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首页> 外文期刊>European journal of nutrition >Gaussian graphical models identified food intake networks and risk of type 2 diabetes, CVD, and cancer in the EPIC-Potsdam study
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Gaussian graphical models identified food intake networks and risk of type 2 diabetes, CVD, and cancer in the EPIC-Potsdam study

机译:高斯图形模型确定了Epic-Potsdam研究中2型糖尿病,CVD和癌症的食物摄入网络和风险

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PurposeThe aim of the study was to investigate the association between the previously identified Gaussian graphical models' (GGM) food intake networks and risk of major chronic diseases as well as intermediate biomarkers in the European Prospective Investigation into Cancer and nutrition (EPIC)-Potsdam cohort.MethodsIn this cohort analysis of 10,880 men and 13,340 women, adherence to the previously identified sex-specific GGM networks as well as principal component analysis identified patterns was investigated in relation to risk of major chronic diseases, using Cox-proportional hazard models. Associations of the patterns with intermediate biomarkers were cross-sectionally analyzed using multiple linear regressions.ResultsResults showed that higher adherence to the GGM Western-type pattern was associated with increased risk (Hazard Ratio: 1.55; 95% CI 1.13-2.15; P trend=0.004) of type 2 diabetes (T2D) in women, whereas adherence to a high-fat dairy (HFD) pattern was associated with lower risk of T2D both in men (0.69; 95% CI 0.54-0.89; P trend0.001) and women (0.71; 95% CI: 0.53, 0.96; P trend=0.09). Among PCA patterns, HFD pattern was associated with lower risk of T2D (0.74; 95% CI 0.58-0.95; P trend0.001) in men and bread and sausage pattern was associated with higher risk of T2D (1.79; 95% CI 1.29-2.48; P trend0.001) in women. Moreover, The GGM-HFD pattern was positively associated with HDL-C in men and inversely associated with C-reactive protein in women.ConclusionOverall, these results show that GGM-identified networks reflect dietary patterns, which could also be related to risk of chronic diseases.
机译:本研究的目的是研究先前鉴定的高斯图形模型'(GGM)食物摄入网络与主要慢性病风险与主要慢性病的风险以及中间生物标志物在欧洲前瞻性调查(EPIC) - Potsdam Cohort中的中间生物标志物.Methodsin这一群组分析了10,880名男性和13,340名女性,遵守先前鉴定的性别特异性GGM网络以及主要的慢性疾病风险,使用Cox比例危险模型研究了主要的慢性疾病的风险。使用多元线性回归横截面分析与中间生物标志物的关联。结果表明,对GGM蛋白类型模式的更高粘附与风险增加(危险比:1.55; 95%CI 1.13-2.15; P Trend =妇女中2型糖尿病(T2D)的0.004,而粘附于高脂肪乳制品(HFD)模式与男性T2D的风险较低有关(0.69; 95%CI 0.54-0.89; P趋势& 0.001)和女性(0.71; 95%CI:0.53,0.96; p趋势= 0.09)。在PCA模式中,HFD图案与T2D的风险较低(0.74; 95%CI 0.58-0.95; P趋势& 0.001)与香肠模式有关的T2D风险较高(1.79; 95%CI 1.29- 2.48; p趋势& 0.001)在女性中。此外,GGM-HFD模式与男性的HDL-C呈正相关并与女性中的C反应蛋白相反.Clusionoverall,这些结果表明,GGM鉴定的网络反映了饮食模式,这也可能与慢性风险有关。疾病。

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