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On Modeling the Quality of Nutrition for Healthy Ageing Using Fuzzy Cognitive Maps

机译:基于模糊认知图的健康老龄化营养质量建模

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Modelling dietary intake of older adults can prevent nutritional deficiencies and diet-related diseases, improving their quality of life. Towards such direction, a Fuzzy Cognitive Map (FCM)-based modelling approach that models the interdependencies between the factors that affect the Quality of Nutrition (QoN) is presented here. The proposed FCM-QoN model uses a FCM with seven input-one output concepts, i.e., five food groups of the UK Eatwell Plate, Water (H2O), and older adult's Emotional State (EmoS), outputting the QoN. The weights incorporated in the FCM structure were drawn from an experts' panel, via a Fuzzy Logic-based knowledge representation process. Using various levels of analysis (causalities, static/feedback cycles), the role of EmoS and H2O in the QoN was identified, along with the one of Fruits/Vegetables and Protein affecting the sustainability of effective food combinations. In general, the FCM-QoN approach has the potential to explore different dietary scenarios, helping health professionals to promote healthy ageing and providing prognostic simulations for diseases effect (such as Parkinson's) on dietary habits, as used in the H2020 i-Prognosis project.
机译:对老年人的饮食摄入量进行建模可以防止营养不足和饮食相关疾病,从而改善他们的生活质量。朝着这样的方向,本文介绍了一种基于模糊认知图(FCM)的建模方法,该方法对影响营养质量(QoN)的因素之间的相互依赖性进行了建模。拟议的FCM-QoN模型使用具有七个输入一输出概念的FCM,即英国Eatwell Plate,水(H2O)和老年人的情绪状态(EmoS)的五个食物组来输出QoN。 FCM结构中包含的权重是通过基于模糊逻辑的知识表示过程从专家小组中得出的。使用各种分析水平(因果关系,静态/反馈周期),确定了EmoS和H2O在QoN中的作用,以及影响有效食品组合可持续性的水果/蔬菜和蛋白质之一。总的来说,FCM-QoN方法具有探索不同饮食方案的潜力,可以帮助卫生专业人员促进健康的衰老,并提供疾病预测(如帕金森氏病)对饮食习惯的预后模拟,如H2020 i-Prognosis项目中所使用。

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