Literature DB >> 33479310

Ranking of a wide multidomain set of predictor variables of children obesity by machine learning variable importance techniques.

Helena Marcos-Pasero1, Gonzalo Colmenarejo2, Elena Aguilar-Aguilar1, Ana Ramírez de Molina3, Guillermo Reglero4,5, Viviana Loria-Kohen6.   

Abstract

The increased prevalence of childhood obesity is expected to translate in the near future into a concomitant soaring of multiple cardio-metabolic diseases. Obesity has a complex, multifactorial etiology, that includes multiple and multidomain potential risk factors: genetics, dietary and physical activity habits, socio-economic environment, lifestyle, etc. In addition, all these factors are expected to exert their influence through a specific and especially convoluted way during childhood, given the fast growth along this period. Machine Learning methods are the appropriate tools to model this complexity, given their ability to cope with high-dimensional, non-linear data. Here, we have analyzed by Machine Learning a sample of 221 children (6-9 years) from Madrid, Spain. Both Random Forest and Gradient Boosting Machine models have been derived to predict the body mass index from a wide set of 190 multidomain variables (including age, sex, genetic polymorphisms, lifestyle, socio-economic, diet, exercise, and gestation ones). A consensus relative importance of the predictors has been estimated through variable importance measures, implemented robustly through an iterative process that included permutation and multiple imputation. We expect this analysis will help to shed light on the most important variables associated to childhood obesity, in order to choose better treatments for its prevention.

Entities:  

Year:  2021        PMID: 33479310     DOI: 10.1038/s41598-021-81205-8

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.379


  26 in total

1.  Physical activity and obesity.

Authors:  James Hill
Journal:  Lancet       Date:  2004-01-17       Impact factor: 79.321

2.  Evaluating the evidence that the prevalence of childhood overweight is plateauing.

Authors:  N Townsend; H Rutter; C Foster
Journal:  Pediatr Obes       Date:  2012-06-20       Impact factor: 4.000

3.  Machine Learning Techniques for Prediction of Early Childhood Obesity.

Authors:  T M Dugan; S Mukhopadhyay; A Carroll; S Downs
Journal:  Appl Clin Inform       Date:  2015-08-12       Impact factor: 2.342

Review 4.  A review of machine learning in obesity.

Authors:  K W DeGregory; P Kuiper; T DeSilvio; J D Pleuss; R Miller; J W Roginski; C B Fisher; D Harness; S Viswanath; S B Heymsfield; I Dungan; D M Thomas
Journal:  Obes Rev       Date:  2018-02-09       Impact factor: 9.213

5.  Is obesity a problem among school children?

Authors:  Rajesh Kunwar; Sukhmeet Minhas; Vipra Mangla
Journal:  Indian J Public Health       Date:  2018 Apr-Jun

6.  The relative importance of predictors of body mass index change, overweight and obesity in adolescent girls.

Authors:  David H Rehkopf; Barbara A Laraia; Mark Segal; Dejana Braithwaite; Elissa Epel
Journal:  Int J Pediatr Obes       Date:  2011-01-18

Review 7.  The Epidemiology of Obesity: A Big Picture.

Authors:  Adela Hruby; Frank B Hu
Journal:  Pharmacoeconomics       Date:  2015-07       Impact factor: 4.981

8.  Developing an Algorithm to Detect Early Childhood Obesity in Two Tertiary Pediatric Medical Centers.

Authors:  Todd Lingren; Vidhu Thaker; Cassandra Brady; Bahram Namjou; Stephanie Kennebeck; Jonathan Bickel; Nandan Patibandla; Yizhao Ni; Sara L Van Driest; Lixin Chen; Ashton Roach; Beth Cobb; Jacqueline Kirby; Josh Denny; Lisa Bailey-Davis; Marc S Williams; Keith Marsolo; Imre Solti; Ingrid A Holm; John Harley; Isaac S Kohane; Guergana Savova; Nancy Crimmins
Journal:  Appl Clin Inform       Date:  2016-07-20       Impact factor: 2.342

9.  Pediatric Obesity-Assessment, Treatment, and Prevention: An Endocrine Society Clinical Practice Guideline.

Authors:  Dennis M Styne; Silva A Arslanian; Ellen L Connor; Ismaa Sadaf Farooqi; M Hassan Murad; Janet H Silverstein; Jack A Yanovski
Journal:  J Clin Endocrinol Metab       Date:  2017-03-01       Impact factor: 5.958

10.  Predicting childhood obesity using electronic health records and publicly available data.

Authors:  Robert Hammond; Rodoniki Athanasiadou; Silvia Curado; Yindalon Aphinyanaphongs; Courtney Abrams; Mary Jo Messito; Rachel Gross; Michelle Katzow; Melanie Jay; Narges Razavian; Brian Elbel
Journal:  PLoS One       Date:  2019-04-22       Impact factor: 3.240

View more
  2 in total

1.  A Machine Learning Approach to Identify Predictors of Frequent Vaping and Vulnerable Californian Youth Subgroups.

Authors:  Rui Fu; Jiamin Shi; Michael Chaiton; Adam M Leventhal; Jennifer B Unger; Jessica L Barrington-Trimis
Journal:  Nicotine Tob Res       Date:  2022-06-15       Impact factor: 5.825

2.  Predictors of perceived success in quitting smoking by vaping: A machine learning approach.

Authors:  Rui Fu; Robert Schwartz; Nicholas Mitsakakis; Lori M Diemert; Shawn O'Connor; Joanna E Cohen
Journal:  PLoS One       Date:  2022-01-14       Impact factor: 3.240

  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.