1. Development and validation of anthropometric-based fat-mass prediction equations using air displacement plethysmography in Mexican infants
- Author
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Ameyalli M. Rodríguez-Cano, Omar Piña-Ramírez, Carolina Rodríguez-Hernández, Jennifer Mier-Cabrera, Gicela Villalobos-Alcazar, Guadalupe Estrada-Gutierrez, Arturo Cardona-Pérez, Alejandra Coronado-Zarco, and Otilia Perichart-Perera
- Subjects
Nutrition and Dietetics ,Medicine (miscellaneous) - Abstract
Background/Objectives Fat-mass (FM) assessment since birth using valid methodologies is crucial since excessive adiposity represents a risk factor for adverse metabolic outcomes. Aim: To develop infant FM prediction equations using anthropometry and validate them against air-displacement plethysmography (ADP). Subjects/Methods Clinical, anthropometric (weight, length, body-mass index –BMI–, circumferences, and skinfolds), and FM (ADP) data were collected from healthy-term infants at 1 (n = 133), 3 (n = 105), and 6 (n = 101) months enrolled in the OBESO perinatal cohort (Mexico City). FM prediction models were developed in 3 steps: 1) Variable Selection (LASSO regression), 2) Model behavior evaluation (12-fold cross-validation, using Theil-Sen regressions), and 3) Final model evaluation (Bland-Altman plots, Deming regression). Results Relevant variables in the FM prediction models included BMI, circumferences (waist, thigh, and calf), and skinfolds (waist, triceps, subscapular, thigh, and calf). The R2 of each model was 1 M: 0.54, 3 M: 0.69, 6 M: 0.63. Predicted FM showed high correlation values (r ≥ 0.73, p p > 0.05). Bias were: 1 M −0.021 (95%CI: −0.050 to 0.008), 3 M: 0.014 (95%CI: 0.090–0.195), 6 M: 0.108 (95%CI: 0.046–0.169). Conclusion Anthropometry-based prediction equations are inexpensive and represent a more accessible method to estimate body composition. The proposed equations are useful for evaluating FM in Mexican infants.
- Published
- 2023
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