A Diet Profiling Algorithm (DPA) to Rank Diet Quality Suitable to Implement in Digital Tools—A Test Study in a Cohort of Lactating Women

Author:

Alonso-Bernáldez Marta1,Palou-March Andreu1234,Zamanillo-Campos Rocío35ORCID,Palou Andreu234ORCID,Palou Mariona1234ORCID,Serra Francisca1234ORCID

Affiliation:

1. Alimentómica S.L. Camí de na Pontons. s/n (Pol.11, Parc 3), 07310 Campanet, Spain

2. Laboratory of Molecular Biology, Nutrition and Biotechnology (Nutrigenomics, Biomarkers and Risk Evaluation Group), University of the Balearic Islands, 07121 Palma, Spain

3. Health Research Institute of the Balearic Islands (IdISBa), 07120 Palma, Spain

4. CIBER of Physiopathology of Obesity and Nutrition (CIBEROBN), Carlos III Health Institute (ISCIII), 28029 Madrid, Spain

5. Primary Care Research Unit of Mallorca, Balearic Islands Health Service, Carrer de l’Escola Graduada 3, 07002 Palma, Spain

Abstract

Although nutrient profiling systems can empower consumers towards healthier food choices, there is still a need to assess diet quality to obtain an overall perspective. The purpose of this study was to develop a diet profiling algorithm (DPA) to evaluate nutritional diet quality, which gives a final score from 1 to 3 with an associated color (green-yellow-orange). It ranks the total carbohydrate/total fiber ratio, and energy from saturated fats and sodium as potentially negative inputs, while fiber and protein are assumed as positive items. Then, the total fat/total carbohydrate ratio is calculated to evaluate the macronutrient distribution, as well as a food group analysis. To test the DPA performance, diets of a lactating women cohort were analyzed, and a correlation analysis between DPA and breast milk leptin levels was performed. Diets classified as low quality showed a higher intake of negative inputs, along with higher energy and fat intakes. This was reflected in body mass index (BMI) and food groups, indicating that women with the worst scores tended to choose tastier and less satiating foods. In conclusion, the DPA was developed and tested in a sample population. This tool can be easily implemented in digital nutrition platforms, contributing to real-time dietary follow-up of patients and progress monitoring, leading to further dietary adjustment.

Funder

Ministry of Economy, Industry and Competitiveness of Spain

Publisher

MDPI AG

Subject

Food Science,Nutrition and Dietetics

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