Applicability of machine learning techniques in food intake assessment: A systematic review

人工智能 机器学习 食物摄入量 人口 计算机科学 医学 环境卫生 内科学
作者
Larissa Oliveira Chaves,Ana Luíza Gomes Domingos,Daniel L. Fernandes,Fábio Ribeiro Cerqueira,Rodrigo Siqueira‐Batista,Josefina Bressan
出处
期刊:Critical Reviews in Food Science and Nutrition [Taylor & Francis]
卷期号:63 (7): 902-919 被引量:57
标识
DOI:10.1080/10408398.2021.1956425
摘要

The evaluation of food intake is important in scientific research and clinical practice to understand the relationship between diet and health conditions of an individual or a population. Large volumes of data are generated daily in the health sector. In this sense, Artificial Intelligence (AI) tools have been increasingly used, for example, the application of Machine Learning (ML) algorithms to extract useful information, find patterns, and predict diseases. This systematic review aimed to identify studies that used ML algorithms to assess food intake in different populations. A literature search was conducted using five electronic databases, and 36 studies met all criteria and were included. According to the results, there has been a growing interest in the use of ML algorithms in the area of nutrition in recent years. Also, supervised learning algorithms were the most used, and the most widely used method of nutritional assessment was the food frequency questionnaire. We observed a trend in using the data analysis programs, such as R and WEKA. The use of ML in nutrition is recent and challenging. Therefore, it is encouraged that more studies are carried out relating these themes for the development of food reeducation programs and public policies.
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