Estado nutricional y adherencia a la dieta mediterránea en población mayor de 40 añosutilidad de las técnicas de inteligencia artificial versus técnicas estadísticas clásicas

  1. Arceo Vilas, Alba María
Dirigida por:
  1. Salvador Pita Fernández Codirector/a
  2. Sonia Pértega Díaz Codirectora
  3. A. Pazos Codirector

Universidad de defensa: Universidade da Coruña

Fecha de defensa: 20 de noviembre de 2020

Tribunal:
  1. María Jesús Taboada Iglesias Presidente/a
  2. Carlos Fernández-Lozano Secretario
  3. José María Barreiro Sorrivas Vocal
Departamento:
  1. Ciencias de la Salud

Tipo: Tesis

Teseo: 642101 DIALNET lock_openRUC editor

Resumen

Analyzing the nutritional status and adherence to the Mediterranean diet can be used to determine states of nutritional vulnerability and identify associated pathologies such as eating or psychological disorders. So this Doctoral Thesis focuses, on the one hand, on the collection of information through personal interview, physical examination, review of the primary care clinical records, as well as on the completion of different questionnaires: Mini Nutritional Assessment (MNA), Charlson comorbidity index, test of adherence to the Mediterranean diet, subjective perception of weight, and EDI2 subscales (body dissatisfaction and obsession with thinness). On the other hand, all these heterogeneous variables are analyzed following a clinical experimental design based on statistical tests and the results are compared with different Artificial Intelligence (hereinafter, IA) approaches, such as Machine Learning (hereinafter, ML) and can then discuss the differences between them. Through this comparison, it is checked whether the same conclusions are reached through the different techniques.