Neuroscience Department, Biophysics Section, Università Cattolica del Sacro Cuore, 00168 Rome, Italy.
Fondazione Policlinico Universitario A. Gemelli IRCSS, 00168 Rome, Italy.
Nutrients. 2022 Aug 26;14(17):3520. doi: 10.3390/nu14173520.
Development of predictive computational models of metabolism through mechanistic models is complex and resource demanding, and their personalization remains challenging. Data-driven models of human metabolism would constitute a reliable, fast, and continuously updating model for predictive analytics. Wearable devices, such as smart bands and impedance balances, allow the real time and remote monitoring of physiological parameters, providing for a flux of data carrying information on user metabolism. Here, we developed a data-driven model of end-user metabolism, the Personalized Metabolic Avatar (PMA), to estimate its personalized reactions to diets. PMA consists of a gated recurrent unit (GRU) deep learning model trained to forecast personalized weight variations according to macronutrient composition and daily energy balance. The model can perform simulations and evaluation of diet plans, allowing the definition of tailored goals for achieving ideal weight. This approach can provide the correct clues to empower citizens with scientific knowledge, augmenting their self-awareness with the aim to achieve long-lasting results in pursuing a healthy lifestyle.
通过机理模型开发代谢的预测性计算模型既复杂又需要大量资源,而且其个性化仍然具有挑战性。人类代谢的数据驱动模型将构成一种可靠、快速且不断更新的预测分析模型。可穿戴设备,如智能手环和阻抗秤,允许实时和远程监测生理参数,提供了大量携带用户代谢信息的数据。在这里,我们开发了一种终端用户代谢的基于数据的模型,即个性化代谢头像(PMA),以估计其对饮食的个性化反应。PMA 由一个门控循环单元(GRU)深度学习模型组成,该模型经过训练,可以根据宏量营养素组成和每日能量平衡来预测个性化的体重变化。该模型可以进行模拟和饮食计划的评估,允许为实现理想体重定义量身定制的目标。这种方法可以提供正确的线索,用科学知识赋予公民权力,增强他们的自我意识,旨在实现健康生活方式的持久效果。