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基于PRECEDE模型预测预防心血管疾病中饮食行为的影响因素。

Predicting effective factors on eating behaviors in the prevention of cardiovascular disease based on the PRECEDE model.

作者信息

Radmerikhi Samera, Tabatabaei Seyed Vahid Ahmady, Jahani Yunes, Mohseni Mohabbat

机构信息

MSc. of Health Education, Social Determinants of Health Research Center, Institute for Futures Studies in Health, Kerman University of Medical Sciences, Kerman, Iran.

M.D-MPH-Ph.D., Assistant Professor, Social Determinants of Health Research Center, Institute for Futures Studies in Health, Kerman University of Medical Sciences, Kerman, Iran.

出版信息

Electron Physician. 2017 Dec 25;9(12):5894-5901. doi: 10.19082/5894. eCollection 2017 Dec.

Abstract

BACKGROUND AND AIM

Changes in eating behavior can reduce the risk of developing cardiovascular disease. The aim of this study was to predict the effective factors of eating behaviors in the prevention of cardiovascular disease using the PRECEDE model.

METHODS

This cross-sectional study was performed on 400 subjects aged from 20 to 60 years old in Kerman, Iran in 2016. The participants were selected using a multistage random sampling method. A self-administered questionnaire including questions regarding demographic characteristics, eating behavior, and PRECEDE model constructs were completed by the participants. Data were analyzed using SPSS 22 and STATA 12. For data analysis, Spearman correlation coefficient, univariate and multiple median regression were applied. The predictive power of the model constructs was determined by analysis of artificial neural networks.

RESULTS

Among participants, the score of knowledge was high (84.15±10.7), and the scores of perceived self-efficacy (59.1±16.57), reinforcing factors (60.66±14.01), enabling factors (56.5±12.91), and eating behavior (62.1±14.7) were intermediate, and the score of attitude was low (47.84±7.67). Attitude, self-perceived efficacy, enabling factors, and knowledge predicted 32%, 30%, 26%, and 0.93% of participants' eating behavior respectively. The relationship between all variables and eating behavior was positive and significant (p<0.0001). Perceived self-efficacy had the most, and reinforcing factors the least correlation with eating behavior.

CONCLUSION

According to the results of this study, self-efficacy, attitude, and enabling factors were the main predicting factors for eating behaviors; therefore, to prevent cardiovascular disease and enhance healthy eating behavior, it is recommended to change attitude, and enhance self-efficacy and enabling factors in the community.

摘要

背景与目的

饮食行为的改变可降低患心血管疾病的风险。本研究旨在使用PRECEDE模型预测饮食行为在预防心血管疾病中的影响因素。

方法

2016年在伊朗克尔曼对400名年龄在20至60岁之间的受试者进行了这项横断面研究。采用多阶段随机抽样方法选取参与者。参与者完成了一份自填式问卷,其中包括有关人口统计学特征、饮食行为和PRECEDE模型构建的问题。使用SPSS 22和STATA 12进行数据分析。数据分析采用Spearman相关系数、单变量和多变量中位数回归。通过人工神经网络分析确定模型构建的预测能力。

结果

参与者中,知识得分较高(84.15±10.7),自我效能感得分(59.1±16.57)、强化因素得分(60.66±14.01)、促成因素得分(56.5±12.91)和饮食行为得分(62.1±14.7)处于中等水平,态度得分较低(47.84±7.67)。态度、自我效能感、促成因素和知识分别预测了参与者饮食行为的32%、30%、26%和0.93%。所有变量与饮食行为之间的关系均为正且显著(p<0.0001)。自我效能感与饮食行为的相关性最高,强化因素与饮食行为的相关性最低。

结论

根据本研究结果,自我效能感、态度和促成因素是饮食行为的主要预测因素;因此,为预防心血管疾病并促进健康饮食行为,建议在社区中改变态度,提高自我效能感和促成因素。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/d2f8/5843413/217d91ec8a8b/EPJ-09-5894-g001.jpg

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