OBJECTIVE: The aim of this study was to develop and validate a risk score algorithm for childhood overweight based on a prediction model in infants. METHODS: Analysis was conducted by using the UK Millennium Cohort Study. The cohort was divided randomly by using 80% of the sample for derivation of the risk algorithm and 20% of the sample for validation. Stepwise logistic regression determined a prediction model for childhood overweight at 3 years defined by the International Obesity Task Force criteria. Predictive metrics R(2), area under the receiver operating curve (AUROC), sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) were calculated. RESULTS: Seven predictors were found to be significantly associated with overweight at 3 years in a mutually adjusted predictor model: gender, birth weight, weight gain, maternal prepregnancy BMI, paternal BMI, maternal smoking in pregnancy, and breastfeeding status. Risk scores ranged from 0 to 59 corresponding to a predicted risk from 4.1% to 73.8%. The model revealed moderately good predictive ability in both the derivation cohort (R(2) = 0.92, AUROC = 0.721, sensitivity = 0.699, specificity = 0.679, PPV = 38%, NPV = 87%) and validation cohort (R(2) = 0.84, AUROC = 0.755, sensitivity = 0.769, specificity = 0.665, PPV = 37%, NPV = 89%). CONCLUSIONS: Using a prediction algorithm to identify at-risk infants could reduce levels of child overweight and obesity by enabling health professionals to target prevention more effectively. Further research needs to evaluate the clinical validity, feasibility, and acceptability of communicating this risk.
OBJECTIVE: The aim of this study was to develop and validate a risk score algorithm for childhood overweight based on a prediction model in infants. METHODS: Analysis was conducted by using the UK Millennium Cohort Study. The cohort was divided randomly by using 80% of the sample for derivation of the risk algorithm and 20% of the sample for validation. Stepwise logistic regression determined a prediction model for childhood overweight at 3 years defined by the International Obesity Task Force criteria. Predictive metrics R(2), area under the receiver operating curve (AUROC), sensitivity, specificity, positive predictive value (PPV), and negative predictive value (NPV) were calculated. RESULTS: Seven predictors were found to be significantly associated with overweight at 3 years in a mutually adjusted predictor model: gender, birth weight, weight gain, maternal prepregnancy BMI, paternal BMI, maternal smoking in pregnancy, and breastfeeding status. Risk scores ranged from 0 to 59 corresponding to a predicted risk from 4.1% to 73.8%. The model revealed moderately good predictive ability in both the derivation cohort (R(2) = 0.92, AUROC = 0.721, sensitivity = 0.699, specificity = 0.679, PPV = 38%, NPV = 87%) and validation cohort (R(2) = 0.84, AUROC = 0.755, sensitivity = 0.769, specificity = 0.665, PPV = 37%, NPV = 89%). CONCLUSIONS: Using a prediction algorithm to identify at-risk infants could reduce levels of child overweight and obesity by enabling health professionals to target prevention more effectively. Further research needs to evaluate the clinical validity, feasibility, and acceptability of communicating this risk.
Authors: Christina Mavrogianni; George Moschonis; Eva Karaglani; Greet Cardon; Violeta Iotova; Pilar De Miguel-Etayo; Esther M González-Gil; Κaloyan Tsochev; Tsvetalina Tankova; Imre Rurik; Patrick Timpel; Emese Antal; Stavros Liatis; Konstantinos Makrilakis; George P Chrousos; Yannis Manios Journal: Eur J Pediatr Date: 2021-05-14 Impact factor: 3.183
Authors: Nida Ziauddeen; Sam Wilding; Paul J Roderick; Nicholas S Macklon; Dianna Smith; Debbie Chase; Nisreen A Alwan Journal: BMC Med Date: 2020-05-11 Impact factor: 8.775
Authors: Alexander G Fiks; Rachel S Gruver; Chanelle T Bishop-Gilyard; Justine Shults; Senbagam Virudachalam; Andrew W Suh; Marsha Gerdes; Gurpreet K Kalra; Patricia A DeRusso; Alexandra Lieberman; Daniel Weng; Michal A Elovitz; Robert I Berkowitz; Thomas J Power Journal: Child Obes Date: 2017-05-30 Impact factor: 2.992
Authors: Stephanie R Wesolowski; Karim C El Kasmi; Karen R Jonscher; Jacob E Friedman Journal: Nat Rev Gastroenterol Hepatol Date: 2016-10-26 Impact factor: 46.802
Authors: Jacob O Robson; Sofia G Verstraete; Stephen Shiboski; Melvin B Heyman; Janet M Wojcicki Journal: J Pediatr Date: 2016-03-04 Impact factor: 4.406
Authors: Anna Fogel; Keri McCrickerd; Izzuddin M Aris; Ai Ting Goh; Yap-Seng Chong; Kok Hian Tan; Fabian Yap; Lynette P Shek; Michael J Meaney; Birit F P Broekman; Keith M Godfrey; Mary F F Chong; Shirong Cai; Wei Wei Pang; Wen Lun Yuan; Yung Seng Lee; Ciarán G Forde Journal: Am J Clin Nutr Date: 2020-05-01 Impact factor: 7.045
Authors: Claudia Weinheimer; Haimei Wang; Jessica M Comstock; Purneet Singh; Zhengming Wang; Brent A Locklear; Kasi L Goodwin; J Alan Maschek; James E Cox; Michelle L Baack; Lisa A Joss-Moore Journal: Reprod Sci Date: 2020-01-06 Impact factor: 3.060