Gluten‐free lentil cakes with optimal technological and nutritional characteristics

Author:

Carboni Angela D1ORCID,Puppo María C12ORCID,Ferrero Cristina1ORCID

Affiliation:

1. CIDCA – Facultad de Ciencias Exactas (UNLP – CONICET) La Plata Argentina

2. Facultad de Ciencias Agrarias y Forestales (FCAyF – UNLP) La Plata Argentina

Abstract

AbstractBACKGROUNDThe celiac population usually struggle finding nutritive gluten‐free (GF) baked goods. GF foods can be improved using legume flours. Eleven GF cake formulations were elaborated according to different percentages of lentil flour (LF), corn flour (CF) and rice flour (RF) using a simplex lattice design. Water holding capacity and particle size of flours were evaluated. Moisture, aw, pH, specific volume, texture profile, relaxation, color and alveolar characteristics were determined for crumbs of all formulations. An optimization process was used to enhance the technological and nutritional attributes, selecting the three best formulations containing LF: 46% LF + 54% RF (CLF+RF); 49% LF + 51% CF (CLF+CF); and 100% LF (CLF), evaluated in their proximal composition and sensory characteristics. Linear and quadratic models for predicting the behavior of GF lentil cakes were obtained.RESULTSLF and CF could favor water incorporation and show more resistance to enzymatic digestion than RF. Formulations with LF showed an improvement in specific volume and alveolar parameters, while use of RF led to better cohesiveness, elasticity and resilience but with a deterioration in chewiness and firmness. CLF can be labeled as high in protein and fiber and presented the lowest amounts of lipids, carbohydrates and energy content. Consumer preference leaned towards CLF+RF.CONCLUSIONIt was possible to elaborate GF cakes using LF, obtaining nutritive products that can be offered to people intolerant to gluten ingestion. © 2024 Society of Chemical Industry.

Funder

Universidad Nacional de La Plata

Consejo Nacional de Investigaciones Científicas y Técnicas

Publisher

Wiley

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