Principal Component Regression Analysis of Nutrition Factors andPhysical Activities with Diabetes

Kesheng Wang, Y. Liu, Xin Xie, Shaoqing Gong, Chun Xu, Zhanxin Sha
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引用次数: 5

Abstract

The associations of nutrition factors and physical activities with adult diabetes are inconsistent; while most of these factors are inter correlated. The aims of this study are to overcome the disturbance of the multicollinearity of the risk factors and examine the associations of these factors with diabetes using the principal component analysis (PCA) and regression analysis with principal component scores (PCS). Totally, 659 adults with diabetes and 2827 non-diabetic were selected from the 2012 Health Information National Trends Survey (HINTS 4, Cycle 2). PCA was utilized to deal with multicollinearity of the risk factors. Weighted univariate and multiple logistic regression analyses were used to estimate the associations of potential factors and PCS with diabetes. The odds ratios (ORs) with 95% confidence intervals (CIs) were estimated. The first 3 PCs for nutrition factors and physical activities could explain 70% variances. The first principal component (PC1) is a measure of nutrition factors (fruit and vegetables consumption), PC2 is a measure for physical activities (moderate exercise and strength training), and PC3 is about calorie information use and soda use. Weighted multiple logistic regression showed that African Americans, middle aged adults (45-64 years), elderly (65+), never married, and with lower education were associated with increased odds of diabetes. After adjusting for others factors, the PC1 showed marginal association with diabetes (OR=0.84, 95% CI=0.70-1.01); while PC2 and PC3 revealed significant associations with diabetes (OR=0.73, 95% CI=0.61-0.86 and OR=0.85, 95% CI=0.74-0.99, respectively). In conclusion, PCA can be used to reduce the indicators in complex survey data. The first 3 PCs of nutrition factors and physical activities were associated with diabetes. Promotion of health food and physical activities should be encouraged to help decrease the prevalence of diabetes.
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糖尿病患者营养因素与体育活动的主成分回归分析
营养因素和体育活动与成人糖尿病的相关性不一致;而这些因素中的大多数是相互关联的。本研究的目的是克服危险因素多重共线性的干扰,并使用主成分分析(PCA)和主成分得分回归分析(PCS)来检验这些因素与糖尿病的相关性。从2012年健康信息全国趋势调查(HINTS 4,周期2)中总共选择了659名患有糖尿病的成年人和2827名非糖尿病患者。主成分分析用于处理风险因素的多重共线性。使用加权单变量和多元逻辑回归分析来估计潜在因素和PCS与糖尿病的相关性。估计95%置信区间(CI)的比值比(OR)。营养因素和体育活动的前3个PC可以解释70%的差异。第一个主要成分(PC1)是营养因素(水果和蔬菜消费)的衡量标准,PC2是体育活动(适度运动和力量训练)的衡量指标,PC3是关于卡路里信息的使用和苏打水的使用。加权多元逻辑回归显示,非裔美国人、中年人(45-64岁)、老年人(65岁以上)、从未结婚和受教育程度较低的人患糖尿病的几率增加。在校正了其他因素后,PC1与糖尿病的相关性很小(OR=0.84,95%CI=0.70-1.01);而PC2和PC3显示与糖尿病显著相关(OR=0.73,95%CI=0.61-0.86和OR=0.85,95%CI=0.74-0.99)。总之,主成分分析可用于减少复杂调查数据中的指标。营养因素和体育活动的前3个PC与糖尿病有关。应鼓励推广健康食品和体育活动,以帮助降低糖尿病的患病率。
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