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基于机器学习的中国社区认知正常老年人认知障碍风险预测模型:开发与验证研究

A Risk Prediction Model Based on Machine Learning for Cognitive Impairment Among Chinese Community-Dwelling Elderly People With Normal Cognition: Development and Validation Study.

作者信息

Hu Mingyue, Shu Xinhui, Yu Gang, Wu Xinyin, Välimäki Maritta, Feng Hui

机构信息

Xiangya Nursing School, Central South University, Changsha, China.

Henan Cancer Hospital Province, Zhengzhou University, Zhengzhou, China.

出版信息

J Med Internet Res. 2021 Feb 24;23(2):e20298. doi: 10.2196/20298.

Abstract

BACKGROUND

Identifying cognitive impairment early enough could support timely intervention that may hinder or delay the trajectory of cognitive impairment, thus increasing the chances for successful cognitive aging.

OBJECTIVE

We aimed to build a prediction model based on machine learning for cognitive impairment among Chinese community-dwelling elderly people with normal cognition.

METHODS

A prospective cohort of 6718 older people from the Chinese Longitudinal Healthy Longevity Survey (CLHLS) register, followed between 2008 and 2011, was used to develop and validate the prediction model. Participants were included if they were aged 60 years or above, were community-dwelling elderly people, and had a cognitive Mini-Mental State Examination (MMSE) score ≥18. They were excluded if they were diagnosed with a severe disease (eg, cancer and dementia) or were living in institutions. Cognitive impairment was identified using the Chinese version of the MMSE. Several machine learning algorithms (random forest, XGBoost, naïve Bayes, and logistic regression) were used to assess the 3-year risk of developing cognitive impairment. Optimal cutoffs and adjusted parameters were explored in validation data, and the model was further evaluated in test data. A nomogram was established to vividly present the prediction model.

RESULTS

The mean age of the participants was 80.4 years (SD 10.3 years), and 50.85% (3416/6718) were female. During a 3-year follow-up, 991 (14.8%) participants were identified with cognitive impairment. Among 45 features, the following four features were finally selected to develop the model: age, instrumental activities of daily living, marital status, and baseline cognitive function. The concordance index of the model constructed by logistic regression was 0.814 (95% CI 0.781-0.846). Older people with normal cognitive functioning having a nomogram score of less than 170 were considered to have a low 3-year risk of cognitive impairment, and those with a score of 170 or greater were considered to have a high 3-year risk of cognitive impairment.

CONCLUSIONS

This simple and feasible cognitive impairment prediction model could identify community-dwelling elderly people at the greatest 3-year risk for cognitive impairment, which could help community nurses in the early identification of dementia.

摘要

背景

尽早识别认知障碍有助于及时干预,从而可能阻碍或延缓认知障碍的发展轨迹,增加实现成功认知老化的机会。

目的

我们旨在基于机器学习构建一个针对认知功能正常的中国社区老年人认知障碍的预测模型。

方法

利用中国老年健康影响因素跟踪调查(CLHLS)登记的6718名老年人的前瞻性队列,在2008年至2011年期间进行随访,以开发和验证该预测模型。纳入标准为年龄60岁及以上、居住在社区且简易精神状态检查表(MMSE)得分≥18的老年人。排除标准为被诊断患有严重疾病(如癌症和痴呆症)或居住在机构中的老年人。使用中文版MMSE识别认知障碍。采用几种机器学习算法(随机森林、XGBoost、朴素贝叶斯和逻辑回归)评估发生认知障碍的3年风险。在验证数据中探索最佳截断值和调整参数,并在测试数据中进一步评估该模型。建立列线图以直观呈现预测模型。

结果

参与者的平均年龄为80.4岁(标准差10.3岁),女性占50.85%(3416/6718)。在3年随访期间,991名(14.8%)参与者被识别为认知障碍。在45个特征中,最终选择以下四个特征来构建模型:年龄、日常生活活动能力、婚姻状况和基线认知功能。逻辑回归构建的模型一致性指数为0.814(95%CI 0.781-0.846)。认知功能正常的老年人列线图得分低于170被认为3年认知障碍风险低,得分170及以上被认为3年认知障碍风险高。

结论

这个简单可行的认知障碍预测模型可以识别出3年认知障碍风险最高的社区老年人,这有助于社区护士早期识别痴呆症。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/3d9a/7946590/9e7ad6f53869/jmir_v23i2e20298_fig1.jpg

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