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随机森林模型能否提高预测社区老年人参与认知健康促进项目意愿的能力?

Can the Random Forests Model Improve the Power to Predict the Intention of the Elderly in a Community to Participate in a Cognitive Health Promotion Program?

作者信息

Byeon Haewon

机构信息

Department of Medical Big Data, College of AI Convergence, Inje University, Gimhae 50834, Republic of Korea.

出版信息

Iran J Public Health. 2021 Feb;50(2):315-324. doi: 10.18502/ijph.v50i2.5346.

DOI:10.18502/ijph.v50i2.5346
PMID:33747995
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7956102/
Abstract

BACKGROUND

We aimed to develop a model predicting the participation of the elderly in a cognitive health program using the random forest algorithm and presented baseline information for enhancing cognitive health.

METHODS

This study analyzed the raw data of Seoul Welfare Panel Study (SWPS) (20), which was surveyed by Seoul Welfare Foundation for the residents of Seoul from Jun 1st to Aug 31st, 2015. Subjects were 2,111 (879 men and 1232 women) persons aged 60 yr and older living in the community who were not diagnosed with dementia. The outcome variable was the intention to participate in a cognitive health promotion program. A prediction model was developed by the use of a Random forests and the results of the developed model were compared with those of a decision tree analysis based on classification and regression tree (CART).

RESULTS

The random forests model predicted education level, subjective health, subjective friendship, subjective family bond, mean monthly family income, age, smoking, living with a spouse or not, depression history, drinking, and regular exercise as the major variables. The analysis results of test data showed that the accuracy of the random forests was 72.3% and that of the CART model was 70.9%.

CONCLUSION

It is necessary to develop a customized health promotion program considering the characteristics of subjects in order to implement a program effectively based on the developed model to predict participation in a cognitive health promotion program.

摘要

背景

我们旨在使用随机森林算法开发一个预测老年人参与认知健康计划的模型,并提供增强认知健康的基线信息。

方法

本研究分析了首尔福利面板研究(SWPS)(20)的原始数据,该研究由首尔福利基金会于2015年6月1日至8月31日对首尔居民进行调查。研究对象为2111名(879名男性和1232名女性)60岁及以上未被诊断患有痴呆症的社区居民。结果变量是参与认知健康促进计划的意愿。通过使用随机森林开发了一个预测模型,并将开发模型的结果与基于分类和回归树(CART)的决策树分析结果进行比较。

结果

随机森林模型预测教育水平、主观健康、主观友谊、主观家庭关系、家庭月平均收入、年龄、吸烟、是否与配偶同住、抑郁病史、饮酒和定期锻炼为主要变量。测试数据的分析结果表明,随机森林的准确率为72.3%,CART模型的准确率为70.9%。

结论

为了基于开发的预测认知健康促进计划参与度的模型有效地实施计划,有必要根据受试者的特征制定定制的健康促进计划。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c4d/7956102/4f83863a5d38/IJPH-50-315-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c4d/7956102/517d8706e28a/IJPH-50-315-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c4d/7956102/41666b3e08e6/IJPH-50-315-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c4d/7956102/4f83863a5d38/IJPH-50-315-g003.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c4d/7956102/517d8706e28a/IJPH-50-315-g001.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c4d/7956102/41666b3e08e6/IJPH-50-315-g002.jpg
https://cdn.ncbi.nlm.nih.gov/pmc/blobs/9c4d/7956102/4f83863a5d38/IJPH-50-315-g003.jpg

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