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Using both principal component analysis and reduced rank regression to study dietary patterns and diabetes in Chinese adults

机译:使用主成分分析和降阶回归分析中国成年人的饮食模式和糖尿病

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Abstract Objective We examined the association between dietary patterns and diabetes using the strengths of two methods: principal component analysis (PCA) to identify the eating patterns of the population and reduced rank regression (RRR) to derive a pattern that explains the variation in glycated Hb (HbA1c), homeostasis model assessment of insulin resistance (HOMA-IR) and fasting glucose. Design We measured diet over a 3 d period with 24 h recalls and a household food inventory in 2006 and used it to derive PCA and RRR dietary patterns. The outcomes were measured in 2009. Setting Adults (n 4316) from the China Health and Nutrition Survey. Results The adjusted odds ratio for diabetes prevalence (HbA1ca‰¥6?·5 %), comparing the highest dietary pattern score quartile with the lowest, was 1?·26 (95 % CI 0?·76, 2?·08) for a modern high-wheat pattern (PCA; wheat products, fruits, eggs, milk, instant noodles and frozen dumplings), 0?·76 (95 % CI 0?·49, 1?·17) for a traditional southern pattern (PCA; rice, meat, poultry and fish) and 2?·37 (95 % CI 1?·56, 3?·60) for the pattern derived with RRR. By comparing the dietary pattern structures of RRR and PCA, we found that the RRR pattern was also behaviourally meaningful. It combined the deleterious effects of the modern high-wheat pattern (high intakes of wheat buns and breads, deep-fried wheat and soya milk) with the deleterious effects of consuming the opposite of the traditional southern pattern (low intakes of rice, poultry and game, fish and seafood). Conclusions Our findings suggest that using both PCA and RRR provided useful insights when studying the association of dietary patterns with diabetes.
机译:摘要目的我们利用两种方法的优势来研究饮食模式与糖尿病之间的关联:主成分分析(PCA)以识别人群的饮食模式,而降低秩次回归(RRR)则得出可以解释糖化血红蛋白变异的模式(HbA1c),胰岛素抵抗(HOMA-IR)和空腹血糖的稳态模型评估。设计我们在3天的时间内测量了饮食,回顾了24小时,并在2006年进行了家庭食物清点,并用其得出PCA和RRR饮食模式。结果在2009年进行了测量。《中国健康与营养调查》中的成年成年人(4316名)。结果糖尿病患病率的调整比值比(HbA1ca‰¥ 6?·5%),最高饮食模式得分四分位数与最低饮食得分比较,为1?·26(95%CI 0?·76,2?·08)。现代的高麦模式(PCA;小麦产品,水果,鸡蛋,牛奶,方便面和冷冻的饺子),0?·76(95%CI 0?·49,1?·17)为传统的南部模式(PCA) ;大米,肉,禽,鱼)和2?·37(95%CI 1?·56,3?·60)表示为具有RRR的模式。通过比较RRR和PCA的饮食模式结构,我们发现RRR模式在行为上也有意义。它结合了现代高麦模式的有害影响(小麦面包和面包的摄入量高,油炸小麦和豆浆的摄入量)与食用传统南部模式相反的有害影响(稻米,家禽和肉类的摄入量较低)野味,鱼类和海鲜)。结论我们的发现表明,在研究饮食模式与糖尿病的相关性时,同时使用PCA和RRR可提供有用的见解。

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