Department of Management and Information Systems, Kent State University, Kent, OH, United States.
J Med Internet Res. 2023 Apr 12;25:e45332. doi: 10.2196/45332.
Micronutrient deficiencies represent a major global health issue, with over 2 billion individuals experiencing deficiencies in essential vitamins and minerals. Food labels provide consumers with information regarding the nutritional content of food items and have been identified as a potential tool for improving diets. However, due to governmental regulations and the physical limitations of the labels, food labels often lack comprehensive information about the vitamins and minerals present in foods. As a result, information about most of the micronutrients is absent from existing food labels.
This paper aims to examine the possibility of using machine learning algorithms to predict unreported micronutrients such as vitamin A (retinol), vitamin C, vitamin B1 (thiamin), vitamin B2 (riboflavin), vitamin B3 (niacin), vitamin B6, vitamin B12, vitamin E (alpha-tocopherol), vitamin K, and minerals such as magnesium, zinc, phosphorus, selenium, manganese, and copper from nutrition information provided on existing food labels. If unreported micronutrients can be predicted with acceptable accuracies from existing food labels using machine learning predictive models, such models can be integrated into mobile apps to provide consumers with additional micronutrient information about foods and help them make more informed diet decisions.
Data from the Food and Nutrient Database for Dietary Studies (FNDDS) data set, representing a total of 5624 foods, were used to train a diverse set of machine learning classification and regression algorithms to predict unreported vitamins and minerals from existing food label data. For each model, hyperparameters were adjusted, and the models were evaluated using repeated cross-validation to ensure that the reported results were not subject to overfitting.
According to the results, while predicting the exact quantity of vitamins and minerals is shown to be challenging, with regression R varying in a wide range from 0.28 (for magnesium) to 0.92 (for manganese), the classification models can accurately predict the category ("low," "medium," or "high") level of all minerals and vitamins with accuracies exceeding 0.80. The highest classification accuracies for specific micronutrients are achieved for vitamin B12 (0.94) and phosphorus (0.94), while the lowest are for vitamin E (0.81) and selenium (0.83).
This study demonstrates the feasibility of predicting unreported micronutrients from existing food labels using machine learning algorithms. The results show that the approach has the potential to significantly improve consumer knowledge about the micronutrient content of the foods they consume. Integrating these predictive models into mobile apps can enhance their accessibility and engagement with consumers. The implications of this research for public health are noteworthy, underscoring the potential of technology to augment consumers' understanding of the micronutrient content of their diets while also facilitating the tracking of food intake and providing personalized recommendations based on the micronutrient content and individual preferences.
微量营养素缺乏是一个全球性的主要健康问题,超过 20 亿人存在必需维生素和矿物质缺乏的情况。食品标签为消费者提供了有关食品营养成分的信息,已被确定为改善饮食的潜在工具。然而,由于政府法规和标签的物理限制,食品标签往往缺乏有关食品中存在的维生素和矿物质的综合信息。因此,现有的食品标签中缺乏大多数微量营养素的信息。
本文旨在探讨使用机器学习算法预测未报告的微量营养素(如维生素 A(视黄醇)、维生素 C、维生素 B1(硫胺素)、维生素 B2(核黄素)、维生素 B3(烟酸)、维生素 B6、维生素 B12、维生素 E(α-生育酚)、维生素 K 和矿物质,如镁、锌、磷、硒、锰和铜)的可能性,这些微量营养素可从现有食品标签上提供的营养信息中获取。如果可以使用机器学习预测模型从现有食品标签中以可接受的准确度预测未报告的微量营养素,那么可以将这些模型集成到移动应用程序中,为消费者提供有关食品的额外微量营养素信息,并帮助他们做出更明智的饮食决策。
使用来自食品和营养素数据库(FNDDS)数据集的数据,代表 5624 种食品,用于训练一组多样化的机器学习分类和回归算法,以从现有食品标签数据中预测未报告的维生素和矿物质。对于每个模型,调整了超参数,并使用重复交叉验证来评估模型,以确保报告的结果不受过拟合的影响。
结果表明,虽然预测维生素和矿物质的准确数量具有挑战性,回归 R 值变化范围很广,从 0.28(用于镁)到 0.92(用于锰),但分类模型可以准确地预测所有矿物质和维生素的“低”、“中”或“高”类别水平,准确度超过 0.80。对于特定微量营养素,最高的分类准确度是维生素 B12(0.94)和磷(0.94),而最低的是维生素 E(0.81)和硒(0.83)。
本研究证明了使用机器学习算法从现有食品标签中预测未报告的微量营养素的可行性。结果表明,该方法有可能显著提高消费者对其食用食品的微量营养素含量的了解。将这些预测模型集成到移动应用程序中可以提高它们的可及性和与消费者的互动性。这项研究对公共卫生的意义重大,强调了技术在增强消费者对其饮食中微量营养素含量的理解、促进食物摄入量的跟踪以及根据微量营养素含量和个人偏好提供个性化建议方面的潜力。