Wang Shuojia, Wang Weiren, Li Xiaowen, Liu Yafei, Wei Jingming, Zheng Jianguang, Wang Yan, Ye Birong, Zhao Ruihui, Huang Yu, Peng Sixiang, Zheng Yefeng, Zeng Yanbing
Tencent Jarvis Lab, Shenzhen, China.
Institute of Mental Health, Peking University, Beijing, China.
Front Aging Neurosci. 2022 Aug 11;14:977034. doi: 10.3389/fnagi.2022.977034. eCollection 2022.
This study firstly aimed to explore predicting cognitive impairment at an early stage using a large population-based longitudinal survey of elderly Chinese people. The second aim was to identify reversible factors which may help slow the rate of decline in cognitive function over 3 years in the community. We included 12,280 elderly people from four waves of the Chinese Longitudinal Healthy Longevity Survey (CLHLS), followed from 2002 to 2014. The Chinese version of the Mini-Mental State Examination (MMSE) was used to examine cognitive function. Six machine learning algorithms (including a neural network model) and an ensemble method were trained on data split 2/3 for training and 1/3 testing. Parameters were explored in training data using 3-fold cross-validation and models were evaluated in test data. The model performance was measured by area-under-curve (AUC), sensitivity, and specificity. In addition, due to its better interpretability, logistic regression (LR) was used to assess the association of life behavior and its change with cognitive impairment after 3 years. Support vector machine and multi-layer perceptron were found to be the best performing algorithms with AUC of 0.8267 and 0.8256, respectively. Fusing the results of all six single models further improves the AUC to 0.8269. Playing more Mahjong or cards (OR = 0.49,95% CI: 0.38-0.64), doing more garden works (OR = 0.54,95% CI: 0.43-0.68), watching TV or listening to the radio more (OR = 0.67,95% CI: 0.59-0.77) were associated with decreased risk of cognitive impairment after 3 years. Machine learning algorithms especially the SVM, and the ensemble model can be leveraged to identify the elderly at risk of cognitive impairment. Doing more leisure activities, doing more gardening work, and engaging in more activities combined were associated with decreased risk of cognitive impairment.
本研究的首要目的是利用一项针对中国老年人的大规模基于人群的纵向调查,探索早期预测认知障碍的方法。第二个目的是确定可逆因素,这些因素可能有助于减缓社区中认知功能在3年内的下降速度。我们纳入了来自中国健康与养老追踪调查(CLHLS)四轮调查的12280名老年人,随访时间为2002年至2014年。使用中文版简易精神状态检查表(MMSE)来检查认知功能。六种机器学习算法(包括神经网络模型)和一种集成方法在按2/3用于训练、1/3用于测试的数据上进行训练。使用3折交叉验证在训练数据中探索参数,并在测试数据中评估模型。通过曲线下面积(AUC)、敏感性和特异性来衡量模型性能。此外,由于逻辑回归(LR)具有更好的可解释性,因此用于评估生活行为及其变化与3年后认知障碍的关联。支持向量机和多层感知器被发现是性能最佳的算法,AUC分别为0.8267和0.8256。融合所有六个单一模型的结果可进一步将AUC提高到0.8269。多打麻将或纸牌(OR = 0.49,95%CI:0.38 - 0.64)、多做园艺工作(OR = 0.54,95%CI:0.43 - 0.68)、多看电视或多听广播(OR = 0.67,95%CI:0.59 - 0.77)与3年后认知障碍风险降低相关。机器学习算法尤其是支持向量机和集成模型可用于识别有认知障碍风险的老年人。多进行休闲活动、多做园艺工作以及参与更多活动与认知障碍风险降低相关。