Litcius/Paper detail

Quantifying techno-functional properties of ingredients from multiple crops using machine learning

Anouk Lie-Piang, Jos A. Hageman, Iris Vreenegoor, Kai van der Kolk, Suzan de Leeuw, Albert van der Padt, Remko M. Boom

2023Current Research in Food Science18 citationsDOIOpen Access PDF

Abstract

Food ingredients with a low degree of refining consist of multiple components. Therefore, it is essential to formulate food products based on techno-functional properties rather than composition. We assessed the potential of quantifying techno-functional properties of ingredient blends from multiple crops as opposed to single crops. The properties quantified were gelation, viscosity, emulsion stability, and foaming capacity of ingredients from yellow pea and lupine seeds. The relationships were quantified using spline regression, random forest, and neural networks. Suitable models were picked based on model accuracy and physical feasibility of model predictions. A single model to quantify the properties of both crops could be created for each techno-functional property, albeit with a trade-off of higher prediction errors as compared to models based on individual crops. A reflection on the number of observations in each dataset showed that they could be reduced for some properties.

Topics & Concepts

IngredientBiological systemActive ingredientRandom forestFood productsStability (learning theory)Functional foodBiochemical engineeringComputer scienceMachine learningMathematicsArtificial intelligenceEnvironmental scienceFood scienceChemistryBiologyEngineeringBioinformaticsFood composition and propertiesPolysaccharides Composition and ApplicationsProteins in Food Systems
Quantifying techno-functional properties of ingredients from multiple crops using machine learning | Litcius