Danesi Francesca, Mengucci Carlo, Vita Simona, Bub Achim, Seifert Stephanie, Malpuech-Brugère Corinne, Richard Ruddy, Orfila Caroline, Sutulic Samantha, Ricciardiello Luigi, Marcato Elisa, Capozzi Francesco, Bordoni Alessandra
Department of Agricultural and Food Sciences (DISTAL), University of Bologna, 47521 Cesena, Italy.
Interdepartmental Centre for Agri-food Industrial Research (CIRI Agrifood), University of Bologna, 47521 Cesena, Italy.
Nutrients. 2021 Apr 20;13(4):1377. doi: 10.3390/nu13041377.
Although lifestyle-based interventions are the most effective to prevent metabolic syndrome (MetS), there is no definitive agreement on which nutritional approach is the best. The aim of the present retrospective analysis was to identify a multivariate model linking energy and macronutrient intake to the clinical features of MetS. Volunteers at risk of MetS (F = 77, M = 80) were recruited in four European centres and finally eligible for analysis. For each subject, the daily energy and nutrient intake was estimated using the EPIC questionnaire and a 24-h dietary recall, and it was compared with the dietary reference values. Then we built a predictive model for a set of clinical outcomes computing shifts from recommended intake thresholds. The use of the ridge regression, which optimises prediction performances while retaining information about the role of all the nutritional variables, allowed us to assess if a clinical outcome was manly dependent on a single nutritional variable, or if its prediction was characterised by more complex interactions between the variables. The model appeared suitable for shedding light on the complexity of nutritional variables, which effects could be not evident with univariate analysis and must be considered in the framework of the reciprocal influence of the other variables.
尽管基于生活方式的干预措施是预防代谢综合征(MetS)最有效的方法,但对于哪种营养方法是最佳方法尚无定论。本回顾性分析的目的是确定一个将能量和宏量营养素摄入与MetS临床特征联系起来的多变量模型。在四个欧洲中心招募了有MetS风险的志愿者(女性77名,男性80名),最终符合分析条件。对于每个受试者,使用EPIC问卷和24小时饮食回顾来估计每日能量和营养素摄入量,并将其与饮食参考值进行比较。然后,我们建立了一个预测模型,用于计算一组临床结果偏离推荐摄入阈值的情况。使用岭回归在保留所有营养变量作用信息的同时优化预测性能,使我们能够评估临床结果是否主要依赖于单一营养变量,或者其预测是否具有变量之间更复杂的相互作用特征。该模型似乎适合揭示营养变量的复杂性,单变量分析可能无法明显体现其影响,而必须在其他变量相互影响的框架内加以考虑。