Ciência-IUL
Publicações
Descrição Detalhada da Publicação
Título Revista
Applied Sciences
Ano (publicação definitiva)
2019
Língua
Inglês
País
Suíça
Mais Informação
Web of Science®
Scopus
Google Scholar
Abstract/Resumo
This study is a contribution for the improvement of healthcare in children and in society generally. Thisstudyaimstopredictchildren’sheightwhentheybecomeadults,also known as“target height”, to allow for a better growth assessment and more personalized healthcare. The existing literature describes some existing prediction methods, based on longitudinal population studies and statistical techniques, which with few information resources, are able to produce acceptable results. The challenge of this study is in using a new approach based on machine learning to forecast the target height for children and (eventually) improve the existing height prediction accuracy. The goals of the study were achieved. The extreme gradient boosting regression (XGB) and light gradient boosting machine regression (LightGBM) algorithms achieved considerably better results on the height prediction. The developed model can be usefully applied by paediatricians and other clinical professionals in growth assessment.
Agradecimentos/Acknowledgements
--
Palavras-chave
Child height prediction,Growth assessment,Data mining,XGB-Extreme Gradient Boosting Regression,LGBM- Light Gradient Boosting Machine Regression,Child perzonalied medicine
Classificação Fields of Science and Technology
- Ciências da Computação e da Informação - Ciências Naturais
- Ciências Físicas - Ciências Naturais
- Ciências Químicas - Ciências Naturais
- Outras Ciências Naturais - Ciências Naturais
- Engenharia Civil - Engenharia e Tecnologia
- Engenharia Química - Engenharia e Tecnologia
- Engenharia dos Materiais - Engenharia e Tecnologia
Registos de financiamentos
Referência de financiamento | Entidade Financiadora |
---|---|
UID/EEA/50008/2019 | Fundação para a Ciência e a Tecnologia |