School of Computing, University of Eastern Finland, 80101, Joensuu, Finland.
CGI Suomi Oy, Joensuu, Finland.
Sci Rep. 2021 Jun 8;11(1):12016. doi: 10.1038/s41598-021-91437-3.
Nutrition experts know by their experience that people can react very differently to the same nutrition. If we could systematically quantify these differences, it would enable more personal dietary understanding and guidance. This work proposes a mixed-effect Bayesian network as a method for modeling the multivariate system of nutrition effects. Estimation of this network reveals a system of both population-wide and personal correlations between nutrients and their biological responses. Fully Bayesian estimation in the method allows managing the uncertainty in parameters and incorporating the existing nutritional knowledge into the model. The method is evaluated by modeling data from a dietary intervention study, called Sysdimet, which contains personal observations from food records and the corresponding fasting concentrations of blood cholesterol, glucose, and insulin. The model's usefulness in nutritional guidance is evaluated by predicting personally if a given diet increases or decreases future levels of concentrations. The proposed method is shown to be comparable with the well-performing Extreme Gradient Boosting (XGBoost) decision tree method in classifying the directions of concentration increases and decreases. In addition to classification, we can also predict the precise concentration level and use the biologically interpretable model parameters to understand what personal effects contribute to the concentration. We found considerable personal differences in the contributing nutrients, and while these nutritional effects are previously known at a population level, recognizing their personal differences would result in more accurate estimates and more effective nutritional guidance.
营养专家凭借经验知道,人们对相同的营养会有非常不同的反应。如果我们能够系统地量化这些差异,就能够更深入地了解个人的饮食,并提供更有针对性的指导。本研究提出了一种混合效应贝叶斯网络,作为对营养效应的多变量系统进行建模的方法。该网络的估计揭示了营养素及其生物反应之间存在着广泛的群体相关性和个体相关性。该方法中的完全贝叶斯估计可以管理参数的不确定性,并将现有的营养知识纳入模型中。通过对一项名为 Sysdimet 的饮食干预研究的数据进行建模,对该方法进行了评估,该研究包含了来自食物记录和相应空腹血胆固醇、葡萄糖和胰岛素浓度的个人观察值。通过预测特定饮食是否会增加或降低未来的浓度水平,评估了该模型在营养指导中的有用性。结果表明,该方法在分类浓度增加和减少的方向上与表现良好的极端梯度提升 (XGBoost) 决策树方法相当。除了分类,我们还可以预测精确的浓度水平,并使用具有生物学解释力的模型参数来了解哪些个体效应对浓度有贡献。我们发现,在贡献营养素方面存在相当大的个体差异,虽然这些营养效应在群体水平上是已知的,但认识到它们的个体差异将导致更准确的估计和更有效的营养指导。