Based on the test scores, the older cohort was categorized into two groups: excellent and poor. A resting-state FC scores model (rs-FCSM) was constructed for each older individual to determine the relative differences in FC among brain regions compared with that in the youth cohort. Brain areas sensitive to test scores could then be identified using this model. To suggest the effectiveness of constructed model, the scores of these brain areas were used as feature matrix inputs for training an extreme learning machine. classification accuracy (CA) was then tested in separate groups and validated by N-fold cross-validation.
Results
This learning study could effectively classify the cognitive status of healthy older individuals according to the model scores of frontal lobe, temporal lobe, and parietal lobe with a mean accuracy of 86.67%, which is higher than that achieved using conventional correlation analysis.
Conclusion
This classification study of the rs-FCSM may facilitate early detection of age-related cognitive decline as well as help reveal the underlying pathological mechanisms.
Funder
The Key Project of University Science and Technology Research sponsored by Department of Education of Hebei Provience
Graduate Student Innovation Funding Project sponsored by Department of Education of Hebei Provience
Publisher
Springer Science and Business Media LLC
Reference34 articles.
1. Ibrahim B, Suppiah S, Ibrahim N, Mohamad M, Hassan HA, Nasser NS, et al. Diagnostic power of resting-state fMRI for detection of network connectivity in Alzheimer’s disease and mild cognitive impairment: a systematic review. Hum Brain Mapp. 2021;42:2941–68.
2. Dominguez JC, de Guzman MFP, Joson MLC, Fowler K, Natividad BP, Cruz PS, et al. Validation of AD8-Philippines (AD8-P): a brief informant-based questionnaire for dementia screening in the philippines. Int J Alzheimers Dis. 2021;2021:7750235.
3. Wang X, Zhang J, Chen C, Lu Z, Zhang D, Li S. The association between physical activity and cognitive function in the older in rural areas of northern China. Front Aging Neurosci. 2023;15:1168892.
4. Zhang X, Zhang R, Lv L, Qi X, Shi J, Xie S. Correlation between cognitive deficits and dorsolateral prefrontal cortex functional connectivity in first-episode depression. J Affect Disord. 2022;312:152–8.
5. Droby A, Varangis E, Habeck C, Hausdorff JM, Stern Y, Mirelman A, et al. Effects of aging on cognitive and brain inter-network integration patterns underlying usual and dual-task gait performance. Front Aging Neurosci. 2022;14:956744.