Litcius/Paper detail

Prediction of total and regional body composition from 3D body shape

Chexuan Qiao, Emanuella De Lucia Rolfe, Ethan Mak, Akash Sengupta, Richard C. Powell, Laura Watson, Steven B. Heymsfield, John Shepherd, Nicholas J. Wareham, Søren Brage, Roberto Cipolla

2024npj Digital Medicine12 citationsDOIOpen Access PDF

Abstract

Accurate assessment of body composition is essential for evaluating the risk of chronic disease. 3D body shape, obtainable using smartphones, correlates strongly with body composition. We present a novel method that fits a 3D body mesh to a dual-energy X-ray absorptiometry (DXA) silhouette (emulating a single photograph) paired with anthropometric traits, and apply it to the multi-phase Fenland study comprising 12,435 adults. Using baseline data, we derive models predicting total and regional body composition metrics from these meshes. In Fenland follow-up data, all metrics were predicted with high correlations (r > 0.86). We also evaluate a smartphone app which reconstructs a 3D mesh from phone images to predict body composition metrics; this analysis also showed strong correlations (r > 0.84) for all metrics. The 3D body shape approach is a valid alternative to medical imaging that could offer accessible health parameters for monitoring the efficacy of lifestyle intervention programmes.

Topics & Concepts

SilhouetteAnthropometryPolygon meshComposition (language)Computer scienceBody shapeDual energy3d modelMedicineArtificial intelligenceComputer graphics (images)PathologyInternal medicineBone mineralLinguisticsOsteoporosisPhilosophyBody Composition Measurement TechniquesNutrition and Health in AgingNutritional Studies and Diet