Agrawal Kushagra, Goktas Polat, Kumar Navneet, Leung Man-Fai
School of Computer Engineering, KIIT Deemed to be University, Bhubaneswar, India.
UCD School of Computer Science, University College Dublin, Dublin, Ireland.
Front Nutr. 2025 Jul 23;12:1636980. doi: 10.3389/fnut.2025.1636980. eCollection 2025.
Artificial Intelligence (AI) is emerging as a key driver at the intersection of nutrition and food systems, offering scalable solutions for precision health, smart manufacturing, and sustainable development. This study aims to present a comprehensive review of AI-driven innovations that enable precision nutrition through real-time dietary recommendations, meal planning informed by individual biological markers (., blood glucose or cholesterol levels), and adaptive feedback systems. It further examines the integration of AI technologies in food production, such as machine learning-based quality control, predictive maintenance, and waste minimization, to support circular economy goals and enhance food system resilience. Drawing on advances in deep learning, federated learning, and computer vision, the review outlines how AI transforms static, population-level dietary models into dynamic, data-informed frameworks tailored to individual needs. The paper also addresses critical challenges related to algorithmic transparency, data privacy, and equitable access, and proposes actionable pathways for ethical and scalable implementation. By bridging healthcare, nutrition, and industrial domains, this study offers a forward-looking roadmap for leveraging AI to build intelligent, inclusive, and sustainable food-health ecosystems.
人工智能(AI)正在成为营养与食品系统交叉领域的关键驱动力,为精准健康、智能制造和可持续发展提供可扩展的解决方案。本研究旨在全面综述由人工智能驱动的创新,这些创新通过实时饮食建议、基于个体生物标志物(如血糖或胆固醇水平)的膳食计划以及自适应反馈系统实现精准营养。它还进一步探讨了人工智能技术在食品生产中的整合,如基于机器学习的质量控制、预测性维护和废物最小化,以支持循环经济目标并增强食品系统的复原力。借助深度学习、联邦学习和计算机视觉的进展,该综述概述了人工智能如何将静态的、基于人群的饮食模型转变为根据个体需求定制的动态、数据驱动的框架。本文还讨论了与算法透明度、数据隐私和公平获取相关的关键挑战,并提出了道德且可扩展实施的可行途径。通过连接医疗保健、营养和工业领域,本研究提供了一个前瞻性路线图,以利用人工智能构建智能、包容和可持续的食品 - 健康生态系统。