Second Version of a Mini-Survey to Evaluate Food Intake Quality (Mini-ECCA v.2): Reproducibility and Ability to Identify Dietary Patterns in University Students.
María Fernanda Bernal-OrozcoPatricia Belen Salmeron-CurielRuth Jackelyne Prado-ArriagaJaime Fernando Orozco-GutiérrezNayeli Badillo-CamachoFabiola Márquez-SandovalMartha Betzaida Altamirano-MartínezMontserrat González-GómezPorfirio Gutiérrez-GonzálezBarbara Vizmanos-LamotteGabriela Macedo-OjedaPublished in: Nutrients (2020)
Evaluation of food intake quality using validated tools makes it possible to give individuals or populations recommendations for improving their diet. This study's objective was to evaluate the reproducibility and ability to identify dietary patterns of the second version of the Mini Food Intake Quality Survey (Mini-ECCA v.2). The survey was administered using a remote voting system on two occasions with four-week intervals between administrations to 276 health science students (average age = 20.1 ± 3.1 years; 68% women). We then performed a per-question weighted kappa calculation, a cluster analysis, an ANOVA test by questionnaire item and between identified clusters, and a discriminant analysis. Moderate to excellent agreement was observed (weighted κ = 0.422-0.662). The cluster analysis identified three groups, and the discriminant analysis obtained three classification functions (85.9% of cases were correctly classified): group 1 (19.9%) was characterized by higher intake of water, vegetables, fruit, fats, oilseeds/avocado, meat and legumes (healthy food intake); group 2 (47.1%) frequently consumed both fish and unhealthy fats (habits in need of improvement); group 3 (33%) frequently consumed sweetened beverages, foods not prepared at home, processed foods, refined cereals and alcohol (unhealthy food intake). In conclusion, the Mini-ECCA v.2 has moderate to excellent agreement, and it is able to identify dietary patterns in university students.
Keyphrases
- healthcare
- public health
- cross sectional
- randomized controlled trial
- magnetic resonance
- machine learning
- clinical trial
- psychometric properties
- pregnant women
- magnetic resonance imaging
- quality improvement
- body mass index
- deep learning
- insulin resistance
- immune response
- climate change
- data analysis
- double blind
- weight gain
- clinical practice