Wu Yafei, Jia Maoni, Xiang Chaoyi, Lin Shaowu, Jiang Zhongquan, Fang Ya
The State Key Laboratory of Molecular Vaccine and Molecular Diagnostics, School of Public Health, Xiamen University, Xiang' an Nan Road, Xiang' an District, Xiamen, Fujian, China; National Institute for Data Science in Health and Medicine, Xiamen University, China; Key Laboratory of Health Technology Assessment of Fujian Province, School of Public Health, Xiamen University, China.
The State Key Laboratory of Molecular Vaccine and Molecular Diagnostics, School of Public Health, Xiamen University, Xiang' an Nan Road, Xiang' an District, Xiamen, Fujian, China; Key Laboratory of Health Technology Assessment of Fujian Province, School of Public Health, Xiamen University, China.
Psychiatry Res. 2022 Apr;310:114434. doi: 10.1016/j.psychres.2022.114434. Epub 2022 Feb 7.
This study aimed to explore the long-term cognitive trajectories and its' determinants, and construct prediction models for identifying high-risk populations with unfavorable cognitive trajectories.
This study included 3502 older adults aged 65-105 years at their first observations in a 16-year longitudinal cohort study. Cognitive function was measured by the Chinese version Mini Mental State Examination. The heterogeneity of cognitive function was identified through mixed growth model. Machine learning algorithms, namely regularized logistic regression (r-LR), support vector machine (SVM), random forest (RF), and super learner (SL) were used to predict cognitive trajectories. Discrimination and calibration metrics were used for performance evaluation.
Two distinct trajectories were identified according to the changes of MMSE scores: intact cognitive functioning (93.6%), and dementia (6.4%). Older age, female gender, Han ethnicity, having no schooling, rural residents, low-frequency leisure activities, and low baseline BADL score were associated with a rapid decline in cognitive function. r-LR, SVM, and SL performed well in predicting cognitive trajectories (Sensitivity: 0.73, G-mean: 0.65). Age and psychological well-being were key predictors.
Two cognitive trajectories were identified among older Chinese, and the identified key factors could be targeted for constructing early risk prediction models.
本研究旨在探索长期认知轨迹及其决定因素,并构建用于识别认知轨迹不良的高危人群的预测模型。
本研究纳入了3502名年龄在65 - 105岁之间的老年人,他们是一项为期16年的纵向队列研究首次观察时的对象。认知功能通过中文版简易精神状态检查表进行测量。通过混合增长模型识别认知功能的异质性。使用机器学习算法,即正则化逻辑回归(r - LR)、支持向量机(SVM)、随机森林(RF)和超级学习器(SL)来预测认知轨迹。使用区分度和校准指标进行性能评估。
根据MMSE评分的变化确定了两种不同的轨迹:认知功能完好(93.6%)和痴呆(6.4%)。年龄较大、女性、汉族、未受过教育、农村居民、低频休闲活动以及较低的基线BADL评分与认知功能的快速下降有关。r - LR、SVM和SL在预测认知轨迹方面表现良好(灵敏度:0.73,G均值:0.65)。年龄和心理健康是关键预测因素。
在中国老年人中确定了两种认知轨迹,所确定的关键因素可作为构建早期风险预测模型的目标。