Ítem


Frequent patterns of childhood overweight from longitudinal data on parental and early-life of infants health

Article relacionat amb la comunicació que es presentarà a AIME 2024. 22nd International Conference on Artificial Intelligence in Medicine: Salt Lake City, USA: July 9-12

Childhood obesity is considered one of the main public health concerns. Research in the field of obesity detection and prevention is moving towards promising solutions thanks to the use of Artificial Intelligence applied to data from cohorts of children. Previous studies have analyzed the data without taking into account the relationship of data regarding when they are collected. In this work, frequent pattern mining is used to find the risk factors of childhood obesity, taking into account the relationship among the data gathered in different visits. The experiments carried out on the data collected from 386 children from Girona and Figueres (Spain) demonstrate the relevance of discriminant frequent patterns for childhood overweight prediction

We would like to thank Marina Rodriguez for her support in the initial dataset exploration. This work received joint funding from the European Regional Development Fund (ERDF), the Spanish Ministry of the Economy, Industry and Competitiveness (MINECO) and the Carlos III Research Institute, under grants no. PI23/00545 and PI22/00366. The work was carried out with support from the Generalitat de Catalunya 2021 SGR 01125

Universitat de Girona. Departament d’Enginyeria Elèctrica, Electrònica i Automàtica

Autor: López Ibáñez, Beatriz
Galera, David
López-Bermejo, Abel
Bassols Casadevall, Judit
Data: 2024
Resum: Article relacionat amb la comunicació que es presentarà a AIME 2024. 22nd International Conference on Artificial Intelligence in Medicine: Salt Lake City, USA: July 9-12
Childhood obesity is considered one of the main public health concerns. Research in the field of obesity detection and prevention is moving towards promising solutions thanks to the use of Artificial Intelligence applied to data from cohorts of children. Previous studies have analyzed the data without taking into account the relationship of data regarding when they are collected. In this work, frequent pattern mining is used to find the risk factors of childhood obesity, taking into account the relationship among the data gathered in different visits. The experiments carried out on the data collected from 386 children from Girona and Figueres (Spain) demonstrate the relevance of discriminant frequent patterns for childhood overweight prediction
We would like to thank Marina Rodriguez for her support in the initial dataset exploration. This work received joint funding from the European Regional Development Fund (ERDF), the Spanish Ministry of the Economy, Industry and Competitiveness (MINECO) and the Carlos III Research Institute, under grants no. PI23/00545 and PI22/00366. The work was carried out with support from the Generalitat de Catalunya 2021 SGR 01125
Format: application/pdf
Accés al document: http://hdl.handle.net/10256/24738
Llenguatge: eng
Editor: Universitat de Girona. Departament d’Enginyeria Elèctrica, Electrònica i Automàtica
Matèria: Obesitat en els infants
Obesity in children
Intel·ligència artificial -- Aplicacions a la medicina
Artificial intelligence -- Medical applications
Títol: Frequent patterns of childhood overweight from longitudinal data on parental and early-life of infants health
Tipus: info:eu-repo/semantics/preprint
Repositori: DUGiDocs

Matèries

Autors


Warning: Unknown: write failed: No space left on device (28) in Unknown on line 0

Warning: Unknown: Failed to write session data (files). Please verify that the current setting of session.save_path is correct (/var/lib/php5) in Unknown on line 0