Three-Dimensional Printing Parameter Optimization for Salmon Gelatin Gels Using Artificial Neural Networks and Response Surface Methodology: Influence on Physicochemical and Digestibility Properties

Author:

Carvajal-Mena Nailín1,Tabilo-Munizaga Gipsy1ORCID,Saldaña Marleny D. A.2,Pérez-Won Mario1,Herrera-Lavados Carolina1ORCID,Lemus-Mondaca Roberto3,Moreno-Osorio Luis4ORCID

Affiliation:

1. Department of Food Engineering, Universidad del Bío-Bío, Avenida Andrés Bello 720, Chillán 3780000, Chile

2. Department of Agricultural, Food and Nutritional Science, University of Alberta, Edmonton, AB T6G 2P5, Canada

3. Department of Food Science and Chemical Technology, Universidad de Chile, Santos Dumont 964, Santiago 8330015, Chile

4. Department of Basic Sciences, Universidad del Bío-Bío, Avenida Andrés Bello 720, Chillán 3780000, Chile

Abstract

This study aimed to optimize the 3D printing parameters of salmon gelatin gels (SGG) using artificial neural networks with the genetic algorithm (ANN-GA) and response surface methodology (RSM). In addition, the influence of the optimal parameters obtained using the two different methodologies was evaluated for the physicochemical and digestibility properties of the printed SGG (PSGG). The ANN-GA had a better fit (R2 = 99.98%) with the experimental conditions of the 3D printing process than the RSM (R2 = 93.99%). The extrusion speed was the most influential parameter according to both methodologies. The optimal values of the printing parameters for the SGG were 0.70 mm for the nozzle diameter, 0.5 mm for the nozzle height, and 24 mm/s for the extrusion speed. Gel thermal properties showed that the optimal 3D printing conditions affected denaturation temperature and enthalpy, improving digestibility from 46.93% (SGG) to 51.52% (PSGG). The secondary gel structures showed that the β-turn structure was the most resistant to enzymatic hydrolysis, while the intermolecular β-sheet was the most labile. This study validated two optimization methodologies to achieve optimal 3D printing parameters of salmon gelatin gels, with improved physicochemical and digestibility properties for use as transporters to incorporate high value nutrients to the body.

Funder

ANID, Chile

National Doctorate Scholarship 2019

FONDECYT program

Publisher

MDPI AG

Subject

Polymers and Plastics,Organic Chemistry,Biomaterials,Bioengineering

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