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Adv Nutr ; : 100264, 2024 Jul 04.
Article in English | MEDLINE | ID: mdl-38971229

ABSTRACT

Malnutrition among the population of the world is a frequent yet underdiagnosed problem in both children and adults. Development of malnutrition screening and diagnostic tools for early detection of malnutrition is necessary to prevent long-term complications to patients' health and well-being. Most of these tools are based on predefined questionnaires and consensus guidelines. The use of artificial intelligence (AI) allows for automated tools to detect malnutrition in an earlier stage to prevent long-term consequences. In this study, a systematic literature review was carried out with the goal of providing detailed information on what patient groups, screening tools, machine learning algorithms, data types, and variables are being used as well as the current limitations and implementation stage of these AI based tools. The results showed that a staggering majority exceeding 90 percent of all AI models go unused in day-to-day clinical practice. Furthermore, supervised learning models seemed to be the most popular type of learning. Alongside this, disease-related malnutrition was the most common category of malnutrition found in the analysis of all primary studies. The current research provides a resource for researchers to identify directions for their research on the use of AI in in Malnutrition.

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